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Article

Multilevel Mixed-Effects Models to Identify Contributing Factors on Freight Vehicle Crash Severity

1
Department of Transportation and Logistic Engineering, Hanyang University, Ansan 15588, Korea
2
Department of Smart City Engineering, Hanyang University, Ansan 15588, Korea
*
Author to whom correspondence should be addressed.
Sustainability 2022, 14(19), 11804; https://doi.org/10.3390/su141911804
Submission received: 14 May 2022 / Revised: 23 July 2022 / Accepted: 13 September 2022 / Published: 20 September 2022

Abstract

:
Freight vehicle crashes are more serious than regular vehicle crashes because they are likely to lead to major damage and injury once they occur; therefore, countermeasures are needed. The fatality rate from freight vehicle crashes is 1.5 times higher than that of all other accidents, and the death rate from expressway freight vehicle crashes continues to increase. In this study, the ten-freight-vehicle crash severity models (the ordered logit and probit model, the multinomial logit and probit model, mixed-effects logit and probit model, random-effects ordered logit and probit model, and multilevel mixed-effects ordered logit and probit model) are used to analyze the freight vehicle crash severity factors. The model was constructed using data collected from expressways over eight years, and 13 factors were derived to increase the severity of crashes and 7 factors to reduce the severity of crashes. As a result of comparing the 10 constructed models using AIC and BIC, the multilevel mixed-effects ordered probit model showed the best performance. It is expected that it can contribute to improving the safety of freight vehicles in the expressway section by utilizing factors related to the severity of crashes derived from this study.

1. Introduction

Currently, Korea’s truck traffic and cargo volume are steadily increasing. According to the Korea Transport DataBase (KTDB)’s analysis of cargo traffic demand, road cargo volume has been growing by 1.2% annually since 2015, and the total traffic volume of cargo vehicles has been increasing by 3.2% annually [1,2]. In particular, the traffic volume of large cargo trucks exceeding 8.5 tons is increasing significantly. The traffic volume of large trucks and trailers increased by 11.1% compared to a 1.7% increase in the traffic volume of small trucks and a 6.9% increase in the traffic volume of medium-sized trucks. In addition, according to statistics from the National Logistics Information Center, even when domestic traffic in Korea was decreasing due to COVID-19, the delivery industry was activated, showing a 20.9% increase in delivery cargo volume than before COVID-19.
With the increase in truck traffic, truck traffic safety on the highway is becoming a problem. Truck crashes are more serious than general vehicles, so once they occur, they are likely to lead to large-scale crashes, which require countermeasures. According to the Korea Expressway Corporation, 48.5% of the 523 highway deaths over the five years from 2015 to 2019 were caused by truck-related crashes. In addition, the proportion of deaths from truck crashes continues to increase from 42.7% in 2017 to 43.7% in 2018 and 46.6% in 2019. According to the Korea Road Traffic Authority (KoRoad) Traffic Accident analysis System (TAAS), the total fatality rate of crashes was 1.93%, while the fatality rate of truck crashes was 3.49%, which is approximately 1.5 times higher. This study aims to analyze the factors influencing the severity of truck crashes using highway truck crash data for eight years from 2011 to 2018. For analysis, based on the ordered model, a model was developed that combines various additional methods such as the multinomial, random parameter, mixed-effect, and multilevel methods.

2. Literature Review

2.1. Crash Severity

Several previous studies have investigated studies to determine the factors and relationships of traffic accident severity. Abdel-Aty et al. [3] (1998) analyzed the factors of crashes according to driver age. As a result of the analysis, the severity of accidents for both young and old drivers was high. Similar results were derived from a study by Massie et al. (1995) [4] and Zhang et al. (1998) [5]. Lourens et al. (1999) [6] analyzed the characteristics of crashes according to gender, age, and education level. As a result, it was found that as the annual mileage increased and younger drivers increased, the severity of the accidents increased. However, the driver’s level of education was not related to the severity of the accidents. Kockelman et al. (2002) [7] conducted an accident severity factor analysis according to the types of crashes using an ordered probit model. When a pickup and a sports utility vehicle collide, the severity of the accident to the driver is lower than that of a regular passenger car, while the severity of the accident for the passenger increases. In addition, the accident severity of young male drivers driving new cars at low speeds was found to be low. Kim et al. (2007) [8] analyzed the severity of crashes between vehicles and bicycles through a polynomial logit model. As a result of the analysis, the severity of accidents for bicycle riders was more than twice that of vehicle drivers, and bad weather, poor lighting conditions, peak hours in the morning, truck-related crashes, drunk driving, and elderly bicycle riders increased the severity of crashes. In addition, it was confirmed that if the vehicle’s speed was 80 km/h or more, the possibility of fatal injury increased by 16 times or more. Won et al. (2009) [9] constructed an accident severity prediction model for each highway section using an ordered probit model. As a result of the analysis, it was found that crashes due to speeding, vehicle defects, vehicle and vehicle accident types, traffic volume, curved radius, and longitudinal slope were factors that affect the severity of the accident. Kim et al. (2011) [10] identified the characteristics of crashes by accident type on a single urban road and developed an accident model that reflects this. As a result of the analysis, the higher the number of lanes and traffic islands, the higher the severity of the accident. Lee et al. (2011) [11] analyzed the factors influencing the severity of highway crashes using quantification theory, and it was found that the accident severity was affected by plane lines, longitudinal gradients, and policy facilities. Lu et al. (2014) [12] constructed the severity of rear-end collisions according to driver age through a nonparametric logistic regression model. As a result of the analysis, it was found that the severity of crashes between young and elderly drivers was high. In addition, elderly drivers in their 60s or older showed a higher severity of crashes than other age groups. Choi et al. (2014) [13] performed an analysis of the severity of motorcycle crashes, including motorcycles, using an ordered probit model. As a result of the analysis, it was found that night driving, accident type, road line, and motorcycle exhaust affected the severity of the crash.
As a result of analyzing existing crash severity-related studies, it was confirmed that factors such as time, age, road alignment, and speed greatly influence crash severity regardless of the type or region of the accident. In the study comparing passenger vehicles and freight vehicles, there have been many studies showing that the results of the crash severity for freight vehicles are very high. In addition, in a study that set freight vehicles as the main analysis targets, factors due to vehicle characteristics and behavior characteristics of freight vehicles were found to increase the severity of accidents. The main factors derived were night, downhill section, and traffic conditions requiring rapid braking.

