Next Article in Journal
A Military Object Detection Model of UAV Reconnaissance Image and Feature Visualization
Previous Article in Journal
Late-Stage Optimization of Modern ILP Processor Cores via FPGA Simulation
Previous Article in Special Issue
Research on the Pavement Performance of Slag/Fly Ash-Based Geopolymer-Stabilized Macadam
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Prediction of Compressive Strength Loss of Normal Concrete after Exposure to High Temperature

Yunnan Key Laboratory of Disaster Reduction in Civil Engineering, Faculty of Civil Engineering and Mechanics, Kunming University of Science and Technology, Kunming 650500, China
*
Author to whom correspondence should be addressed.
Appl. Sci. 2022, 12(23), 12237; https://doi.org/10.3390/app122312237
Submission received: 24 October 2022 / Revised: 26 November 2022 / Accepted: 27 November 2022 / Published: 29 November 2022
(This article belongs to the Special Issue Latest Advances in Cement and Concrete Composites)

Abstract

:
In recent years, there has been an increasing number of fires in buildings. The methods for detecting residual properties of buildings after fires are commonly destructive and subjective. In this context, property prediction based on mathematical modeling has exhibited its potential. Backpropagation (BP), particle swarm algorithms optimized-BP (PSO-BP) and random forest (RF) models were established in this paper using 1803 sets of data from the literature. Material and relevant heating parameters, as well as compressive strength loss percentage, were used as input and output parameters, respectively. Experimental work was also carried out to evaluate the feasibility of the models for prediction. The accuracy of all the models was sufficiently high, and they were also much more feasible for prediction. Moreover, based on the RF model, the importance of the inputting parameters was ranked as well. Such prediction has provided a new perspective to non-destructively and objectively assess the post-fire properties of concrete. Additionally, this model could be used to guide performance-based design for fire-resistant concrete.

1. Introduction

In recent years, there has been an increasing number of fires in buildings. It is reported that during 2003–2012 there was an annual average of 180,000 fires in China and 1,403,000 in the United States, respectively [1], while in the first three quarters of 2022, 223,800 residential fires were already reported in China [2]. When a fire occurs, temperature increases fast in a short time (see Figure 1). As a result of the decomposition of hydration products, thermal cracking, loosening of matrix structure and expansion and/or decomposition of aggregates, the properties of structural concrete usually deteriorate with the increase in temperature [3]. Currently, the following methods are mostly used to detect the quality of a building after fire [4]: (1) concrete is hammered by experienced personnel to determine its degree of damage according to the sound made; (2) the rebound method is used to determine the residual strength of the concrete, particularly in the near-surface zone, i.e., roughly 30 mm; (3) concrete is cored, and the residual strength of the core sample is determined by its depth of ablation. Although these methods are widely used, they also have shortcomings such as being highly subjective, the number of samples being limited and possible secondary damage being caused. In this context, based on the data in the literature published, this paper proposes statistical models to predict compressive strength loss of normal concrete after exposure to high temperatures, attempting to implement such examination effectively and non-destructively. Parallel experimental work is also to be carried out to evaluate the feasibility of the prediction. In addition, weighting of the influencing factors is to be analyzed, which could be useful to better understand the thermal behavior of the concrete and to provide possible guidance for thermal performance-based concrete design.

2. Modeling

Backpropagation (BP) neural network, particle swarm optimization BP (PSO-BP) neural network and random forest (RF) modeling methods are conducted in this paper to implement the prediction work. In addition, an importance ranking of influencing parameters is also carried out based on the RF model.

2.1. Parameter Determination

Compressive strength loss of normal concrete after high temperatures is mainly influenced by material parameters, such as water binder ratio (W/B) and high-temperature operating mechanisms, such as heating temperature (T), heating velocity (V), maintaining duration at target temperature (MD), cooling method (C) and resting duration after cooling (RD). Therefore, in this paper, the W/B, T, V, MD, C and RD were used as input parameters to establish the models. The cooling method (water cooling/natural cooling) was converted into a digital signal (0/1). To eliminate the influence of initial strength at room temperature (i.e., before exposure to high temperature), strength loss percentage after high temperatures (P) was selected as the output parameter in this paper. The P is determined according to Equation (1).
P = f cu ,   high   temperature - f cu ,   room   temperature f cu ,   room   temperature × 100 % ,  
where f cu ,   high   temperature is the compressive strength of concrete after high temperature and f cu ,   room   temperature is the compressive strength of concrete at room temperature.

2.2. Data Collection

The data, with a total of 1803 sets, for building the models in this paper was obtained from the literature [588], as detailed in Appendix A, and its statistics are provided in Table 1. Training used 70% of the data, and the rest of the data was evenly used for validation and testing.

2.3. Models

2.3.1. BP Neural Network

The BP neural network is the most commonly used artificial neural network, which is a method of processing information imitating a human neural network. The BP neural network continuously approximates the function by adjusting the weights and thresholds, and if the error does not meet the requirements, the signal is fed backwards [89]. It is widely used in the field of civil engineering because of its strong robustness. Its network usually contains a single input layer, single or multi-hidden layer(s) and a single output layer, where many neurons are involved. In this paper, the number of neurons in the input and output layers was 6 and 1, respectively. After trial-and-error and comparison (see Table 2, where RMSE and MAE are root mean square error and mean absolute error, respectively, which are to be defined in Section 2.4), a network structure of 6-7-1 was finally determined, as shown in Figure 2. The Levenberg–Marquardt algorithm was used for training, where the training frequency, learning rate and minimum error of the training target were set to 1000, 0.01 and 0.00001, respectively. The optimum solution after 50 training sessions was used as the target model. Furthermore, in order to minimize the effect of data on the results, the data were normalized to [−1, 1].

2.3.2. PSO-BP Neural Network

Due to the algorithm of the BP neural network easily resulting in the issue of local extreme small values, the particle swarm algorithm was used in this paper to further optimize weights and thresholds (PSO), developing the PSO-BP neural network. The PSO algorithm is inspired by the predatory behavior of bird colonies, treating each individual as a particle in different spaces to build a search model in terms of velocity (V) and position (X). If there are n particles in an A dimensional space, i.e., X = (X1, X2, X3……Xn), the position of particle Xi in the A dimensional space, i.e., potential solution, is denoted as Xi = (Xi1, Xi2, Xi3…XiA)T. The particle is then updated by each iteration of the individual and extreme global values, with the velocity and position defined in Equations (2) and (3) [90].
ViAk+1 = ωViAk + c1r1(PiA − XiA) + c2r2(PgA − XiA),
XiAk+1 = XiAk + ViAk+1,
where
Vi: particle velocity, denoted as (Vi1, Vi2, Vi3......ViA)T;
Pi: individual extreme value, denoted as (Pi1, Pi2, Pi3......PiA)T;
Pg: global extreme value, denoted as (Pg1, Pg2, Pg3......PgA)T;
Xi: particle position, denoted as (Xi1, Xi2, Xi3......XiA)T;
ω: inertia weights;
k: number of current iterations;
c1 and c2: learning factors which are non-negative constants;
r1 and r2: momentum coefficients which are random numbers between [0,1].
In this paper, particle number n was set as 20, learning factors c1 and c2 were kept the same as 2 and momentum coefficients r1 and r2 were kept the same as 0.8 [90]. Inertia weight ω was assigned to 0.8 after several trials. In addition, in order to avoid blind searching of particles, the position and velocity of particles were limited in ranges of [−1, 1] and [0, 1], respectively [90]. The model iterated and updated 100 times, which ensured that the model was sufficiently convergent and could be highly reliable because, after 60 iterations, the adaptability of the model was sufficiently stable, as shown in Figure 3. The training times, network structure, target minimum error, learning efficiency and normalization range of the PSO-BP modeling were kept the same as BP modeling, as shown in the previous section.

2.3.3. RF

RF is a method of taking data samples from a database randomly, where bootstrap re-sampling is usually used, and then repeatedly dichotomizing the data to eventually determine the optimum solution by voting [91]. In RF, “forest” refers to an integration of decision trees which consists of nodes and directed edges. The structure of the model is shown in Figure 4. This method can highly tolerate outliers of data, compute fast and yield a prediction with high accuracy. It was found that the determination coefficient R2 tends to be constant when the number of decision trees is up to 500, which was set to be the number of decision trees used in this paper.
In addition, RF was also used in this paper to perform a variable importance measure (VIM), where the contribution of each variable to each tree in the RF is averaged and then ranked. The Gini index (GI) was used in this paper to evaluate the VIM [92]. Assuming that there were J variables X1, X2, X3..., XJ, I decision trees and C categories of variables (C = 2 when dichotomization is used to process data), the GI of node q of the ith tree is provided in Equation (4).
G I q ( i ) = C = 1 C p q c ( i ) ( 1 p q c ( i ) ) ,
where pqc is the proportion of category C in node q.
The importance of variable XJ at node q of the ith tree, i.e., the difference in the Gini index before and after the branching of node q, is provided in Equation (5).
VIM jq ( Gini ) ( i ) = GI q ( i ) GI l ( i ) GI r ( i ) ,
where GIl(i) and GIr(i) are the Gini index of the two new nodes after branching, respectively.
If variable XJ appears C times, the importance of XJ in the ith tree is provided in Equation (6).
V I M i j ( G i n i ) ( i ) = q = 1 C V I M j q ( G i n i ) ( i ) .
Finally, the importance score of RF is provided in Equation (7).
V I M j ( G i n i ) = 1 I i = 1 I V I M i j ( G i n i ) ( i ) .

2.4. Error Evaluation

Root mean square error (RMSE) and mean absolute error (MAE) evaluations were applied in this paper to evaluate the accuracy of the models mentioned previously. Formulae of the error evaluations are provided in Equations (8) and (9), where yi (y1, y2……yn) is the value measured value, y ̑ i ( y ̑ 1 , y ̑ 2 …… y ̑ n ) is the value predicted and n is the number of data samples. The closer the RMSE and MAE values to zero, the smaller the error between the data samples and the more accurate the model.
RMSE = ( i = 1 n ( y i y ̑ i ) 2 / n ) 1 / 2 ,
MAE = i = 1 n | y i y ̑ i | / n .

3. Experimental Program

Experimental work was also carried out to validate the prediction based on the mathematic models. To manufacture the concrete specimens, 42.5-grade ordinary Portland cement produced by the Yunnan Kunming Huaxin Cement Factory was used. Crushed stone with 5–25 mm continuous grade was used as coarse aggregate. Machined sand with a fineness of 2.82 was used as fine aggregate, and a sand ratio of 40% was applied. Water–binder ratios (W/B) of 0.3, 0.4 and 0.5 were used for comparison. Mix proportions of concrete specimens are provided in Table 3.
Concrete specimens with a size of 100 mm × 100 mm × 100 mm were manufactured in accordance with the Chinese national standard GB/T 50081-2019. The concrete mixture was cast into the mold in two layers. After each layer-casting, the mixture was vibrated for 10–20 s on a vibration table to eliminate any possible voids. The hardened concrete specimens were de-molded after standing for 1 day in an ambient environment and then put in a curing room with a temperature of 20 ± 1 °C and relative humidity of 100%. After curing for another 27 days, the specimens were extracted and placed in an electrical muffle furnace for heating with the operation mechanism provided in Table 4 (illustrated graphically in Figure 5). Afterwards, the specimens were crushed using a WE-300 hydraulic universal testing machine to test compressive strength. Three duplicated specimens were produced for each mix at each heating temperature, and the strength reported is an average of the three results. The strength loss percentage was calculated using Equation (1).

4. Results and Discussion

4.1. Modeling

Regressions of the BP, PSO-BP and RF models are shown in Figure 6, Figure 7 and Figure 8, respectively. In the figures, the X (Target) and Y (Output) axis represent the data (P) reported in the literature and those obtained via modeling, respectively. The dotted line refers to the output value equal to the target value, and the correlation coefficient R equals 1. The real line is the regression of the real relation between output value and target value. The closer the real line is to the dotted line, the higher the R-value. From Figure 6, it can be seen that there is a good correlation between the data samples no matter whether training, testing, validation or the whole stage of the BP modeling is considered, as the R-value is greater than 0.86. PSO processing improved the correlation further as the minimum R-value increased to 0.87 (see Figure 7). The correlation was significantly improved when RF modeling was applied, as all the R values were higher than 0.92 (see Figure 8). Error evaluation of the models is provided in Table 5. Both RMSE and MAE values of the models were at a very low level. This was particularly true when the PSO-BP and the RF models were considered. Both correlation and error evaluation indicated that the accuracy of the models was sufficiently high. Compared to the BP model, the PSO-BP and the RF models were more accurate.

4.2. Experimental Validation

Later, experimental work was carried out to validate the feasibility of the modeling prediction. The compressive strength of the seven concrete mixes was experimentally tested to calculate the strength loss percentage; the results are reported in Table 6 and Figure 9. The appearance of the concrete specimens before and after high-temperature exposures is shown in Figure 10. From the results, it can be seen that the compressive strength of all seven mixes reduced with the increase in temperature. After 800 °C, only 24–36% of the strength remained. With the increase of W/B from 0.3 to 0.5 (mixes 1, 2 and 3), concrete specimens were to be less dense [3], resulting in a lower strength at room temperature and a higher strength loss after high-temperature exposures. When a lower heating velocity was applied (comparison between mixes two and four), the heating duration was prolonged to achieve the target temperature causing higher strength loss [93]. A shorter maintenance duration at the high temperatures (comparison between mixes two and five) could protect the specimens from worse thermal damage [94]; therefore, lower strength loss was observed. It is usually considered that water cooling will cause thermal stress distributed in concrete to lower its strength [45]. It was found that the shrinkage of the cement matrix with temperature could compensate for such stress [95]; therefore, in this paper, it was observed that water cooling had a less significant influence on the strength loss (comparison between mixes two and six). After cooling, resting for a certain duration before crushing allowed parts of the products of concrete, which were decomposed thermally, to rehydrate to make the concrete dense [96]. Consequently, it was found that the specimens with a one-day-resting duration showed less strength loss.
Simultaneously, the material and heating-related parameters used in the experimental work were put in the models to run a prediction, and the results predicted are reported in Table 6 as well. The error between the results measured and predicted (100% × |predicted value-measured value|/measured value) is illustrated in Figure 11, and the statistic of the errors is summarized in Table 7. From the results, it can be seen that although in all cases the maximum error values were relatively high, i.e., more than 30%, the mean values of less than 10% were still at a low level, which could meet the requirement of engineering practice. Furthermore, concrete mix one always yielded the largest error value in all three predictions. A possible reason for that could be due to a relatively low W/B of 0.3 being used in mix one, and the temperature was not high enough, i.e., 200 °C; therefore, the data under such circumstances is not adequate in the literature to run sufficient training during modeling. Nevertheless, compared to the BP model, the PSO-BP and the RF models indeed improved the feasibility of the prediction as both the error range and the average error were reduced dramatically.
Due to the sufficient feasibility of the prediction, it is suggested that in practice, engineers could input relevant parameters into the models to yield a residual strength instantly, which could also avoid secondary damage to the post-fire building caused by destructive testing, and the results would be objective and more reliable.

4.3. VIM

In this paper, a VIM was implemented using the RF model to rank the importance of the inputting parameters on compressive strength loss of normal concrete after high temperature, and the result is illustrated in Figure 12. The importance ranking is in the sequence of T > W/B > V > MD > RD > C. Heating temperature had a crucial influence, accounting for 67.3%. Influences contributed by W/B and heating velocity were quite similar, accounting for 11.6% and 10.3%, respectively, followed by the duration at target temperature and duration after cooling, accounting for 5.6% and 4.2%, respectively; the influence of the cooling method was insignificant, accounting for only 1.0%.
It is clear that, for normal concrete, the decomposition of hydration products, cracking, loosening of matrix structure and expansion and/or decomposition of aggregates caused the loss of compressive strength with the increase in temperature [3]. Consequently, the temperature should be the most important factor influencing the compressive strength loss of concrete. As discussed in Section 4.2, it is usually considered that water cooling will result in thermal stress in concrete to dramatically reduce its strength. At the same time, it is also found that shrinkage of cement matrix with temperature would compensate for such stress to lower the influence on the strength loss. Therefore, the importance of the cooling method is less significant. Furthermore, a smaller amount of literature has discussed the influence of the cooling method on the compressive strength of normal concrete; therefore, a smaller data size would also have an influence on the ranking of the cooling method.

5. Conclusions

Fires in buildings cause serious damage to structural concrete. Post-fire assessments currently used are usually subjective and destructive. Therefore, BP, PSO-BP and RF models were established in this paper to predict the compressive strength loss of normal concrete after high temperatures.
(1)
To establish the models, 1803 sets of data from the publicly published literature were used, W/B, T, V, MD, C and RD were determined as input parameters and P was applied as an output parameter. Based on RMSE and MAE error evaluation, the accuracy of all three models was sufficiently high. Compared to the BP model, both the PSO-BP and the RF models were more accurate.
(2)
Parallel experimental work was carried out with modeling prediction using the same parameters. An error value between the results measured and predicted of less than 10% proved that all three models had sufficient feasibility to complement the prediction. Compared to the other two models, RF one was much more feasible.
(3)
Based on the RF model, the importance of the input parameters was ranked in the sequence of T > W/B > V > MD > RD > C.
(4)
With the continuous expansion of data size, the accuracy of the models could be improved further. Such prediction work has provided a new perspective to assess the post-fire properties of concrete non-destructively and objectively. Additionally, it could be used to guide performance-based design for fire-resistant concrete.

Author Contributions

Conceptualization, X.Q. and Q.M.; methodology, Q.M.; software, X.Q.; validation, R.G. and S.T.; formal analysis, X.Q.; investigation, Q.M.; resources, R.G.; data collection, S.T.; writing original draft preparation, X.Q.; writing—review and editing, Q.M.; visualization, S.T.; supervision, R.G.; project administration, Q.M.; funding acquisition, Q.M. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the National Natural Science Foundation of China grant number [52068038] and the Yunnan Provincial Department of Science and Technology grant number [202101AT070089].

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

All the data used to support the finding of this study have been included in the article.

Conflicts of Interest

No conflicts of interest.