2.2. Freight Vehicle Safety

Many studies were also conducted to analyze truck traffic accidents and conduct safety evaluations. Dionne et al. (1995) [14] analyzed the relationship between health status, driving time, driving distance, age, and accident of a truck driver using the count data regression model. Chang and Mannering (1999) [15] analyzed traffic accident data in Washington, U.S., using a nested logit model. As a result of the analysis, it was found that the truck accident was significantly different from ordinary vehicles in terms of the high-speed limit, whether to turn left or right, and whether to collide. Rosenbloom et al. (2009) [16] surveyed a total of 167 drivers in Israel and compared their behavior on the road between truckers and non-truck drivers using distributed analysis. Zhu and Srinivasan (2011) [17] analyzed truck accidents in the Large Truck Crash Causation Study (LTCCS) data using an ordered probit model. As a result, it was found that the severity of the accident was the highest when a freight car and a passenger car collided head-on at an intersection. Chang and Chen (2013) [18] created a CART classification tree using a truck traffic accident in Taiwan and analyzed the characteristics of the accident. As a result, it was found that drunk driving and wearing seat belts had a great influence on the occurrence of fatal accidents. Choi (2013) [19] analyzed the severity of crashes of highway trucks according to weather conditions using a binary logistic regression analysis. As a result of the analysis, it was found that night driving and speeding were affected under normal weather conditions, and the severity of crashes increased in the downhill sections, bridges, and tunnel sections under abnormal weather conditions. Han et al. (2014) [20] analyzed the characteristics of truck accidents by analyzing traffic accident data occurring in Seoul using the CART analysis technique. As a result of the analysis, the possibility of death varies greatly depending on whether protective equipment such as seat belts are worn, and the more experienced the driver, the higher the severity of the accident. Hong et al. (2019) [21] analyzed to discover the factors influencing freight vehicle crashes and develop more accurate crash probability estimation by explaining the endogenous driver traffic violations using a two-stage residual inclusion approach, a methodology used in the nonlinear regression analysis model. As a result of the analysis, the driver’s physical condition, improper passing, speeding, and safe distance violations were found. Park et al. (2019) [22] developed multivariate adaptive regression splines (MARS) models to analyze all types and freight vehicle crashes. MARS models show better model fitness than the negative binomial (NB) models.
In previous studies, it was difficult to find cases in which crash severity analysis was performed mainly using a binary logistic model and an ordered probit model; other models were used. This study aims to construct a truck crash severity model using various models, as well as the models used in previous studies. In addition to the ordered model that is used, various methodologies such as multinomial, random-effects, mixed-effects, and multilevel methods are used. In addition, we evaluated the model constructed through performance comparison between these models.

3. Methodology

3.1. Ordered Model

The ordered model is a representative model that can be used when there are more than three dependent variables. In general, analysis can be performed using the probit model or the logit model in the case of dependent variables that do not have an order. However, if the dependent variable is not binary, the analysis through the probit model or the logit model risks making errors. There is a limitation in making an error by analyzing the difference between Y = 0, Y = 1 such as the difference between property damage only and injury, and Y = 1, Y = 2 such as the difference between injury and fatal. Ordered models are used to improve the limitation that binary models are not available when dependent variables have an order. The logit model and the probit model have the same basic characteristics but are classified according to the probability distribution form of the error term. The logit model assumes that the probability distribution of the error term has the same variance and follows an independent logistic distribution, and the probit model assumes that the probability distribution of the error term has the same variance, and the covariance is 0. The ordinal probit model can be expressed as Equation (1) [23,24,25,26,27,28]:
y = β X n + ϵ n ,   ϵ n ~ N 0 ,   1
where y can be expressed as a measurable utility and a non-measurable utility as a potential utility. μ is the limit value estimated together with the estimation coefficient of each explanatory variable and has J − 1. Through this, it can be used to calculate the probability of selection for alternatives, and the probability of selection for each alternative can be expressed as Equation (2).
Prob y = 0 = Φ β X n Prob y = 1 = Φ μ 1 β X n Φ β X n Prob y = 2 = Φ μ 2 β X n Φ μ 1 β X n Prob y = J = 1 Φ μ J 1 β X n
To verify the suitability of the finally derived model, ρ2 (likelihood ratio index), which represents the suitability of the entire model, is used. Similar to R2 in regression analysis, ρ2 has a value between 0 and 1, and the closer it is to 1, the higher the fit. When the value of ρ2 is 0.2 or more, the suitability may be evaluated as sufficient.