Appendix A

Table A1. Data for modeling.
Table A1. Data for modeling.
REF.Input ParametersOutput Parameters
W/BT (°C)V (°C/min)MD (h)CRD (day)P (%)
[5]0.49200102114−4.28
0.493001021148.06
0.4940010211411.83
0.495001021142.00
0.49600102114−23.50
0.49700102114−50.06
0.49800102114−71.17
0.49200102014−1.33
0.493001020140.94
0.49400102014−1.75
0.495001020141.81
0.49600102014−17.64
0.49700102014−42.75
0.49800102014−63.03
[6]0.181002213−1.05
0.18200221314.65
0.18300221325.42
0.18400221334.56
0.1850022138.61
0.1860022134.22
0.188002213−68.85
[7]0.522005610−1.05
0.524005610−9.41
0.526005610−27.74
0.528005610−43.71
0.5220056022.09
0.524005602−11.00
0.526005602−33.50
0.528005602−52.36
[8]0.3310510311−7.06
0.3320010311−12.86
0.3340010311−36.64
0.3360010311−63.91
0.3380010311−85.36
[9]0.4910510611−10.00
0.4930010611−2.80
0.4950010611−13.34
0.4970010611−51.94
0.610510610−11.67
0.630010610−7.00
0.650010610−19.63
0.670010610−44.23
0.4910510610−10.01
0.4930010610−3.42
0.4950010610−14.23
0.4970010610−41.75
0.410510610−12.74
0.430010610−9.07
0.450010610−10.81
0.470010610−46.70
[10]0.510010111−8.28
0.510010211−8.77
0.510010311−6.16
0.510010111−6.62
0.510010211−8.48
0.510010311−1.86
0.510010111−6.85
0.510010211−8.95
0.510010311−4.09
0.530010111−7.35
0.530010211−5.64
0.530010311−6.67
0.530010111−4.23
0.530010211−6.11
0.530010311−7.73
0.530010111−3.16
0.530010211−4.66
0.530010311−7.77
0.550010111−38.09
0.550010211−41.99
0.550010311−46.16
0.550010111−36.27
0.550010211−41.93
0.550010311−47.90
0.550010111−39.07
0.550010211−41.79
0.550010311−48.22
0.570010111−62.35
0.570010211−67.53
0.570010311−68.91
0.570010111−63.46
0.570010211−66.48
0.570010311−69.65
0.570010111−66.18
0.570010211−68.90
0.570010311−70.65
[11]0.57200161.512−6.75
0.57400101.512−13.00
0.5760031.512−48.75
0.57200161.502−2.25
0.57400101.502−20.00
0.5760031.502−38.50
0.57200161.512−17.02
0.57400101.512−26.71
0.5760031.512−55.79
0.57200161.502−15.60
0.57400101.502−29.08
0.5760031.502−47.04
0.57200161.512−11.33
0.57400101.512−23.65
0.5760031.512−61.08
0.57200161.502−10.10
0.57400101.502−32.51
0.5760031.502−48.77
0.57200161.512−7.73
0.57400101.512−27.93
0.5760031.512−57.61
0.57200161.502−3.24
0.57400101.502−32.67
0.5760031.502−41.15
0.57200161.512−5.97
0.57400101.512−28.05
0.5760031.512−62.08
0.578002.291.512−83.64
0.57200161.502−3.90
0.57400101.502−37.66
0.5760031.502−48.05
0.578002.291.502−88.31
[12]0.42300301.51901.37
0.425002511901.31
0.4270017.511901.78
0.4290011.251190−1.75
0.42300301.671900.03
0.42500251.671904.24
0.4270017.51.67190−15.57
0.4290011.251.67190−27.11
0.42300302.331902.17
0.42500252.33190−5.90
0.4270017.52.33190−50.55
0.4290011.252.33190−70.10
0.423003031904.57
0.42500253190−4.57
0.4270017.53190−58.82
0.4290011.253190−73.57
0.42300301090−2.33
0.42500251090−10.62
[13]0.4270017.51090−15.43
0.4290011.251090−21.31
0.42300301.67090−5.22
0.42500251.67090−1.21
0.4270017.51.67090−13.78
0.4290011.251.67090−47.30
0.42300302.33090−1.42
0.42500252.33090−17.73
0.4270017.52.33090−48.21
0.4290011.252.33090−58.64
0.423003030902.91
0.42500253090−9.12
0.4270017.53090−63.13
0.4290011.253090−72.22
[14]0.522006.67212−14.58
0.522006.67612−17.17
0.522006.672412−24.02
0.522006.674812−26.80
0.5240013.33212−45.23
0.5240013.33612−52.54
0.5240013.332412−57.13
0.5240013.334812−60.30
0.5260020212−85.16
0.5260020612−88.72
0.52600202412−89.46
0.52600204812−90.56
0.5280026.67212−92.43
0.5280026.67612−92.79
0.5280026.672412−93.18
0.5280026.674812−93.95
[15]0.581501503127−3.25
0.5815015031253.25
0.581501503121−15.52
0.581501503114−17.33
0.58150150310−22.74
0.583003003127−13.36
0.583003003125−8.30
0.583003003121−20.58
0.583003003114−16.35
0.58300300310−29.96
0.584002003127−19.49
0.584002003125−9.75
0.584002003121−13.00
0.584002003114−22.02
0.58400200310−16.97
0.58600753127−37.55
0.58600753125−23.47
0.58600753121−29.97
0.58600753114−47.29
0.5860075310−35.74
0.5880035.53127−62.82
0.5880035.53125−47.29
0.5880035.53121−51.99
0.5880035.53114−73.65
0.5880035.5310−59.93
0.5890020.23127−79.78
0.5890020.23125−69.68
0.5890020.23121−75.09
0.5890020.23114−84.12
0.5890020.2310−75.09
0.5815015030275.12
0.5815015030251.89
0.581501503021−1.41
0.581501503014−5.45
0.58150150300−27.17
0.58300300302710.91
0.58300300302519.22
0.5830030030211.89
0.583003003014−9.17
0.58300300300−31.73
0.5840020030271.81
0.5840020030256.39
0.5840020030213.55
0.584002003014−2.55
0.58400200300−18.90
0.58600753027−25.92
0.58600753025−11.40
0.58600753021−24.59
0.58600753014−59.04
0.5860075300−76.83
0.5880035.53027−42.47
0.5880035.53025−30.85
0.5880035.53021−38.24
0.5880035.53014−57.59
0.5880035.5300−76.83
0.5890020.23027−65.64
0.5890020.23025−51.54
0.5890020.23021−56.03
0.5890020.23014−76.21
0.5890020.2300−87.17
[16]0.342005310−3.57
0.344005310−27.26
0.346005310−59.08
0.42005310−8.24
0.44005310−28.92
0.46005310−57.47
0.52005310−10.54
0.54005310−23.49
0.56005310−53.37
[17]0.492002.581041.30
0.494002.58107.60
0.496002.5810−33.20
0.497002.5810−46.70
0.498002.5810−66.30
0.492002.5810−23.40
0.494002.5810−46.50
0.496002.5810−55.50
0.497002.5810−65.50
0.498002.5810−67.60
0.499002.5810−82.50
[18]0.4230010610−27.00
0.4250010610−44.00
0.4270010610−64.00
0.4230010610−14.00
0.4250010610−33.00
0.4270010610−67.00
[19]0.25200900.511−4.59
0.25400900.511−13.33
0.25600540.511−32.43
0.2580028.420.511−44.40
0.3200900.511−4.52
0.3400900.511−12.36
0.3600540.511−31.62
0.380028.420.511−46.36
[20]0.31200103104.63
0.314001031045.66
0.31600103107.07
0.3180010310−56.30
0.312001031038.68
0.314001031052.44
0.316001031023.40
0.3180010310−49.33
[21]0.320016210−10.55
0.340020.5210−29.61
0.360017.5210−47.08
0.380013.4210−75.64
0.320016210−12.78
0.340020.5210−31.86
0.360017.5210−48.60
0.380013.4210−78.01
0.320016210−15.41
0.340020.5210−37.21
0.360017.5210−51.17
0.380013.4210−78.30
0.320016210−10.35
0.340020.5210−35.24
0.360017.5210−49.20
0.380013.4210−79.57
[22]0.48200101.510−16.21
0.48400101.510−10.48
0.48800101.510−4.68
0.48200101.5104.29
0.48400101.510−69.21
0.48800101.510−31.90
[23]0.3520012210−18.16
0.3530012210−28.18
0.3540012210−22.24
0.3560012210−41.64
0.3580012210−69.66
0.3520012210−8.54
0.3530012210−17.24
0.3540012210−15.05
0.3560012210−37.74
0.3580012210−72.94
0.3520012210−7.32
0.3530012210−16.47
0.3540012210−14.25
0.3560012210−36.24
0.3580012210−66.57
0.3520012210−14.66
0.3530012210−23.60
0.3540012210−21.76
0.3560012210−41.94
0.3580012210−71.91
[24]0.3320015211−8.24
0.3340015211−19.06
0.3360015211−40.14
0.3380015211−65.84
0.3320015211−5.55
0.3340015211−14.62
0.3360015211−32.71
0.3380015211−44.80
0.3320015211−9.10
0.3340015211−16.28
0.3360015211−32.99
0.3380015211−45.90
0.3320015211−9.07
0.3340015211−20.40
0.3360015211−33.99
0.3380015211−48.03
[25]0.27200101.510−0.13
0.27400101.510−7.02
0.27600101.510−28.61
0.27800101.510−71.52
0.27200101.510−19.42
0.27400101.510−30.87
0.27600101.510−37.39
0.27800101.510−70.14
[26]0.498006110−74.41
0.4911006110−91.88
0.498006100−78.62
0.4911006100−91.57
0.498006110−65.90
0.4911006110−87.75
0.498006100−71.63
0.4911006100−89.60
[27]0.4925010207−2.03
0.4945010207−3.36
0.4925010207−7.90
0.4945010207−21.94
0.4925010207−17.92
0.4945010207−28.29
0.4925010207−23.79
0.4945010207−31.72
0.4955010207−46.32
0.4965010207−66.78
[28]0.551005112−9.01
0.553005112−26.12
0.555005112−36.94
0.557005112−47.75
0.331005112−8.74
0.333005112−33.01
0.335005112−45.63
0.337005112−69.90
[29]0.36200201.502−4.30
0.36300201.502−4.70
0.3640020202−15.30
0.3650020202−35.60
0.36600202.502−40.50
0.36700202.502−44.20
0.36800202.502−69.20
[30]0.44100100210.2519.38
0.44100100210.250.32
0.44100100210.25−0.66
0.44200200210.251.94
0.44200200210.25−7.05
0.44200200210.254.32
0.44300300210.256.20
0.44300300210.25−16.99
0.44300300210.25−9.97
0.44400400210.251.94
0.44400400210.25−14.10
0.44400400210.25−18.27
0.44500500210.25−7.75
0.44500500210.25−19.87
0.44500500210.25−15.61
0.446002.5110.25−24.81
0.446002.5110.25−32.69
0.446002.5110.25−31.89
0.447002.5110.25−47.67
0.447002.5110.25−50.64
0.447002.5110.25−57.81
0.448002.5110.25−54.26
0.448002.5110.25−60.90
0.448002.5110.25−72.09
0.449002.5110.25−74.03
0.449002.5110.25−77.88
0.449002.5110.25−74.42
0.35100100210.25−1.48
0.35100100210.252.08
0.35100100210.256.04
0.35200200210.25−8.62
0.35200200210.25−7.79
0.35200200210.250.00
0.35300300210.25−12.56
0.35300300210.25−3.64
0.35300300210.25−12.09
0.35400400210.25−20.69
0.35400400210.25−16.88
0.35400400210.25−7.69
0.35500500210.25−26.60
0.35500500210.25−24.68
0.35500500210.25−22.53
0.356002.5110.25−40.89
0.356002.5110.25−38.18
0.356002.5110.25−32.69
0.357002.5110.25−43.60
0.357002.5110.25−45.19
0.357002.5110.25−32.97
0.358002.5110.25−60.59
0.358002.5110.25−60.00
0.358002.5110.25−52.75
0.359002.5110.25−78.08
0.359002.5110.25−80.52
0.359002.5110.25−75.82
0.35100100210.252.90
0.35100100210.252.31
0.35100100210.254.78
0.35200200210.25−9.54
0.35200200210.25−9.64
0.35200200210.25−9.56
0.35300300210.25−16.80
0.35300300210.25−18.03
0.35300300210.25−17.67
0.35400400210.25−18.67
0.35400400210.25−25.37
0.35400400210.25−22.25
0.35500500210.25−27.59
0.35500500210.25−27.67
0.35500500210.25−27.86
0.356002.5110.25−31.33
0.356002.5110.25−33.33
0.356002.5110.25−32.85
0.357002.5110.25−37.97
0.357002.5110.25−41.72
0.357002.5110.25−40.33
0.358002.5110.25−61.83
0.358002.5110.25−58.07
0.358002.5110.25−61.33
0.359002.5110.25−88.80
[31]0.4610011611−4.00
0.4630011611−15.00
0.4650011611−45.00
0.4670011611−73.00
0.4610011617−14.00
0.4630011617−18.00
0.4650011617−58.00
0.4670011617−79.00
0.461001161144.00
0.46300116114−21.00
0.46500116114−60.00
0.46700116114−78.00
0.461001161280.00
0.46300116128−23.00
0.46500116128−63.00
0.46700116128−80.00
0.46100116156−9.00
0.46300116156−17.00
0.46500116156−58.00
0.46700116156−75.00
0.46100116177−16.00
0.46300116177−26.00
0.46500116177−52.00
0.46700116177−77.00
0.461001161112−5.00
0.463001161112−23.00
0.465001161112−57.00
0.467001161112−76.00
[32]0.4320020110−24.30
0.4330017.5110−18.66
0.434002.24110−24.66
0.435001.84110−28.99
0.436001.16110−41.69
0.437001.04110−62.96
0.438001.02110−70.94
[33]0.56150101.510−3.80
0.56250101.510−8.70
0.56350101.510−13.60
0.56450101.510−21.50
0.56550101.510−37.70
0.56650101.510−53.60
0.56150101.500−11.30
0.56250101.500−18.00
0.56350101.500−22.60
0.56450101.500−25.70
0.56550101.500−29.80
0.56650101.500−35.10
0.53150101.510−4.20
0.53250101.510−11.70
0.53350101.510−15.90
0.53450101.510−18.40
0.53550101.510−33.30
0.53650101.510−51.50
0.53150101.500−7.40
0.53250101.500−14.60
0.53350101.500−21.00
0.53450101.500−23.00
0.53550101.500−24.30
0.53650101.500−31.40
0.5150101.510−6.10
0.5250101.510−13.00
0.5350101.510−18.60
0.5450101.510−23.50
0.5550101.510−35.40
0.5650101.510−56.20
0.5150101.500−7.80
0.5250101.500−15.70
0.5350101.500−21.70
0.5450101.500−29.00
0.5550101.500−25.80
0.5650101.500−31.30
[34]0.772002.5111−8.40
0.774002.5111−12.38
0.778002.5111−84.51
0.772002.5111−4.23
0.774002.5111−13.93
0.778002.5111−70.04
0.772002.5111−7.01
0.774002.5111−14.02
0.778002.5111−68.49
0.772002.5111−3.59
0.774002.5111−25.01
0.778002.5111−77.04
0.772002.5111−1.51
0.774002.5111−6.82
0.778002.5111−64.01
0.772002.5111−7.97
0.774002.5111−16.88
0.778002.5111−56.69
0.772002.5111−11.30
0.774002.5111−14.78
0.778002.5111−56.23
0.772002.5111−11.69
0.774002.5111−35.50
0.778002.5111−56.28
[35]0.298512410−78.80
0.2985110410−57.60
0.29851100410−8.00
0.258512410−78.30
0.2585110410−68.90
0.25851100410−16.20
0.278512410−74.20
0.2785110410−73.70
0.27851100410−7.00
0.248512410−75.70
0.2485110410−78.00
0.24851100410−11.50
[36]0.4320010611−0.97
0.43300106116.31
0.4340010611−13.56
0.4350010611−21.81
0.3720010611−2.46
0.3730010611−18.60
0.3740010611−13.31
0.3750010611−28.04
[37]0.41003310−13.32
0.42003310−10.05
0.43003310−24.80
0.46003310−66.47
0.351003310−15.04
0.352003310−12.75
0.353003310−23.80
0.356003310−70.16
0.31003310−15.52
0.32003310−14.72
0.33003310−30.95
0.36003310−73.35
0.31003310−14.52
0.32003310−11.99
0.33003310−27.48
0.36003310−69.15
[38]0.296002.5010−52.55
0.298002.5010−74.47
0.296002.5010−45.45
0.298002.5010−66.67
0.296002.5010−49.91
0.298002.5010−75.08
0.296002.5010−48.00
0.298002.5010−67.63
0.296002.5010−61.35
0.298002.5010−81.70
0.296002.5010−55.75
0.298002.5010−75.53
0.296002.5010−59.23
0.298002.5010−82.60
0.296002.5010−62.54
0.298002.5010−82.87
0.296002.5010−55.06
0.298002.5010−79.29
0.296002.5010−54.30
0.298002.5010−75.18
0.296002.5010−53.18
0.298002.5010−71.97
0.296002.5010−54.95
0.298002.5010−80.99
0.296002.5010−58.42
0.298002.5010−82.65
0.296002.5010−54.54
0.298002.5010−76.78
[39]0.212042130.04
0.220042130.07
0.230042130.14
0.240042130.17
0.250042130.00
0.26004213−0.16
0.27004213−0.44
0.28004213−0.81
0.29004213−0.80
0.212042130.05
0.220042130.06
0.230042130.12
0.240042130.15
0.250042130.01
0.26004213−0.20
0.27004213−0.41
0.28004213−0.72
0.29004213−0.69
0.212042130.06
0.220042130.08
0.230042130.13
0.240042130.16
0.250042130.09
0.26004213−0.15
0.27004213−0.40
0.28004213−0.72
0.29004213−0.68
[40]0.282005000−30.95
0.284005000−36.11
0.412005000−11.29
0.414005000−9.57
0.412005000−9.23
0.414005000−4.62
0.416005000−33.46
0.418005000−68.65
0.642005000−10.41
0.644005000−19.46
0.646005000−35.75
0.648005000−70.14
0.642005000−16.97
0.644005000−49.54
0.646005000−66.51
0.648005000−76.15
[41]0.34100103102.54
0.342009.09310−11.38
0.3430010.89310−5.84
0.344008.7310−14.82
0.345009.09310−23.80
0.346008.82310−40.42
0.347008.92310−51.65
0.348008.73310−67.81
0.349008.91310−83.83
0.31001031010.74
0.32009.09310−1.67
0.330010.893108.95
0.34008.7310−7.40
0.36008.82310−52.03
0.38008.73310−63.60
0.39008.91310−76.37
0.2510010310−6.34
0.252009.09310−9.09
0.2530010.89310−11.85
0.254008.7310−9.09
0.255009.09310−30.67
0.256008.82310−41.23
0.257008.92310−56.38
0.3410010310−0.15
0.342009.09310−2.26
0.3430010.893103.77
0.344008.7310−15.51
0.345009.09310−22.59
0.346008.82310−39.61
0.347008.92310−50.75
0.348008.73310−72.44
0.349008.91310−81.33
0.3100103106.99
0.32009.0931010.29
0.330010.893103.96
0.34008.7310−4.88
0.35009.09310−21.77
0.36008.82310−22.96
0.37008.92310−33.51
0.38008.73310−61.48
0.39008.91310−71.24
0.25100103100.10
0.252009.09310−7.86
0.2530010.89310−3.49
0.254008.7310−0.29
0.255009.09310−31.81
0.256008.82310−46.56
0.257008.92310−64.79
0.258008.73310−74.01
0.259008.91310−80.60
[42]0.54002.5317−1.77
0.56002.5317−23.92
0.58002.5317−69.93
0.54002.53172.85
0.56002.5317−11.71
0.58002.5317−66.18
0.54002.531717.12
0.56002.5317−5.30
0.58002.5317−57.75
0.54002.53177.84
0.56002.5317−4.73
0.58002.5317−55.76
0.54002.531712.74
0.56002.5317−5.75
0.58002.5317−63.26
0.54002.531720.40
0.56002.5317−26.41
0.58002.5317−76.98
0.54002.53174.62
0.56002.5317−19.48
0.58002.5317−75.39
0.54002.53172.86
0.56002.5317−19.80
0.58002.5317−77.81
0.54002.53173.29
0.56002.5317−25.48
0.58002.5317−77.02
[43]0.5350163009.06
0.5310016300−3.92
0.5315016300−5.34
0.5320016300−23.00
0.5325016300−26.59
0.5330016300−30.54
0.5335016300−26.90
0.5340016300−57.57
0.5345016300−47.44
0.5350016300−55.71
0.5360016300−59.28
0.5370016300−67.17
0.53501631013.39
0.531001631020.27
0.5315016310−1.01
0.5320016310−16.14
0.5325016310−19.01
0.5330016310−23.68
0.5335016310−18.60
0.5340016310−30.49
0.5345016310−33.71
0.5350016310−48.13
0.5360016310−49.89
0.5370016310−61.39
0.535016300−6.01
0.5310016300−13.34
0.5315016300−18.00
0.5320016300−20.66
0.5325016300−32.67
0.5330016300−21.27
0.5335016300−29.95
0.5340016300−42.63
0.5345016300−37.92
0.5350016300−45.59
0.5360016300−62.93
0.5370016300−68.23
0.535016310−4.01
0.5310016310−9.33
0.5315016310−8.64
0.5320016310−17.98
0.5325016310−19.96
0.5330016310−16.26
0.5335016310−19.24
0.5340016310−20.56
0.5345016310−23.54
0.5350016310−31.88
0.5360016310−42.87
0.5370016310−54.52
[44]0.431001010−4.72
0.432001010−25.65
0.434001010−28.44
0.436001010−35.62
0.438001010−56.00
0.431001010−13.26
0.432001010−20.74
0.434001010−20.93
0.436001010−33.55
0.438001010−70.24
0.4310010101.75
0.432001010−15.82
0.434001010−15.24
0.436001010−32.51
0.438001010−69.72
[45]0.32005.5010−7.41
0.34005.5010−12.12
0.36005.5010−26.94
0.38005.5010−46.97
0.310005.5010−89.06
0.32005.5000−27.27
0.34005.5000−29.12
0.36005.5000−43.43
0.52006.67010−31.84
0.54006.67010−23.15
0.56006.67010−26.09
0.58006.67010−51.47
0.510006.67010−75.32
0.52006.67000−32.90
0.54006.67000−29.38
0.56006.67000−33.96
0.58006.67000−55.82
[46]0.431100.10.510−0.82
0.432100.10.510−7.01
0.433100.10.510−34.65
[47]0.520010210−16.93
0.520010410−27.46
0.520010610−34.93
0.540010210−18.43
0.540010410−27.09
0.540010610−33.84
0.560010210−35.75
0.560010410−38.31
0.560010610−41.34
0.520010210−16.08
0.520010410−16.08
0.520010610−8.08
0.540010210−9.86
0.540010410−13.11
0.540010610−17.52
0.560010210−15.78
0.560010410−20.41
0.560010610−19.03
0.520010210−25.15
0.520010410−31.57
0.520010610−28.94
0.540010210−20.57
0.540010410−25.76
0.540010610−34.81
0.560010210−36.31
0.560010410−41.71
0.56001061043.26
[48]0.520016.9801020.74
0.540015.75010−13.41
0.560012.7010−45.12
0.580011.28010−70.73
0.520016.98000−1.62
0.540015.75000−27.64
0.560012.7000−59.35
0.580011.28000−70.32
0.520016.98000−13.00
0.540015.75000−40.65
0.560012.7000−69.51
0.580011.28000−85.37
0.520016.98000−15.04
0.540015.75000−45.53
0.560012.7000−67.07
0.580011.28000−80.89
0.520016.98000−12.19
0.540015.75000−33.74
0.560012.7000−66.26
0.580011.28000−82.11
0.520016.980108.12
0.540015.75010−21.40
0.560012.7010−47.97
0.580011.28010−72.32
0.520016.980006.64
0.540015.75000−27.31
0.560012.7000−53.87
0.580011.28000−67.53
0.520016.98000−8.49
0.540015.75000−42.07
0.560012.7000−64.21
0.580011.28000−92.99