3.2. Multinomial Model

The multinomial model is a useful analysis method when classifying objects according to the value of predictors and can be used when the dependent variable does not have both hierarchy and order. It starts from the concept that the dependent variable forms a polynomial distribution, and it is characterized by polynomial selection as an extension of the abnormal selection situation. Uni is a function that determines the severity, and if it has a linear shape, it appears as Equation (3) [29,30,31,32,33].
U ni = β i x n + ε ni
where ε is an error term describing an unobserved effect on severity. If ε follows the type 1 extreme value distribution, it becomes a polynomial logistic model.
P ni = e β i x n i I e β i x n
The coefficient i can be estimated by the maximum likelihood method. In the case of an ordinal logit or probit model, variables are constrained to affect only one direction, but in reality, variables can affect both directions in a U-shaped form. Therefore, the polynomial model differs from other models in that it has this flexibility.

3.3. Mixed Model

Theoretically, logistic models do not allow parameters to vary across observations. To address this issue of heterogeneity, mixed-effects models (also referred to as random-parameters models) were developed to allow some parameters to vary across crash observations [34,35]. The mixed-effects logistic model is given as:
Pr y i = 1 | X i = Φ X i β · f β | φ d β = exp X i β 1 + exp X i β · f β | φ d β
where Pr · = probability of injury severity yi of crash observation i, β = vector of regression coefficients, X i = vector of explanatory variables for crash observation i, Φ = cumulative distribution function of logistic distribution, and f β | φ = density function of random parameter β with distribution parameter Φ .
Equation x is a mix of two distributions: Φ X i β for the error item and f β | φ for random parameters.

3.4. Random-Effects Ordered Model

Discrete choice models for estimating ordinal response data were applied in exploring the severity of transport safety [7,36,37]. Because those in the same vehicle are expected to have common unobserved factors for injury severity, a random effects component was included in the model. In the random effects ordered probit model used in this study, the following specification was used [38,39]:
y ij * = X i β + ε ij
where y ij * = latent variable presenting the severity of the ith person in the jth vehicle, β = (k × 1) vector of coefficients for the independent variables, X i = (1 × k) vector of observed independent variables, ε ij = random effect for group j and person-level random effects.

3.5. Multilevel Mixed-Effects Model

A multilevel model can explicitly model complex variances and heterogeneity. It has the advantage that it is possible to generate a mixed-effect multilevel model that varies by fixed parameters estimated by the ordered model and random parameters observable in the multilevel model. A multilevel mixed-effects ordered logit model can be expressed as follows [40].
Y ijk * = X ijk β + W jk δ + V k γ + u jk + v k + e ijk
where Y ijk * = latent continuous response representing the levels of driver injury for driver i, traffic crash j, and area k, X ,   W ,   V = fixed part of the explanatory variable design matrix for the first level, second level, and third level, β ,   δ ,   γ = corresponding coefficients, u jk + v k + e ijk = random part of the model in which a subset of X, a subset of W, and a subset of V are an explanatory variable design matrix for the first level, second level, and third level, representing both random intercepts and random coefficients, e ijk = set of first-level random effects, v k = set of a second-level random intercept and random coefficients, u jk = set of a third-level random intercept and random coefficients.

3.6. Marginal Effect

Marginal effects are used to accurately interpret the results derived from each model. The marginal effect is a value that estimates the amount of change in crash severity due to an increase in one unit of an independent variable through partial differentiation, and through this, the effect of the independent variable on accident severity can be identified. By estimating the amount of change due to the increase in 1 unit of the independent variable, it is possible to check how the independent variable affects the outcome. The direct marginal effects are calculated by Equation (7), respectively [41,42,43].
P ij x ijk = V ij x ijk P ij 1 P ij = β jk P ij 1 P ij
The direct marginal effects represent the impact of changes in variable k of outcome j on the probability for the crash I to be in severity outcome j.

4. Data Preparation

Analysis of Data

For this study, data from freight vehicle crashes that occurred on expressways during eight years from 2011 to 2018 were used. Data are collected from the section under the jurisdiction of the Korea Expressway Corporation, and data from the section of the private highway are not reflected. A total of 22,619 freight vehicle crashes occurred over the eight years, and the dependent variables were classified as death, injury, and property damage only [43,44,45,46,47,48]. Independent variables are composed of 18 types. There were 808 deaths, accounting for 3.6% of the total, and injuries accounted for 10.5% of the total. Crashes at night accounted for 33.8%, and 60% of all crashes occurred on the highway main lines. Crashes caused by driver factors accounted for 73% of all crashes, and 95% of crashes occurred when there were no traffic obstacles. The causes of the accidents were high for, in order of negligence, speeding, vehicle defects, and drowsy driving. As for the type of accident, car–facility crashes accounted for 61.9% and car–car crashes accounted for 19.5%, and 65% of all crashes occurred in clear weather. Only 161 cases occurred in the right curve, while 2719 cases occurred in the left curve, and the rate for crashes that occurred in the uphill and downhill slopes was similar. The number of crashes of medium-sized cargo trucks was the highest, and crashes according to age groups occurred in the order of those in their 20 s, 50 s, and 40 s. When an accident occurred while driving, the average speed was 91 km/h. The basic statistics for each variable are shown in Table 1.