0.520016.98000−10.33
0.540015.75000−41.33
0.560012.7000−62.73
0.520016.98000−6.64
0.540015.75000−34.32
0.560012.7000−61.62
0.520016.980109.95
0.540015.75010−10.38
0.560012.7010−47.88
0.580011.28010−84.65
0.520016.980007.10
0.540015.75000−24.68
0.560012.7000−60.01
0.580011.28000−87.14
0.520016.98000−11.46
0.540015.75000−34.31
0.560012.7000−69.66
0.580011.28000−92.49
0.520016.98000−13.60
0.540015.75000−37.16
0.560012.7000−67.15
0.520016.98000−8.60
0.540015.75000−35.37
0.560012.7000−63.58
0.520016.9801031.91
0.540015.75010−7.44
0.560012.7010−38.87
0.580011.28010−74.27
0.520016.980003.20
0.540015.75000−13.39
0.560012.7000−48.78
0.580011.28000−75.75
0.520016.98000−7.20
0.540015.75000−32.19
0.560012.7000−64.61
0.580011.28000−86.64
0.520016.98000−4.72
0.540015.75000−28.23
0.560012.7000−60.65
0.580011.28000−85.16
0.520016.98000−2.74
0.540015.75000−21.80
0.560012.7000−51.75
0.580011.28000−84.17
0.520016.980108.03
0.540015.75010−23.89
0.560012.7010−47.18
0.580011.28010−75.93
0.520016.98000−6.06
0.540015.75000−42.98
0.560012.7000−60.82
0.580011.28000−78.65
0.520016.98000−12.87
0.540015.75000−54.80
0.560012.7000−71.27
0.580011.28000−88.65
0.520016.98000−9.69
0.540015.75000−49.80
0.560012.7000−67.63
0.580011.28000−85.01
0.520016.98000−7.87
0.540015.75000−46.62
0.560012.7000−64.91
0.580011.28000−85.93
[49]0.520020210.087.58
0.530020210.08−0.26
0.540020210.08−3.18
0.550020210.08−5.45
0.560020210.08−8.70
0.570020210.08−25.06
0.580020210.08−71.92
0.5100020210.08−86.94
0.5120020210.08−93.12
0.620020210.08−2.25
0.640020210.08−0.56
0.660020210.08−12.96
0.670020210.08−27.69
0.680020210.08−62.41
0.6100020210.08−85.30
0.6120020210.08−92.13
0.420020210.08−4.87
0.440020210.08−15.97
0.460020210.08−25.12
0.470020210.08−49.68
0.480020210.08−78.81
0.4100020210.08−89.26
0.4120020210.08−98.03
0.520020210.08−0.61
0.540020210.08−27.77
0.550020210.08−34.62
0.560020210.08−56.89
0.570020210.08−66.69
0.590020210.08−83.69
0.5120020210.08−98.69
[50]0.411505510−18.56
0.413005510−24.08
0.414005510−35.49
0.415005510−39.87
0.416005510−60.80
0.417005510−75.40
0.411505510−17.85
0.413005510−24.73
0.414005510−34.56
0.415005510−37.13
0.416005510−61.01
0.417005510−73.10
0.411505510−18.27
0.413005510−24.47
0.414005510−36.56
0.415005510−55.23
0.416005510−66.19
0.417005510−75.55
0.411505510−18.70
0.413005510−32.15
0.414005510−49.91
0.415005510−58.15
0.416005510−66.16
0.417005510−77.80
[51]0.41003310−13.70
0.42003310−10.20
0.43003310−24.70
0.46003310−66.60
0.351003310−15.00
0.352003310−12.50
0.353003310−23.50
0.356003310−70.50
0.31003310−14.60
0.3200331011.40
0.33003310−27.30
0.36003310−68.80
0.31003310−15.30
0.32003310−14.10
0.33003310−29.60
0.36003310−70.90
0.31003310−15.90
0.32003310−14.80
0.33003310−31.30
0.36003310−73.20
[52]0.4210531610−17.71
0.421503410−14.07
0.421503810−9.83
0.4215031610−7.71
0.422003410−0.54
0.422003810−3.16
0.4220031610−5.05
0.422503410−1.28
0.422503810−4.25
0.4225031610−6.29
0.423003410−4.06
0.423003810−7.13
0.4230031610−9.21
0.423503410−7.34
0.423503810−10.38
0.4235031610−12.33
0.424003410−11.56
0.424003810−14.15
0.4240031610−15.86
0.424503410−16.00
0.424503810−18.37
0.4245031610−19.86
[53]0.5410015.6010−3.65
0.5430015.6010−21.40
0.5450015.6010−29.07
0.5480015.6010−37.90
0.5410015.6010−5.37
0.5430015.6010−22.55
0.5450015.6010−36.69
0.5480015.6010−50.67
0.5410015.6010−8.42
0.5430015.6010−23.88
0.5450015.6010−37.07
0.5480015.6010−55.24
0.5410015.6010−9.94
0.5430015.6010−23.88
0.5450015.6010−38.21
0.5480015.6010−58.09
[54]0.252006.6720021.61
0.254006.672001.26
0.256006.67200−29.58
0.258006.67200−70.33
0.2510006.67200−88.92
[55]0.2640010112−0.48
0.2660010112−21.53
0.2680010112−70.56
[56]0.42001031284.29
0.4400103128−15.71
0.4600103128−24.29
0.4800103128−52.86
0.41000103128−61.43
0.4200103028−1.43
0.4400103028−24.29
0.4600103028−34.29
0.4800103028−57.14
0.41000103028−74.29
[57]0.621501010−2.55
0.623001010−5.71
0.624501010−42.01
0.626001010−90.96
0.551501010−8.44
0.553001010−0.76
0.554501010−50.38
0.556001010−83.85
0.441501010−9.39
0.4430010102.45
0.444501010−58.29
0.446001010−87.17
0.3615010104.66
0.36300101011.67
0.364501010−47.72
0.366001010−84.58
0.291501010−1.72
0.2930010107.41
0.29350101020.54
0.296001010−84.87
[58]0.3320013103.86
0.334001310−17.66
0.336001310−49.04
0.338001310−75.02
0.3320013103.21
0.334001310−15.91
0.336001310−49.41
0.338001310−76.35
0.332001310−2.29
0.334001310−17.49
0.336001310−53.97
0.338001310−76.66
0.332001310−2.18
0.334001310−16.53
0.336001310−54.68
0.338001310−78.94
0.332001310−0.53
0.334001310−18.59
0.336001310−57.16
0.338001310−77.98
0.3320013103.58
0.334001310−19.79
0.336001310−57.00
0.338001310−80.14
0.332001310−5.91
0.334001310−20.10
0.336001310−54.58
0.338001310−81.95
0.3320013101.91
0.334001310−23.97
0.336001310−50.66
0.338001310−76.39
0.332001310−1.37
0.334001310−16.77
0.336001310−52.98
0.338001310−77.25
0.332001310−1.61
0.334001310−21.09
0.336001310−48.67
0.338001310−78.99
0.332001310−3.44
0.334001310−22.70
0.336001310−51.69
0.338001310−80.00
0.3320013101.10
0.334001310−18.71
0.336001310−49.54
0.338001310−76.41
0.3320013100.17
0.334001310−15.91
0.336001310−48.17
0.338001310−75.55
0.3320013103.66
0.334001310−18.71
0.336001310−47.05
0.338001310−77.40
0.332001310−4.54
0.334001310−21.01
0.336001310−50.58
0.338001310−78.00
0.332001310−7.56
0.334001310−21.89
0.336001310−48.55
0.338001310−78.97
0.332001310−8.06
0.334001310−20.73
0.336001310−47.87
0.338001310−80.42
[59]0.5610531610−17.73
0.5615031610−7.75
0.5620031610−5.07
0.5625031610−6.26
0.5630031610−9.24
0.5635031610−12.37
0.5640031610−15.95
0.5645031610−19.82
[60]0.32002.5110−3.90
0.34002.5110−12.78
0.36002.5110−42.78
0.38002.5110−76.59
0.32002.51106.36
0.34002.5110−11.03
0.36002.5110−42.83
0.38002.5110−75.86
0.32002.511010.81
0.34002.5110−7.33
0.36002.5110−39.31
0.38002.5110−73.22
0.32002.511014.90
0.34002.5110−6.87
0.36002.5110−35.44
0.38002.5110−69.50
0.32002.511019.08
0.34002.51100.14
0.36002.5110−44.28
0.38002.5110−71.78
[61]0.3120010310−11.55
0.314001031026.27
0.3160010310−5.35
0.3180010310−59.94
0.312001031051.47
0.314001031066.88
0.316001031033.89
0.3180010310−42.68
[62]0.554007.5114−18.89
0.556007.5114−20.94
0.558007.5114−50.72
0.554007.5114−17.03
0.556007.5114−21.62
0.558007.5114−59.19
0.554007.5114−14.33
0.556007.5114−21.50
0.558007.5114−63.48
0.554007.5114−19.55
0.556007.5114−27.73
0.558007.5114−66.82
[63]0.51006.5110−6.45
0.52006.5110−1.80
0.53006.5110−12.15
0.51006.5110−19.43
0.52006.5110−2.69
0.53006.5110−17.59
0.54006.5110−32.77
0.55006.5110−37.51
0.56006.5110−79.81
0.57006.5110−63.91
0.58005110−69.21
0.51006.5110−14.36
0.52006.5110−0.17
0.53006.5110−11.14
0.54006.5110−21.18
0.55006.5110−37.36
0.56006.5110−55.38
0.57006.5110−59.90
0.58005110−68.10
0.51006.511010.56
0.52006.51100.19
0.53006.51105.54
0.54006.511012.19
0.55006.5110−27.86
0.56006.5110−42.16
0.57006.5110−50.78
0.58005110−60.71
[64]0.32002.5110−3.92
0.34002.5110−10.50
0.36002.5110−41.64
0.38002.5110−77.24
0.32002.51100.09
0.34002.5110−6.35
0.36002.5110−48.18
0.38002.5110−78.08
0.32002.5110−0.25
0.34002.5110−1.41
0.36002.5110−5.89
0.38002.5110−8.73
0.32002.51102.88
0.34002.5110−6.47
0.36002.5110−53.59
0.38002.5110−80.77
0.32002.51107.12
0.34002.5110−9.14
0.36002.5110−62.59
0.38002.5110−86.22
0.32002.51105.20
0.34002.5110−13.45
0.36002.5110−68.06
0.38002.5110−91.24
0.32002.511014.50
0.34002.5110−3.19
0.36002.5110−37.83
0.38002.5110−71.62
0.32002.5110−5.69
0.34002.5110−26.14
0.36002.5110−67.05
0.38002.5110−92.05
0.32002.5110−1.92
0.34002.5110−9.61
0.36002.5110−67.31
0.38002.5110−87.50
0.32002.51101.67
0.34002.5110−14.99
0.36002.5110−71.66
0.38002.5110−90.00
0.32002.51103.34
0.34002.5110−21.33
0.36002.5110−78.00
0.38002.5110−92.67
0.32002.51100.91
0.34002.5110−18.18
0.36002.5110−64.54
0.38002.5110−84.55
[65]0.520011108.04
0.54001110−15.32
0.56001110−48.90
0.58001110−69.34
0.5200111012.83
0.54001110−14.87
0.56001110−46.62
0.58001110−69.60
0.5200111014.91
0.540011101.07
0.56001110−32.97
0.58001110−76.59
0.320011107.74
0.34001110−19.36
0.36001110−47.42
0.38001110−77.74
0.3200111014.49
0.34001110−14.84
0.36001110−44.17
0.38001110−76.33
0.3200111023.76
0.34001110−0.99
0.36001110−34.16
0.38001110−74.75
[66]0.510010110−10.42
0.530010110−22.66
0.550010110−33.41
0.580010110−78.34
0.510010100−11.30
0.530010100−35.71
0.550010100−44.69
0.580010100−76.85
0.3510010110−7.57
0.3530010110−3.72
0.35500101105.38
0.3580010110−52.45
0.3510010100−7.57
0.3530010100−14.21
0.3550010100−28.07
0.3580010100−64.58
[67]0.61001.5210−0.11
0.63001.52100.05
0.66001.5210−0.52
0.67501.5210−0.75
0.61001.5210−0.05
0.63001.52100.06
0.66001.5210−0.50
0.67501.5210−0.75
0.61001.52100.19
0.63001.52100.32
0.66001.5210−0.51
0.67501.5210−0.78
0.61001.52100.13
0.63001.52100.37
0.66001.5210−0.60
0.67501.5210−0.85
0.61001.5210−0.03
0.63001.52100.16
0.66001.5210−0.68
0.67501.5210−0.88
0.61001.52100.13
0.63001.52100.39
0.66001.5210−0.55
0.67501.5210−0.93
0.61001.52100.24
0.63001.52100.24
0.66001.5210−0.53
0.67501.5210−0.75
0.61001.5210−0.01
0.63001.5210−0.07
0.66001.5210−0.48
0.67501.5210−0.77
0.61001.5210−0.09
0.63001.5210−0.08
0.66001.5210−0.47
0.67501.5210−0.77
0.61001.5210−0.05
0.63001.5210−0.08
0.66001.5210−0.59
0.67501.5210−0.81
0.61001.52100.06
0.63001.52100.14
0.66001.5210−0.56
0.67501.5210−0.87
0.61001.52100.05
0.63001.52100.06
0.66001.5210−0.60
0.67501.5210−0.93
0.61001.52100.08
0.63001.52100.11
0.66001.5210−0.58
0.67501.5210−0.85
0.61001.52100.03
0.63001.52100.11
0.66001.5210−0.66
0.67501.5210−0.76
[68]0.2920051102.25
0.294005110−29.21
0.295005110−43.26
0.296005110−63.48
0.4520051102.68
0.454005110−16.07
0.455005110−36.61
0.456005110−59.82
0.322005110−14.20
0.324005110−42.61
0.325005110−48.30
0.326005110−68.18
0.482005110−23.97
0.484005110−19.83
0.485005110−41.32
0.486005110−62.81
[69]0.541005110−18.74
0.543005110−40.00
0.545005110−46.25
0.547005110−72.50
0.61005110−10.12
0.63005110−19.10
0.65005110−29.22
0.67005110−49.44
0.571005110−27.91
0.573005110−27.91
0.575005110−52.33
0.577005110−82.56
0.571005110−11.77
0.573005110−16.67
0.575005110−16.67
0.577005110−31.38
0.461005110−28.26
0.463005110−32.81
0.465005110−39.34
0.467005110−45.83
0.461005110−16.14
0.463005110−23.61
0.465005110−30.21
0.467005110−35.07
0.431005110−18.63
0.433005110−30.15
0.451005110−19.47
0.453005110−29.08
[70]0.52005213−4.00
0.54005213−20.00
0.56005213−36.00
0.58005213−77.00
0.52005203−16.00
0.54005203−37.00
0.56005203−53.00
0.58005203−82.00
[71]0.55150102108.05
0.555001021025.12
0.4150102102.30
0.45001021046.93
0.5515010210−6.44
0.5550010210−7.92
0.5575010210−57.18
0.415010210−9.70
0.450010210−6.84
0.475010210−65.97
0.515010210−14.49
0.550010210−21.74
0.575010210−77.97
0.5100010210−91.01
0.415010210−8.07
0.450010210−16.14
0.475010210−67.37
0.4100010210−89.65
[72]0.3320013104.42
0.334001310−17.33
0.336001310−49.08
0.338001310−75.24
0.332001310−0.92
0.334001310−16.38
0.336001310−52.87
0.338001310−77.30
0.332001310−1.33
0.334001310−21.29
0.336001310−48.69
0.338001310−79.14
0.332001310−3.56
0.334001310−22.85
0.336001310−51.80
0.338001310−79.68
0.3320013101.22
0.334001310−18.47
0.336001310−49.37
0.338001310−76.34
0.3320013100.60
0.334001310−15.82
0.336001310−47.50
0.338001310−75.72
0.3320013103.57
0.334001310−18.66
0.336001310−47.10
0.338001310−77.03
0.332001310−3.77
0.334001310−20.64
0.336001310−50.32
0.338001310−78.25
0.332001310−7.45
0.334001310−21.48
0.336001310−48.42
0.338001310−78.80
0.332001310−8.13
0.334001310−20.35
0.336001310−46.98
0.338001310−79.88
0.332001310−11.34
0.334001310−24.47
0.336001310−57.89
0.338001310−82.37
0.332001310−21.10
0.334001310−30.10
0.336001310−59.90
0.338001310−80.70
0.332001310−23.19
0.334001310−33.41
0.336001310−57.96
0.338001310−83.53
0.332001310−20.04
0.334001310−35.07
0.336001310−62.28
0.338001310−85.19
0.332001310−16.13
0.334001310−23.44
0.336001310−56.93
0.338001310−84.02
0.332001310−21.02
0.334001310−26.56
0.336001310−57.50
0.338001310−81.73
0.332001310−21.84
0.334001310−26.69
0.336001310−59.45
0.338001310−86.14
0.332001310−17.50
0.334001310−24.21
0.336001310−59.22
0.338001310−84.31
0.332001310−19.78
0.334001310−35.83
0.336001310−62.77
0.338001310−85.42
0.332001310−24.77
0.334001310−42.63
0.336001310−62.38
0.338001310−84.96
[73]0.611501110−0.13
0.613001110−0.17
0.614501110−0.51
0.616001110−0.86
0.571501110−0.09
0.5730011100.17
0.574501110−0.44
0.576001110−0.80
0.541501110−0.21
0.543001110−0.04
0.544501110−0.55
0.546001110−0.83
[74]0.353005410−19.55
0.355005410−53.22
0.356005410−65.49
0.358005410−84.41
0.353005410−10.25
0.355005410−49.50
0.356005410−65.00
0.358005410−83.50
0.353005410−15.75
0.355005410−51.38
0.356005410−66.58
0.358005410−82.60
0.353005410−17.52
0.355005410−56.32
0.356005410−66.66
0.358005410−80.46
0.353005410−18.60
0.355005410−54.81
0.356005410−66.67
0.358005410−78.53
0.353005410−7.84
0.355005410−50.39
0.356005410−61.88
0.358005410−80.16
0.353005410−6.87
0.355005410−47.39
0.356005410−59.15
0.358005410−77.78
0.353005410−5.08
0.355005410−46.78
0.356005410−61.02
0.358005410−77.63
0.353005410−7.92
0.355005410−49.81
0.356005410−56.60
0.358005410−74.72
0.353005410−15.29
0.355005410−54.12
0.356005410−65.88
0.358005410−72.94
[75]0.31002110−0.26
0.32002110−8.74
0.34002110−12.58
0.36002110−53.11
0.31002110−2.12
0.32002110−2.66
0.34002110−19.79
0.36002110−47.94
0.31002110−0.40
0.32002110−3.04
0.34002110−9.51
0.36002110−54.82
0.510021104.40
0.52002110−7.33
0.54002110−21.99
0.56002110−50.73
[76]0.45004.17110−21.77
0.45005410−26.30
0.45004.17110−9.98
0.45005410−26.52
0.555004.17110−10.14
0.555005410−26.69
0.555004.17110−15.97
0.555005410−32.59
0.75004.17110−15.00
0.75005410−21.82
0.75004.17110−17.54
0.75005410−30.33
[77]0.28200103101.23
0.2840010310−54.30
0.2860010310−75.61
0.2880010310−88.93
0.28200103100.36
0.2840010310−14.92
0.2860010310−41.72
0.2880010310−67.80
0.2820010310−1.91
0.2840010310−13.69
0.2860010310−40.50
0.2880010310−64.26
0.2820010310−2.10
0.2840010310−48.01
0.2860010310−52.20
0.2880010310−70.65
0.2820010310−0.62
0.2840010310−16.54
0.2860010310−48.53
0.2880010310−72.49
0.2820010310−0.96
0.2840010310−15.66
0.2860010310−43.45
0.2880010310−65.02
0.2820010310−1.75
0.2840010310−14.79
0.2860010310−43.00
0.2880010310−59.73
[78]0.64005.2110−25.37
0.66005.2110−61.30
0.68004.14110−82.60
0.610003.5110−90.08
0.612002.96110−83.74
0.354005.21100.38
0.356005.2110−45.05
0.358004.14110−71.31
0.3510003.5110−88.22
0.3512002.96110−86.92
0.284005.2110−0.39
0.286005.2110−47.99
0.288004.14110−74.46
0.2810003.5110−88.05
0.2812002.96110−88.12
[79]0.41003310−14.01
0.42003310−10.81
0.43003310−25.21
0.46003310−67.20
0.351003310−14.29
0.352003310−12.96
0.353003310−22.93
0.356003310−70.10
0.31003310−16.28
0.32003310−15.41
0.33003310−31.10
0.36003310−73.55
0.31003310−14.49
0.32003310−11.23
0.33003310−27.54
0.36003310−68.48
[80]0.34200253115−12.97
0.34400252.5115−38.59
0.34600252115−49.69
0.34800252115−84.06
0.34200253115−31.76
0.34400252.5115−56.44
0.34600252115−69.51
0.34800252115−90.38
[81]0.510051100.29
0.52005110−0.76
0.53005110−10.18
0.54005110−28.75
0.55005110−51.10
0.56005110−75.61
0.57005110−81.51
0.58005110−91.19
0.512005110−99.46
0.510051103.80
0.520051102.74
0.53005110−6.67
0.54005110−26.06
0.55005110−43.28
0.56005110−53.50
0.57005110−68.85
0.58005110−92.27
[82]0.32005310−15.00
0.34005310−20.00
0.36005310−42.00
[83]0.431002210−16.90
0.431502210−11.34
0.432002210−8.21
0.432502210−0.12
0.43280221011.23
0.431002210−8.77
0.431502210−14.85
0.432002210−17.98
0.432502210−17.98
0.432802210−11.89
[84]0.510020.7510−8.59
0.520020.7510−16.90
0.540020.7510−34.06
0.560020.7510−45.81
0.580020.7510−71.56
0.510020.7510−9.00
0.520020.7510−17.64
0.540020.7510−30.35
0.560020.7510−50.17
0.580020.7510−68.89
[85]0.42003310−2.41
0.440032.510−13.74
0.46003210−46.12
0.48003210−80.24
0.42003310−4.15
0.440032.510−9.78
0.46003210−43.40
0.48003210−74.79
0.42003310−0.93
0.440032.510−6.81
0.46003210−41.67
0.48003210−80.74
[86]0.32003.3210−7.28
0.34003.3210−10.91
0.36003.3210−28.32
0.38003.3210−61.19
0.32003.3210−3.52
0.34003.3210−2.46
0.36003.3210−23.39
0.38003.3210−56.37
[87]0.723001031022.59
0.7260010310−4.17
0.7290010310−68.42
0.713001031034.31
0.716001031010.71
0.7190010310−72.26
0.73001031041.52
0.76001031016.71
0.790010310−55.77
0.73001031043.13
0.76001031036.56
0.790010310−48.44
0.73001031037.07
0.76001031024.88
0.790010310−23.41
0.7230020310−18.86
0.7260020310−30.92
0.7290020310−71.93
0.7130020310−14.84
0.7160020310−30.90
0.7190020310−74.70
0.730020310−13.02
0.760020310−23.34
0.790020310−60.20
0.730020310−14.69
0.760020310−27.50
0.790020310−53.44
0.730020310−28.29
0.760020310−36.10
0.790020310−28.29
[88]0.4720010010−0.19
0.4740010010−15.39
0.4760010010−12.68
0.4780010010−55.18
0.4720010010−5.30
0.4740010010−25.88
0.4760010010−32.48
0.4780010010−47.68
0.47200100102.02
0.4740010010−14.72
0.4760010010−6.00
0.4780010010−30.94
0.4720010010−15.88
0.47400100104.28
0.4760010010−14.91
0.4780010010−34.43
0.4720010110−21.77
0.4740010110−3.38
0.4760010110−16.81
0.4780010110−57.13
0.47200101103.42
0.4740010110−19.59
0.4760010110−39.67
0.4780010110−51.77
0.4720010110−10.02
0.4740010110−3.74
0.4760010110−11.44
0.4780010110−51.09
0.4720010110−30.66
0.47400101102.13
0.4760010110−22.09
0.4780010110−43.47
0.4720010210−11.96
0.4740010210−5.09
0.4760010210−30.14
0.4780010210−60.54
0.4720010210−9.17
0.4740010210−16.20
0.4760010210−39.69
0.4780010210−67.80
0.4720010210−10.28
0.47400102107.51
0.4760010210−26.43
0.4780010210−53.69
0.4720010210−9.97
0.4740010210−12.12
0.4760010210−30.34
0.4780010210−49.06