5. Results and Discussion

Using the variables described in Table 1, an ordered logit and probit model, a multinomial logit and probit model, a mixed-effects ordered logit and probit model, a random-effects ordered logit and probit model, and a multilevel mixed-effects logit and probit model were constructed. The maximum likelihood estimation method was used for each model estimation. In addition, each model was constructed while removing variables until only 95% of the significant variables remained, and the final model construction results are as follows.

5.1. Ordered Model

The results of constructing an ordered logit and probit model are shown in Table 2. In the case of the ordered model, variables derived from the logit model and the probit model were the same except for the Saturday variable, and it can be seen that all variables had the same sign. It was confirmed that the coefficient value was high in the case of crashes caused by driver carelessness such as speeding, drowsiness, lack of safety distance, and negligence. In addition, it was found that the severity of the crash increased significantly even when the front was congested, or the forward car was stopped. On the other hand, it can be seen that the severity of the accident decreased in the tollgate, ramp section, snowy weather, and construction area, and those factors can be seen as lowering the severity of the accident because they had to slow down. In addition, the coefficient of the ordered logit model was approximately twice as high as that of the ordered probit model.
The results of the marginal effects on the ordered logit and probit models are shown in Table 3. In most cases, an injury crash had a large influence, but some variables show other results. In the case of the nighttime variable, it was found that the ordered logit model had a great influence on fatality crashes, but in the ordered probit model, it was confirmed that it had a great influence when it was an injury crash. In the age group, people in their 40s and 50s had the greatest impact on injury crashes, but those over 60 had the greatest impact on fatality crashes.

5.2. Multinomial Model

The results of constructing a multinomial logit and probit model are shown in Table 4. The four variables, year, ramp, crash factor-vehicle, and Saturday, were found to be variables that affected only the event of an injury accident. Night, tollgate, construction area, guard fence, and age group were found to be variables that only affected deaths. Drowsiness, lack of distance, and negligence were found to have a significant effect on both injury and death, but in the case of speeding, it was found to affect only fatal crashes. In addition, in the case of weather, it was found to increase the severity of crashes when there was fog. In the road alignment, it can be seen that the severity of the accident is high in the right curve section or the downhill section. This is believed to be because the soundproof wall may restrict the driver’s field of view in the right-curved section and cause brake operation problems in the downhill section. It can be seen that the signs of the variables derived from each model all have the same signs.
The results of the marginal effects on the multinomial logit and probit models are shown in Table 5. In the case of fog and road fault, it was found to affect fatal and property damage only crashes. In the case of the age group, the severity of fatal crashes increased in all age groups in their 30s and older.

5.3. Mixed-Effects Model

In the case of the mixed-effects model, variables such as those in Table 6 were finally derived. In the case of those in their 50s, it was found to be significant only in the logit model, and in the case of the median–other and guard fences, it was found to be significant only in the probit model. In the mixed-effects model, the results of the ordered model and the multinomial model analyzed above are mixed. It can be seen that speeding, drowsiness, lack of safety distance and negligence derived high from the ordered model and the right curve and downhill derived high from the multinomial model were derived together. It can be seen that all commonly derived variables have the same sign.

5.4. Random-Effects Ordered Model

In the case of the random-effects ordered model, variables such as those in Table 7 were derived. Except for the guard fence variable, variables derived from the logit model and the probit model were found to be the same. Unusually, a different result was derived from the crash type. In other models, the accident severity coefficient was high in the order of car–person, car–car, and car–facility, but in the random-effects ordered model, the car–facility coefficient was the highest and the car–person coefficient was the lowest.
The results of the marginal effects on the multinomial logit and probit models are shown in Table 8. In most cases, it was found that the influence was greatest when it was an injury accident, but in the case of tollgates, the influence was greatest when it was a property damage only crash. This seems to be because crashes occurring within the tollgate are mainly caused by collisions with facilities. In addition, in the case of guard fences, the effect of property damage only crash was found to be the greatest in the random-effects ordered logit model, while the opposite result was found in the probit model.

5.5. Multilevel Mixed-Effects Ordered Model

In the case of the multilevel mixed-effects ordered model, variables such as those in Table 9 were derived. The results for the influencing factors were the same as those of other models previously analyzed. Variables derived from the logit model and the probit model were found to be the same, and it can be seen that all variables have the same sign.
The results of the marginal effects on the multinomial logit and probit models are shown in Table 10. In most cases, it was found that it had the greatest effect when it was an injury crash, but in the case of toll gates and construction areas, it was confirmed that it had the greatest effect when it was a property damage only crash.

5.6. Model Comparison

AIC (Akaike information criterion) and BIC (Bayesian information criterion) were used for comparison between various logit and probit models analyzed using the same data. The AIC and BIC can be formulated as follows [49]:
AIC = 2 LL + 2 k
BIC = 2 LL + ln N × k
where LL is the log-likelihood of the full model with statistically significant explanatory variables, k is the number of parameters estimated in the model, and N is the number of observations. In addition to comparing the model fit, these two measures can account for the complexity of the model by penalizing the criterion for the number of explanatory variables included in the model. This penalization is carried out by either 2k or ln(N) × k terms in the equations. Having the models fit on the same data set, the model with lower AIC and BIC is considered to outperform the others. The AIC and BIC for all models were calculated and depicted in Table 11. As a result of comparing the AIC and BIC values for each model, it can be seen that the value of the multilevel mixed-effects ordered models was the lowest. Next, the model showing the lowest AIC and BIC values was found to be a multilevel mixed-effects logit model. When comparing AIC and BIC between model groups, the model that showed excellent performance after the multilevel mixed-effects model was found to be a random-effects model. The multinomial model was shown to have very similar performance to the random-effects model. In addition, in all model groups, the AIC and BIC results of the probit model were lower than that of the logit model.

6. Conclusions

In this study, an examination was conducted on the factors affecting the severity of highway truck crashes using 10 crash severity models of truck accident data generated on highways for eight years. A total of 26 variables were selected from 10 models, and the influencing factors of each variable are summarized in Table 12.
Variables that increased the severity of the accident were night, speed, vehicle factors, speeding, drowsy driving, congestion, front vehicle stopping, fog, downhill, safety distance not secured, front gaze negligence, right curve, and age. In the case of night driving, the coefficient was found to be high, especially in the model related to fatal crashes. Due to the policy of the Korean expressway, which is subject to toll discounts at night, the rate of truck traffic at night is high, and the fatigue from long-distance operations increases, increasing the severity of the collision. For similar reasons, it can be seen that drowsy driving also has a high coefficient, and drowsy driving also has a high coefficient of death, so measures such as the installation of additional rest areas and sleep rest areas are needed. In the case of speed, it was shown as a variable that increased the severity of the accident in all models, but the coefficient value showed a low value of 0.01 or less in all models. This was analyzed because there were cases where speed was omitted from the crash data. In the case of speeding, it appeared as a major variable in all models. It was analyzed that there was an effect of a secondary accident in which an additional accident occurred in a stopped vehicle due to a vehicle failure on a highway or a prior accident when a vehicle stopped ahead. In particular, if an accident occurred when a passenger, including a driver of a vehicle stopped on the main line, was exposed to the road due to a preceding failure or accident, the severity of the accident increased, and it was confirmed that the coefficient of the vehicle-to-vehicle accident type was the highest. In the case of congestion, it was found that due to frequent repetition of stop-and-go situations, the driver’s safety distance was not secured, and forward gaze was only connected. In the case of age, in all models, the older the age, the higher the accident severity coefficient. However, unlike previous studies, the accident severity of young drivers was the lowest, so further research is needed. In the case of the right curve, it was confirmed that the severity of the accident increased because it is difficult to check the front during the right curve because the truck mainly uses the right lane.
Variables that lowered the severity of the accident were toll gates, and ramps. Toll gates and ramps are a situation in which deceleration is required, and in many cases, the concentration of the driver is required. Road fault, snowy, wet surface conditions, and construction areas were also analyzed as factors that lower the severity of the accident, but this should consider various situations. These four factors are situations in which drivers have to pass with very high concentration, and accordingly, the need for low-speed driving is high. However, as soon as a driver problem or other factors occur in the corresponding sections, a very dangerous situation may be reached. In the case of road fault, dangerous actions such as suddenly changing lanes are often employed to avoid road fault sections. If there is no equipment such as a snow chain when it snows, there is a risk of driving on a very slippery road. Similarly, even if the road surface is wet, there is a risk that the road surface is slippery, and the brake does not properly catch due to the water barrier. Finally, in the case of the construction area, there is a geometric problem in which the width of the road narrows and the alignment is poor. In addition, the presence of workers working at construction sites increases the risk of pedestrian accidents on expressways.
In the comparison results between each model, it was found that the multilevel mixed-effects ordered logit and probit models showed the best performance. This is because various consideration conditions, including random effect, are all considered within the model, and each existing model has its advantages [40].
As a study to be added in the future, an analysis using a severity model not used in this study is necessary. In addition, in the time zone, it was simply classified as day or night, but it seems that analysis through detailed classification is necessary. Finally, it is necessary to find special measures to improve the transportation safety of cargo trucks through comparison with the accident severity model for all models in the highway.

Author Contributions

Conceptualization, J.P.; Methodology, S.P.; Project administration, J.P.; Software, S.P.; Validation, S.P.; Writing—original draft, S.P.; Writing—review & editing, J.P. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported by Jungseok Logistics Foundation.

Acknowledgments

We are very grateful to Jungseok Logistics Foundation.

Conflicts of Interest

The authors declare no conflict of interest.

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Table 1. List of variables and percentage of occurrences.
Table 1. List of variables and percentage of occurrences.
VariableFrequencyPercentage
SeverityFatality8083.57%
Injury237910.52%
Damage only19,43285.91%
Day/NightDay14,97166.19%
Night764833.81%
Crash LocationMainline13,64460.32%
Tollgate452320.00%
Ramp320014.15%
Tunnel8863.92%
Service area3661.62%
Crash FactorDriver16,54973.16%
Vehicle318014.06%
Other289012.78%
Traffic ConditionNormal21,63095.63%
Congestion4712.08%
Forward car stopped5182.29%
Road EnvironmentNormal19,44485.96%
Abnormal317514.04%
Main Crash FactorSpeeding423718.73%
Drowsy379816.79%
Lack of safety distance5522.44%
Negligence582725.76%
Driver other22399.90%
Vehicle fault400817.72%
Road fault13015.75%
Other factors423718.73%
Crash TypeCar–Car441219.51%
Car–Facility13,98961.85%
Car–Person1610.71%
Other types405717.94%
Weather ConditionSunny14,72265.09%
Cloudy299913.26%
Rainy410718.16%
Snowy6742.98%
Foggy1030.46%
Other weather140.06%
Surface ConditionDry17,46677.22%
Wet502522.22%
Snow1280.57%
Other surface conditions270.12%
Horizontal AlignmentStraight19,73987.27%
Right curve1610.71%
Left curve271912.02%
Longitudinal SlopeFlatness17,51277.42%
Uphill271912.02%
Downhill238810.56%
Pavement ConditionNormal22,57099.78%
Abnormal490.22%
Median TypeWall (127 cm)755433.40%
Wall (81 cm)366516.20%
Green wall4471.98%
Guardrail20118.89%
Other median types894239.53%
Guardrail TypeGuardrail882739.02%
Guard cable2501.11%
Guard pipe470.21%
Guard fence3021.34%
Concrete wall20359.00%
Other guardrails11,15849.33%
Truck Vehicle SizeSmall266611.79%
Medium591026.13%
Large385017.02%
Trailer419318.54%
AgeLess than 20s591926.17%
The 30s270411.95%
The 40s554124.50%
The 50s589226.05%
Over 60256311.33%
SexMale22,24398.34%
Female3761.66%
Vehicle SpeedAverage91.1 km/h
Standard deviation19.62
Table 2. Result of ordered logit and probit model.
Table 2. Result of ordered logit and probit model.
VariableOrdered LogitOrdered ProbitVariableOrdered LogitOrdered Probit
Year−0.0473−0.0251Congestion0.92390.5166
Day/Night0.16790.0803Forward Car Stopped0.74570.434
Tollgate−1.7974−0.8306SaturdayN/S−0.0765
Ramp−0.5392−0.2777Snowy−1.0312−0.573
Crash Factor-Vehicle0.5650.3057Car–Car2.13551.1666
Speeding1.2160.6427Car–Facility0.23420.1067
Drowsy1.46840.7889Car–Person4.43382.4407
Lack of Safety Distance1.15010.5937Right curve0.13820.0831
Negligence1.07310.5471Downhill0.22230.1328
Main Crash Factor-Driver Other0.90190.4704Construction Area−0.3396−0.1643
The 40s0.1430.0817
Cut 13.09981.7211The 50s0.20490.1197
Cut 24.92452.6932Over 600.37950.2092
N/S = Not significant.
Table 3. Marginal effects of ordered logit and probit model.
Table 3. Marginal effects of ordered logit and probit model.
VariableOrdered LogitOrdered Probit
Y = 0Y = 1Y = 2Y = 0Y = 1Y = 2
Year0.003−0.0030.0000.004−0.003−0.001
Day/Night−0.0130.0010.012−0.0130.0110.002
Tollgate0.009−0.0740.0650.095−0.081−0.014
Ramp0.034−0.028−0.0060.038−0.032−0.006
Crash Factor-Vehicle−0.0490.0400.009−0.0560.0450.011
Speeding−0.1240.0990.025−0.1320.1040.028
Drowsy−0.1630.1290.034−0.1730.1330.040
Lack of Safety Distance−0.1320.1040.028−0.1330.1020.031
Negligence−0.0990.0800.019−0.1030.0830.020
Main Crash Factor-Driver Other−0.0090.072−0.063−0.0950.0750.020
Congestion−0.0980.0780.020−0.1110.0870.024
Forward Car stopped−0.0740.0590.015−0.0890.0710.018
SaturdayN/SN/S0.0000.012−0.001−0.011
Snowy0.051−0.042−0.0090.062−0.054−0.008
Car–Car−0.2710.2080.063−0.2810.2040.077
Car–Facility−0.0170.0140.003−0.0170.0140.003
Car–Person−0.7990.2800.519−0.7720.2450.527
Right Curve−0.0110.0090.002−0.0140.0110.003
Downhill−0.0170.0140.003−0.0220.0190.003
Construction Area0.022−0.018−0.0040.023−0.002−0.021
The 40s−0.0110.0090.002−0.0130.0110.002
The 50s−0.0160.0130.003−0.0020.016−0.014
Over 60−0.0310.0250.006−0.0370.0030.034
N/S = Not Significant.
Table 4. Result of multinomial logit and probit model.
Table 4. Result of multinomial logit and probit model.
VariableMultinomial LogitMultinomial Probit
Y = 1Y = 2Y = 1Y = 2
Year−0.0711N/S−0.0523N/S
Day/NightN/S0.4611N/S0.2701
Tollgate−1.7136−2.8522−1.1129−1.5016
Ramp−0.6953N/S−0.5073N/S
Speed−0.00010.00230.00000.0015
Crash Factor-Vehicle0.4632N/S0.2921N/S
SpeedingN/S1.6604N/S1.0902
Drowsy1.23712.03680.86951.3184
Lack of Safety Distance1.24211.15720.87030.7351
Negligence1.04551.34090.69550.8298
Main Crash Factor-Driver Other0.86071.16420.56740.7360
Road Fault−0.6612N/S−0.4136N/S
Congestion0.75531.36750.62360.9545
Forward Car stopped0.35111.19550.30480.8553
Saturday−0.1868N/S−0.1431N/S
Snowy−0.7604−1.8752−0.5963−1.1893
FoggyN/S0.9696N/S0.6259
Car–Car1.84943.04371.45731.9456
Car–Facility0.18650.54470.12630.2599
Car–Person3.44766.09742.60964.1560
Right curve0.14650.13830.12010.1060
Downhill0.25060.23100.19690.1819
Surface-wet−0.2353−0.4007−0.1767−0.2773
Construction AreaN/S−0.5281N/S−0.2888
Guardrail–Guard fenceN/S0.5709N/S0.4080
The 30sN/S0.6797N/S0.3915
The 40sN/S0.7845N/S0.4883
The 50sN/S1.0031N/S0.6191
Over 60N/S1.3041N/S0.8061
Constant−2.4682−7.1413−1.9326−4.6713
N/S = Not significant.
Table 5. Marginal effects of multinomial logit and probit model.
Table 5. Marginal effects of multinomial logit and probit model.
VariableMultinomial LogitMultinomial Probit
Y = 0Y = 1Y = 2Y = 0Y = 1Y = 2
Year0.004−0.0040.0000.005−0.0050.000
Day/Night−0.0050.0010.004−0.0060.0000.006
Tollgate0.087−0.073−0.0140.091−0.077−0.015
Ramp0.036−0.035−0.0010.042−0.041−0.001
Speed0.0000.0000.0000.0000.0000.000
Crash Factor-Vehicle−0.0420.0320.009−0.0430.0290.014
Speeding−0.1300.1070.023−0.1340.1040.030
Drowsy−0.1410.1060.035−0.1460.1020.045
Lack of Safety Distance−0.1400.1260.014−0.1370.1210.016
Negligence−0.0960.0810.015−0.0950.0770.018
Main Crash Factor-Driver Other−0.0860.0710.015−0.0840.0650.019
Road Fault0.022−0.0330.0110.024−0.0350.011
Congestion−0.0830.0620.022−0.1050.0740.032
Forward Car stopped−0.0420.0240.018−0.0580.0280.030
Saturday0.011−0.011−0.0010.014−0.013−0.001
Snowy0.042−0.035−0.0080.052−0.042−0.009
Foggy0.009−0.0240.0140.008−0.0310.023
Car–Car−0.2470.1760.072−0.2710.1910.080
Car–Facility−0.0150.0110.004−0.0160.0110.004
Car–Person−0.7880.2410.547−0.7720.2460.526
Right curve−0.0110.0090.001−0.0140.0120.002
Downhill−0.0190.0170.002−0.0230.0200.003
Surface-wet0.017−0.014−0.0030.020−0.016−0.004
Construction Area0.011−0.007−0.0040.012−0.008−0.004
Guardrail–Guard fence−0.0240.0180.006−0.0300.0200.010
The 30s−0.001−0.0070.008−0.002−0.0080.010
The 40s−0.007−0.0020.008−0.008−0.0040.012
The 50s−0.008−0.0040.011−0.010−0.0060.016
Over 60−0.0210.0020.020−0.0270.0000.027
Table 6. Result of mixed-effects logit and probit model.
Table 6. Result of mixed-effects logit and probit model.
VariableMixed-Effects LogitMixed-Effects ProbitVariableMixed-Effects LogitMixed-Effects Probit
Year−0.0576−0.0303Saturday−0.1545−0.0891
Day/Night0.12040.0518Snowy−0.9966−0.5471
Tollgate−1.7883−0.7872Car–Car2.07781.1686
Ramp−0.5618−0.2923Car–Facility0.23190.1041
Crash Factor-Vehicle0.69350.3474Car–Person4.27332.3923
Speeding1.32960.6873Right curve0.14980.0877
Drowsy1.55720.8103Downhill0.24160.1417
Lack of Safety Distance1.34280.6918Median–OtherN/S−0.1132
Negligence1.21750.603Guardrail–Guard fenceN/S0.1891
Main Crash Factor-Driver Other1.03620.5149The 50s0.0926N/S
Congestion0.87350.5245Over 600.25180.1155
Forward Car stopped0.60020.3736Constant−2.9464−1.6086
N/S = Not significant.
Table 7. Result of random-effects ordered logit and probit Model.
Table 7. Result of random-effects ordered logit and probit Model.
VariableRandom-Effects
Ordered Logit
Random-Effects
Ordered Probit
VariableRandom-Effects
Ordered Logit
Random-Effects
Ordered Probit
Day/Night0.17130.0778Forward Car stopped0.75850.4353
Tollgate−1.8198−0.7935Road Fault−0.2641−0.5692
Ramp−0.5566−0.2613Snowy−0.9413−1.1628
Crash Factor-Vehicle0.52110.3059Car–Car2.12900.1028
Speeding1.25750.6448Car–Facility0.24062.4455
Drowsy1.42340.7860Car–Person4.43510.0790
Lack of Safety Distance1.12900.5995Right curve0.13880.1330
Negligence1.03590.5444Downhill0.22660.1527
Main Crash Factor-Driver Other0.87490.4720Construction Area−0.3458−0.1259
Congestion0.92860.5106Guardrail–Guard fenceN/S0.1788
The 40s0.14380.0817
Cut 13.73062.0780The 50s0.20440.1185
Cut 25.55833.0515Over 600.37320.2062
N/S = Not significant.
Table 8. Marginal effects of random-effects ordered logit and probit model.
Table 8. Marginal effects of random-effects ordered logit and probit model.
VariableRandom-Effects Ordered LogitRandom-Effects Ordered Probit
Y = 0Y = 1Y = 2Y = 0Y = 1Y = 2
Day/Night−0.0130.0100.003−0.0130.0100.003
Tollgate0.091−0.075−0.0160.092−0.079−0.013
Ramp0.035−0.028−0.0070.036−0.031−0.005
Crash Factor-Vehicle−0.0450.0360.009−0.0560.0460.010
Speeding−0.1300.1030.027−0.1320.1040.028
Drowsy−0.1570.1240.033−0.1720.1320.040
Lack of Safety Distance−0.1290.1020.027−0.1350.1040.031
Negligence−0.0950.0770.018−0.1030.0830.020
Main Crash Factor-Driver Other−0.0860.0690.017−0.0950.0760.019
Congestion−0.0990.0790.020−0.1100.0860.024
Forward Car stopped−0.0750.0600.015−0.0900.0710.019
Snowy0.018−0.015−0.0030.062−0.053−0.009
Car–Car0.048−0.040−0.008−0.2800.2030.077
Car–Facility−0.2700.2070.063−0.0160.0130.003
Car–Person−0.0170.0140.003−0.7720.2440.528
Right Curve−0.7980.2800.518−0.0130.0110.002
Downhill−0.0110.0090.002−0.0230.0190.004
Construction Area−0.0180.0150.0030.022−0.018−0.004
Guardrail–Guard fence0.022−0.018−0.004−0.0320.0260.006
The 40s−0.0110.0090.002−0.0130.0110.002
The 50s−0.0160.0130.003−0.0200.0160.004
Over 60−0.0310.0250.006−0.0360.0300.006
Day/Night−0.0130.0100.003−0.0130.0100.003
Tollgate0.091−0.075−0.0160.092−0.079−0.013
Ramp0.035−0.028−0.0070.036−0.031−0.005
Crash Factor-Vehicle−0.0450.0360.009−0.0560.0460.010
Speeding−0.1300.1030.027−0.1320.1040.028
Drowsy−0.1570.1240.033−0.1720.1320.040
Lack of Safety Distance−0.1290.1020.027−0.1350.1040.031
Negligence−0.0950.0770.018−0.1030.0830.020
Main Crash Factor-Driver Other−0.0860.0690.017−0.0950.0760.019
Congestion−0.0990.0790.020−0.1100.0860.024
Forward Car stopped−0.0750.0600.015−0.0900.0710.019
Snowy0.018−0.015−0.0030.062−0.053−0.009
Car–Car0.048−0.040−0.008−0.2800.2030.077
Car–Facility−0.2700.2070.063−0.0160.0130.003
Car–Person−0.0170.0140.003−0.7720.2440.528
Right curve−0.7980.2800.518−0.0130.0110.002
Downhill−0.0110.0090.002−0.0230.0190.004
Construction Area−0.0180.0150.0030.022−0.018−0.004
Guardrail–Guard fence0.022−0.018−0.004−0.0320.0260.006
The 40s−0.0110.0090.002−0.0130.0110.002
The 50s−0.0160.0130.003−0.0200.0160.004
Over 60−0.0310.0250.006−0.0360.0300.006
Table 9. Result of multilevel mixed-effects ordered logit and probit model.
Table 9. Result of multilevel mixed-effects ordered logit and probit model.
VariableMultilevel Mixed-Effects Ordered LogitMultilevel Mixed-Effects Ordered ProbitVariableMultilevel Mixed-Effects Ordered LogitMultilevel Mixed-Effects Ordered Probit
Year−0.0492−0.0251Congestion0.92690.5166
Day/Night0.16920.0803Forward Car stopped0.74250.4340
Tollgate−1.7999−0.8306Saturday−0.1436−0.0765
Ramp−0.5396−0.2777Snowy−1.0418−0.5730
Crash Factor-Vehicle0.56550.3057Car–Car2.13411.1666
Speeding1.21720.6427Car–Facility0.23550.1067
Drowsy1.47180.7889Car–Person4.43082.4407
Lack of Safety Distance1.15910.5937Right Curve0.13880.0831
Negligence1.07660.5471Downhill0.22300.1328
Main Crash Factor-Driver Other0.90570.4704Construction Area−0.3503−0.1643
The 40s0.14290.0817
Cut 13.06031.7211The 50s0.20420.1197
Cut 24.88542.6932Over 600.37780.2092
Table 10. Marginal effects of multilevel mixed-effects ordered logit and probit model.
Table 10. Marginal effects of multilevel mixed-effects ordered logit and probit model.
VariableMultilevel Mixed-Effects Ordered LogitMultilevel Mixed-Effects Ordered Probit
Y = 0Y = 1Y = 2Y = 0Y = 1Y = 2
Year0.004−0.003−0.0010.004−0.003−0.001
Day/Night−0.0130.0100.002−0.0130.0110.002
Tollgate0.090−0.074−0.0160.095−0.081−0.014
Ramp0.034−0.028−0.0060.038−0.032−0.006
Crash Factor-Vehicle−0.0490.0400.009−0.0560.0450.010
Speeding−0.1240.0990.