References

  1. Fu, Z.M. Analysis of our fire statistics. J. Saf. Environ. 2014, 14, 341–345. (In Chinese) [Google Scholar]
  2. Zhang, R.Y. New Technologies for Quality Inspection of Construction Projects; China Planning Press: Beijing, China, 2001. (In Chinese) [Google Scholar]
  3. Ma, Q.M.; Guo, R.X.; Zhao, Z.M. Mechanical properties of concrete at high temperature—A review. Constr. Build. Mater. 2015, 93, 371–383. [Google Scholar] [CrossRef]
  4. Fire and Rescue Department Ministry of Emergency Management. 2022. Available online: https://www.119.gov.cn/qmxfxw/mtbd/spbd/2022/33150.shtml (accessed on 23 October 2022).
  5. Qu, H.K.; Zhou, L.C.; Wang, L. Study on properties of high temperature concrete under different cooling methods. New Build. Mater. 2017, 44, 4. (In Chinese) [Google Scholar] [CrossRef]
  6. Peng, G.F.; Yang, J.; Shi, Y.X. Experimental study on residual mechanical properties of ultra-high performance concrete exposed to high temperature. China Civ. Eng. J. 2017, 50, 73–79. (In Chinese) [Google Scholar]
  7. Zheng, Y.T.; Li, Y.C.; Peng, C.X. Effect of different cooling methods on mechanical properties of concrete after high temperature. J. Water Resour. Water Eng. 2019, 30, 189–194. (In Chinese) [Google Scholar]
  8. Zhang, B.; Chen, J.; Yang, O. Experimental study on mass loss and compressive strength degradation law of concrete after high temperature exposure. Build. Struct. 2019, 4, 6. (In Chinese) [Google Scholar]
  9. Zhang, B.; Chen, J.; Yang, O. Influence of Water Cement Ratio on Mass Loss and Compressive Strength Degradation of Concrete at Elevated Temperature. J. Disaster Prev. Mitig. Eng. 2018, 38, 9. (In Chinese) [Google Scholar]
  10. Bian, R.; Zhang, Y.; Jiang, L.H. Research of the mechanical properties of concrete after high temperature. Concrete 2017, 11, 10–18. (In Chinese) [Google Scholar]
  11. Ke, X.J.; Yang, C.H.; Su, Y.S. Effect of cooling method on mechanical property of steel fiber reinforced high-strength concrete after high temperature. J. Henan Univ. Urban Constr. 2017, 5, 794–800. (In Chinese) [Google Scholar]
  12. Yu, Z.W.; Zi, W.; Kuang, Y.C. Influences of temperature and time on concrete cubic compressive strength. Fire Sci. Technol. 2012, 2, 111–114. (In Chinese) [Google Scholar]
  13. Zi, W.; Yu, Z.W.; Kuang, Y.C. Influences of fire temperature and time on concrete residual compressive strength after water cooling. J. Cent. South Univ. 2013, 44, 1545–1550. (In Chinese) [Google Scholar]
  14. Shao, W.; Chen, Y.L.; Zhou, Y.C. Experimental Study on Mechanical Properties of Concrete after Different Temperature and Different Heating Time. J. Disaster Prev. Mitig. Eng. 2012, 4, 248–252. (In Chinese) [Google Scholar]
  15. Li, C.L.; Chen, B.; Chen, L.Z. Experimental study on mechanical properties of early-aged concrete after exposure to high temperatures. Sichuan Build. Sci. 2008, 34, 184–188. (In Chinese) [Google Scholar]
  16. Wu, Y.P.; Li, Y.H.; Zhang, X. Influences of water-binder ratio and fly-ash replacement level on compressive strength of concrete after high temperature. Build. Struct. 2019, 49, 4. (In Chinese) [Google Scholar]
  17. Cao, W.Z.; Sun, Q.X.; Zhou, M.R. Study on effect rule of cementing material andaggregate varieties upon concrete resistance to high temperature. New Build. Mater. 2009, 36, 17–20. (In Chinese) [Google Scholar]
  18. Zhang, Y.; Han, Y.; Kong, C.R.; Liu, S.G. Experimental Study on the Mechanics Performances of the Concrete with Manufactured Sand after High Temperature. Copp. Eng. 2012, 4, 1–4. (In Chinese) [Google Scholar]
  19. Su, X.F.; Zhang, Y.H. Effect of Fire High Temperature on Macroscopic Properties and Microstructure of Concrete Containing Marble. Bull. Chin. Ceram. Soc. 2019, 38, 3916–3921. (In Chinese) [Google Scholar]
  20. Yan, L.; Xin, Y.M.; He, Y.H. High temperature mechanical properties and microscopic analysis of hybrid fiber reinforced high performance concrete (HFHPC). Concrete 2012, 4, 24–28. (In Chinese) [Google Scholar]
  21. Ju, L.Y.; Zhang, X. Effects of Hybrid Fiber on High Performance Concrete Properties under High Temperature. J. Tongji Univ. 2006, 89–92, 101. (In Chinese) [Google Scholar]
  22. Jin, Z.Q.; Sun, W.; Hou, B.R. High-temperature deformation and microstructural evolution of concrete. J. Southeast Univ. Nat. Sci. Ed. 2010, 40, 619–623. (In Chinese) [Google Scholar]
  23. Liu, M.Y.; Lin, Z.W.; Ding, Q.J. Study of high performance concrete after high temperature with different PPF dosage. J. Huazhong Univ. Sci. Technol. Urban Sci. Ed. 2007, 24, 14–17. (In Chinese) [Google Scholar]
  24. Liu, M.Y.; Cheng, L.; Ding, Q.J. Mechanical properties of concrete with different fiber blends after high temperature. J. Huazhong Univ. Sci. Technol. Nat. Sci. Ed. 2008, 4, 123–125. (In Chinese) [Google Scholar]
  25. Li, Y.Q.; Li, L.J.; Su, J.B. Influence of coarse aggregate type on the high-temperature bursting performance of high-strength concrete. Concrete 2011, 4, 73–75. (In Chinese) [Google Scholar]
  26. Sun, W.; Luo, X. Study on the high temperature performance of high performance concrete. J. Constr. Mater. 2000, 4, 34–39. (In Chinese) [Google Scholar]
  27. Jia, F.P.; Cui, Y.L.; Sun, Y.B. Influence of high temperature on mechanical properties of fly ash concrete with large dosing capacity. J. Xi’an Univ. Archit. Technol. Nat. Sci. Ed. 2011, 43, 581–587. (In Chinese) [Google Scholar]
  28. Wang, K.Q. Research on the performance of fiber-reinforced concrete during high temperature damage. J. Xuzhou Coll. Constr. Technol. 2011, 11, 21–24. (In Chinese) [Google Scholar]
  29. Xie, L.E.; Lu, W.L.; Zheng, Q. Experimental study on the strength change of concrete under high temperature post-water cooling conditions. J. Lanzhou Jiaotong Univ. 2017, 36, 5. (In Chinese) [Google Scholar]
  30. Chen, L.H.; Meng, H.R.; Shang, J.L. Experimental study on nondestructive testing of ordinary concrete after high temperature. Sichuan Constr. Sci. Res. 2007, 33, 67–70. (In Chinese) [Google Scholar]
  31. Lv, T.Q.; Zhao, G.F.; Lin, C.X. Experimental study on the mechanical properties of concrete after high temperature resting. J. Build. Struct. 2004, 4, 63–70. (In Chinese) [Google Scholar]
  32. Chen, Z.P.; Wang, H.H.; Chen, Y.L. Experimental study on the mechanical properties of concrete after high temperature. Concrete 2015, 4, 13–17. (In Chinese) [Google Scholar]
  33. Hou, G.F.; Wei, J. Experimental study on mechanical properties of concrete with different strength grades after high temperature. Eng. Qual. 2010, 28, 68–70. (In Chinese) [Google Scholar]
  34. Tanyildizi, H. Variance analysis of crack characteristics of structural lightweight concrete containing silica fume exposed to high temperature. Constr. Build. Mater. 2013, 47, 1154–1159. [Google Scholar] [CrossRef]
  35. Yan, X.; Li, H.; Wong, Y.L. Assessment and repair of fire-damaged high-strength concrete: Strength and durability. J. Mater. Civ. Eng. 2007, 19, 462–469. [Google Scholar] [CrossRef]
  36. Shang, H.S.; Yi, T.H. Behavior of HPC with fly ash after elevated temperature. Adv. Mater. Sci. Eng. 2013, 2013, 478421. [Google Scholar] [CrossRef] [Green Version]
  37. Behnood, A.; Ghandehari, M. Comparison of compressive and splitting tensile strength of high-strength concrete with and without polypropylene fibers heated to high temperatures. Fire Saf. J. 2009, 44, 1015–1022. [Google Scholar] [CrossRef]
  38. Poon, C.S.; Shui, Z.H.; Lam, L. Compressive behavior of fiber reinforced high-performance concrete subjected to elevated temperatures. Cem. Concr. Res. 2004, 34, 2215–2222. [Google Scholar] [CrossRef]
  39. Zheng, W.; Li, H.; Wang, Y. Compressive behaviour of hybrid fiber-reinforced reactive powder concrete after high temperature. Mater. Des. 2012, 41, 403–409. [Google Scholar] [CrossRef]
  40. Tao, J.; Yuan, Y.; Taerwe, L. Compressive strength of self-compacting concrete during high-temperature exposure. J. Mater. Civ. Eng. 2010, 22, 1005–1011. [Google Scholar] [CrossRef]
  41. Xiao, J.; Falkner, H. On residual strength of high-performance concrete with and without polypropylene fibres at elevated temperatures. Fire Saf. J. 2006, 41, 115–121. [Google Scholar] [CrossRef]
  42. Demirel, B.; Keleştemur, O. Effect of elevated temperature on the mechanical properties of concrete produced with finely ground pumice and silica fume. Fire Saf. J. 2010, 45, 385–391. [Google Scholar] [CrossRef] [Green Version]
  43. Bingöl, A.F.; Gül, R. Effect of elevated temperatures and cooling regimes on normal strength concrete. Fire Mater. Int. J. 2009, 33, 79–88. [Google Scholar] [CrossRef]
  44. Netinger, I.; Varevac, D.; Bjegović, D. Effect of high temperature on properties of steel slag aggregate concrete. Fire Saf. J. 2013, 59, 1–7. [Google Scholar] [CrossRef]
  45. Husem, M. The effects of high temperature on compressive and flexural strengths of ordinary and high-performance concrete. Fire Saf. J. 2006, 41, 155–163. [Google Scholar] [CrossRef]
  46. Noumowé, A.; Siddique, R.; Ranc, G. Thermo-mechanical characteristics of concrete at elevated temperatures up to 310 °C. Nucl. Eng. Des. 2009, 239, 470–476. [Google Scholar] [CrossRef]
  47. Shihada, S. Effect of polypropylene fibers on concrete fire resistance. J. Civ. Eng. Manag. 2011, 17, 259–264. [Google Scholar] [CrossRef]
  48. Peng, G.F.; Bian, S.H.; Guo, Z.Q. Effect of thermal shock due to rapid cooling on residual mechanical properties of fiber concrete exposed to high temperatures. Constr. Build. Mater. 2008, 22, 948–955. [Google Scholar] [CrossRef]
  49. Arioz, O. Effects of elevated temperatures on properties of concrete. Fire Saf. J. 2007, 42, 516–522. [Google Scholar] [CrossRef]
  50. Li, Q.; Li, Z.; Yuan, G. Effects of elevated temperatures on properties of concrete containing ground granulated blast furnace slag as cementitious material. Constr. Build. Mater. 2012, 35, 687–692. [Google Scholar] [CrossRef]
  51. Behnood, A.; Ziari, H. Effects of silica fume addition and water to cement ratio on the properties of high-strength concrete after exposure to high temperatures. Cem. Concr. Compos. 2008, 30, 106–112. [Google Scholar] [CrossRef]
  52. Zhang, B. Effects of moisture evaporation (weight loss) on fracture properties of high performance concrete subjected to high temperatures. Fire Saf. J. 2011, 46, 543–549. [Google Scholar] [CrossRef]
  53. Muhammad, B.; Ismail, M.; Haron, Z. Elastomeric Effect of Natural Rubber Latex on Compressive Strength of Concrete at High Temperatures. J. Mater. Civ. Eng. 2011, 23, 1697–1702. [Google Scholar] [CrossRef]
  54. Rashad, A.M.; Zeedan, S.R. The effect of activator concentration on the residual strength of alkali-activated fly ash pastes subjected to thermal load. Constr. Build. Mater. 2011, 25, 3098–3107. [Google Scholar] [CrossRef]
  55. Peng, G.F.; Yang, W.W.; Zhao, J. Explosive spalling and residual mechanical properties of fiber-toughened high-performance concrete subjected to high temperatures. Cem. Concr. Res. 2006, 36, 723–727. [Google Scholar] [CrossRef]
  56. Chen, B.; Li, C.; Chen, L. Experimental study of mechanical properties of normal-strength concrete exposed to high temperatures at an early age. Fire Saf. J. 2009, 44, 997–1002. [Google Scholar] [CrossRef]
  57. Kanema, M.; De Morais, M.V.G.; Noumowe, A. Experimental and numerical studies of thermo-hydrous transfers in concrete exposed to high temperature. Heat Mass Transf. 2007, 44, 149–164. [Google Scholar] [CrossRef]
  58. Uysal, M.; Tanyildizi, H. Estimation of compressive strength of self compacting concrete containing polypropylene fiber and mineral additives exposed to high temperature using artificial neural network. Constr. Build. Mater. 2012, 27, 404–414. [Google Scholar] [CrossRef]
  59. Zhang, B.; Bicanic, N. Fracture energy of high-performance concrete at high temperatures up to 450 C: The effects of heating temperatures and testing conditions (hot and cold). Mag. Concr. Res. 2006, 58, 277–288. [Google Scholar] [CrossRef]
  60. Hossain, K.M.A. High strength blended cement concrete incorporating volcanic ash: Performance at high temperatures. Cem. Concr. Compos. 2006, 28, 535–545. [Google Scholar] [CrossRef]
  61. Yan, L.; Xing, Y.M.; Li, J.J. High-temperature mechanical properties and microscopic analysis of hybrid-fibre-reinforced high-performance concrete. Mag. Concr. Res. 2013, 65, 139–147. [Google Scholar] [CrossRef]
  62. Marques, A.M.; Correia, J.R.; De Brito, J. Post-fire residual mechanical properties of concrete made with recycled rubber aggregate. Fire Saf. J. 2013, 58, 49–57. [Google Scholar] [CrossRef]
  63. Mendes, A.; Sanjayan, J.; Collins, F. Phase transformations and mechanical strength of OPC/Slag pastes submitted to high temperatures. Mater. Struct. 2008, 41, 345–350. [Google Scholar] [CrossRef]
  64. Poon, C.S.; Azhar, S.; Anson, M. Performance of metakaolin concrete at elevated temperatures. Cem. Concr. Compos. 2003, 25, 83–89. [Google Scholar] [CrossRef]
  65. Xu, Y.; Wong, Y.L.; Poon, C.S. Impact of high temperature on PFA concrete. Cem. Concr. Res. 2001, 31, 1065–1073. [Google Scholar] [CrossRef]
  66. Ismail, M.; Ismail, M.E.G.; Muhammad, B. Influence of elevated temperatures on physical and compressive strength properties of concrete containing palm oil fuel ash. Constr. Build. Mater. 2011, 25, 2358–2364. [Google Scholar] [CrossRef]
  67. Savva, A.; Manita, P.; Sideris, K.K. Influence of elevated temperatures on the mechanical properties of blended cement concretes prepared with limestone and siliceous aggregates. Cem. Concr. Compos. 2005, 27, 239–248. [Google Scholar] [CrossRef]
  68. Tang, W.C.; Lo, T.Y. Mechanical and fracture properties of normal-and high-strength concretes with fly ash after exposure to high temperatures. Mag. Concr. Res. 2009, 61, 323–330. [Google Scholar] [CrossRef]
  69. Sideris, K.K. Mechanical characteristics of self-consolidating concretes exposed to elevated temperatures. J. Mater. Civ. Eng. 2007, 19, 648–654. [Google Scholar] [CrossRef]
  70. Akçaözoğlu, K. Microstructural examination of concrete exposed to elevated temperature by using plane polarized transmitted light method. Constr. Build. Mater. 2013, 48, 772–779. [Google Scholar] [CrossRef]
  71. Bakhtiyari, S.; Allahverdi, A.; Rais-Ghasemi, M. Self-compacting concrete containing different powders at elevated temperatures–Mechanical properties and changes in the phase composition of the paste. Thermochim. Acta 2011, 514, 74–81. [Google Scholar] [CrossRef]
  72. Uysal, M. Self-compacting concrete incorporating filler additives: Performance at high temperatures. Constr. Build. Mater. 2012, 26, 701–706. [Google Scholar] [CrossRef]
  73. Fares, H.; Noumowe, A.; Remond, S. Self-consolidating concrete subjected to high temperature: Mechanical and physicochemical properties. Cem. Concr. Res. 2009, 39, 1230–1238. [Google Scholar] [CrossRef]
  74. Ling, T.C.; Poon, C.S. Stress–strain behaviour of fire exposed self-compacting glass concrete. Fire Mater. 2013, 37, 297–310. [Google Scholar] [CrossRef]
  75. Fu, Y.F.; Wong, Y.L.; Poon, C.S. Stress–strain behaviour of high-strength concrete at elevated temperatures. Mag. Concr. Res. 2005, 57, 535–544. [Google Scholar] [CrossRef]
  76. Zega, C.J.; Di Maio, A.A. Recycled concrete exposed to high temperatures. Mag. Concr. Res. 2006, 58, 675–682. [Google Scholar] [CrossRef]
  77. Chen, B.; Liu, J. Residual strength of hybrid-fiber-reinforced high-strength concrete after exposure to high temperatures. Cem. Concr. Res. 2004, 34, 1065–1069. [Google Scholar] [CrossRef]
  78. Chan, Y.N.; Peng, G.F.; Anson, M. Residual strength and pore structure of high-strength concrete and normal strength concrete after exposure to high temperatures. Cem. Concr. Compos. 1999, 21, 23–27. [Google Scholar] [CrossRef]
  79. Ghandehari, M.; Behnood, A.; Khanzadi, M. Residual mechanical properties of high-strength concretes after exposure to elevated temperatures. J. Mater. Civ. Eng. 2010, 22, 59–64. [Google Scholar] [CrossRef]
  80. Xiao, J.; Xie, M.; Zhang, C. Residual compressive behaviour of pre-heated high-performance concrete with blast–furnace–slag. Fire Saf. J. 2006, 41, 91–98. [Google Scholar] [CrossRef]
  81. Guerrieri, M.; Sanjayan, J.; Collins, F. Residual compressive behavior of alkali-activated concrete exposed to elevated temperatures. Fire Mater. Int. J. 2009, 33, 51–62. [Google Scholar] [CrossRef]
  82. Watanabe, K.; Bangi, M.R.; Horiguchi, T. The effect of testing conditions (hot and residual) on fracture toughness of fiber reinforced high-strength concrete subjected to high temperatures. Cem. Concr. Res. 2013, 51, 6–13. [Google Scholar] [CrossRef]
  83. Vodák, F.; Trtık, K.; Kapičková, O. The effect of temperature on strength–porosity relationship for concrete. Constr. Build. Mater. 2004, 18, 529–534. [Google Scholar] [CrossRef]
  84. Ergün, A.; Kürklü, G.; Serhat, B.M. The effect of cement dosage on mechanical properties of concrete exposed to high temperatures. Fire Saf. J. 2013, 55, 160–167. [Google Scholar] [CrossRef]
  85. Zhang, X.S.; Wu, X.H.; Li, Z.W. Effect of high temperature on compressive strength and microstructure of slag concrete. Build. Sci. 2019, 35, 72–76. (In Chinese) [Google Scholar]
  86. Qin, D.T.; Zhao, L.P. Compressive strength of fibrous slag concrete in and after high temperature. Henan Build. Mater. 2011, 6, 60–61. (In Chinese) [Google Scholar]
  87. Aydın, S. Development of a high-temperature-resistant mortar by using slag and pumice. Fire Saf. J. 2008, 43, 610–617. [Google Scholar] [CrossRef]
  88. Shumuye, E.D.; Zhao, J.; Wang, Z. Effect of the Curing Condition and High-Temperature Exposure on Ground-Granulated Blast-Furnace Slag Cement Concrete. Int. J. Concr. Struct. Mater. 2021, 15, 1–20. [Google Scholar] [CrossRef]
  89. Lin, C.J.; Wu, N.J. An ANN Model for Predicting the Compressive Strength of Concrete. Appl. Sci. 2021, 11, 3798. [Google Scholar] [CrossRef]
  90. Hu, A.J.; Nan, B. Fault feature enhancement method for rolling bearing based on adaptiveprobabilistic principal component analysis. J. Vib. Shock 2017, 36, 145–150. (In Chinese) [Google Scholar]
  91. Deng, Y.R.; Cheng, X.D.; Tang, F. The control of moldy risk during rice storage based on multivariate linear regression analysis and random forest algorithm. J. Univ. Sci. Technol. 2022, 52, 47–54+72+55. [Google Scholar] [CrossRef]
  92. Raschka, S. Python Machine Learning; Packt Publishing: Birmingham, UK, 2015. [Google Scholar]
  93. Choe, G.; Kim, G.; Yoon, M. Effect of moisture migration and water vapor pressure build-up with the heating rate on concrete spalling type. Cem. Concr. Res. 2019, 116, 1–10. [Google Scholar] [CrossRef]
  94. Zhao, D.F.; Liu, M. Experimental study on residual strength and nondestructive testing of high strength concrete after high temperature. J. Build. Struct. 2015, 36 (Suppl. 2), 365–372. (In Chinese) [Google Scholar]
  95. Muhammed, Y.D.; Ahmet, H.S. High temperature resistance of concretes with GGBFS, waste glass powder, and colemanite ore wastes after different cooling conditions. Constr. Build. Mater. 2019, 196, 66–81. [Google Scholar]
  96. Shu, Q.; Lu, L.; Yuan, G. Experimental investigation on the mechanical properties of early-age concrete after heating up to 550 °C. Eur. J. Environ. Civ. Eng. 2019, 25, 1364–1378. [Google Scholar] [CrossRef]
Figure 1. ISO 834 temperature–time curve.
Figure 1. ISO 834 temperature–time curve.
Applsci 12 12237 g001
Figure 2. BP neural network structure.
Figure 2. BP neural network structure.
Applsci 12 12237 g002
Figure 3. Adaptation curve of the PSO-BP model.
Figure 3. Adaptation curve of the PSO-BP model.
Applsci 12 12237 g003
Figure 4. RF model structure.
Figure 4. RF model structure.
Applsci 12 12237 g004
Figure 5. High temperature operating mechanisms. (a) 10 °C/min-2 h. (b) 10 °C/min-1 h. (c) 5 °C/min-2 h.
Figure 5. High temperature operating mechanisms. (a) 10 °C/min-2 h. (b) 10 °C/min-1 h. (c) 5 °C/min-2 h.
Applsci 12 12237 g005
Figure 6. Correlation of BP modeling.
Figure 6. Correlation of BP modeling.
Applsci 12 12237 g006
Figure 7. Correlation of PSO-BP modeling.
Figure 7. Correlation of PSO-BP modeling.
Applsci 12 12237 g007
Figure 8. Correlation of RF modeling.
Figure 8. Correlation of RF modeling.
Applsci 12 12237 g008
Figure 9. Relationship between temperature and loss of compressive strength of concrete after high temperature.
Figure 9. Relationship between temperature and loss of compressive strength of concrete after high temperature.
Applsci 12 12237 g009
Figure 10. Appearance of concrete specimens before and after high-temperature exposures.
Figure 10. Appearance of concrete specimens before and after high-temperature exposures.
Applsci 12 12237 g010
Figure 11. Error between the values predicted and measured. (a) BP model. (b) PSO-BP model. (c) RF model.
Figure 11. Error between the values predicted and measured. (a) BP model. (b) PSO-BP model. (c) RF model.
Applsci 12 12237 g011
Figure 12. Importance of input parameters based on the RF model.
Figure 12. Importance of input parameters based on the RF model.
Applsci 12 12237 g012
Table 1. Data statistics.
Table 1. Data statistics.
W/BT (°C)V (°C/min)MD (h)CRD (day)P (%)
Range[0.18–0.77][50–1200][0.10–500][0–48]0/1[0–112][–99.46–66.88]
Average0.44479.5018.822.43-3.55−31.22
Standard deviation0.12240.2957.483.09-14.0729.17
Table 2. Comparison between different network structures.
Table 2. Comparison between different network structures.
Error (%)6-5-16-7-16-10-16-(5,5)-1
TrainingTestTrainingTestTrainingTestTrainingTest
RMSE6.276.094.173.145.984.274.923.97
MAE5.745.013.122.784.733.914.033.19
Table 3. Mix proportions of concrete specimens (kg/m3).
Table 3. Mix proportions of concrete specimens (kg/m3).
No.W/BWaterCementCoarse AggregatesFine Aggregates
10.33801141113743
2,4–70.43801521091727
30.53801901068712
Table 4. High temperature operation mechanism.
Table 4. High temperature operation mechanism.
No.T
(°C)
V
(°C/min)
MD (Hour)CRD (Day)
1200, 400, 600, 800102Nature0
2102Nature0
3102Nature0
452Nature0
5101Nature0
6102Water0
7102Nature1
Table 5. Error evaluation.
Table 5. Error evaluation.
BPPSO-BPRF
TrainingTestTrainingTestTrainingTest
RMSE (%)4.173.142.602.122.562.23
MAE (%)3.122.783.172.632.571.79
Table 6. Compressive strength loss percentages measured and predicted.
Table 6. Compressive strength loss percentages measured and predicted.
No.T (°C)Compressive Strength (MPa)P
(Measured, %)
P
(Predicted by BP, %)
P
(Predicted by PSO-BP, %)
P
(Predicted by RF, %)
12075.61--------
20069.45−8.14−4.61−5.57−5.13
40062.59−17.22−14.37−15.83−16.98
60045.36−40.00−37.42−41.23−39.61
80026.61−64.81−64.14−65.03−62.03
22048.16--------
20044.24−8.14−8.27−7.99−9.01
40038.42−20.22−16.68−21.07−20.66
60026.48−45.02−37.69−47.51−47.22
80014.99−68.88−65.36−69.32−70.23
32040.42--------
20035.38−12.47−13.15−11.73−12.40
40030.01−25.76−27.39−25.82−24.92
60022.17−45.15−47.86−46.22−42.79
80011.64−71.19−70.37−69.61−68.11
42048.16--------
20042.72−11.31−10.96−12.62−11.80
40037.78−21.56−22.92−22.56−23.19
60029.37−39.01−43.83−38.91−38.93
80011.76−75.57−77.17−77.14−74.32
52048.16--------
20044.11−8.41−7.59−10.23−6.99
40038.89−19.25−16.00−23.23−20.20
60029.94−37.83−36.47−39.67−38.90
80015.70−67.39−64.00−68.22−66.39
62048.16--------
20044.24−8.14−8.14−8.19−9.13
40039.67−17.63−16.10−18.11−15.19
60029.15−39.46−34.44−40.34−38.92
80017.21−64.27−61.42−63.28−64.02
72048.16--------
20044.96−6.63−8.21−7.91−7.24
40038.67−19.70−21.03−21.19−18.93
60026.63−44.69−46.11−47.91−44.93
80015.29−66.24−68.31−69.01−67.29
Table 7. Statistic of the error between the results measured and predicted.
Table 7. Statistic of the error between the results measured and predicted.
BPPSO-BPRF
Range (%)[0.00–43.37][0.23–31.57][0.20–36.98]
Average (%)8.886.375.70
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Qin, X.; Ma, Q.; Guo, R.; Tan, S. Prediction of Compressive Strength Loss of Normal Concrete after Exposure to High Temperature. Appl. Sci. 2022, 12, 12237. https://doi.org/10.3390/app122312237

AMA Style

Qin X, Ma Q, Guo R, Tan S. Prediction of Compressive Strength Loss of Normal Concrete after Exposure to High Temperature. Applied Sciences. 2022; 12(23):12237. https://doi.org/10.3390/app122312237

Chicago/Turabian Style

Qin, Xiaoyu, Qianmin Ma, Rongxin Guo, and Shaoen Tan. 2022. "Prediction of Compressive Strength Loss of Normal Concrete after Exposure to High Temperature" Applied Sciences 12, no. 23: 12237. https://doi.org/10.3390/app122312237

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop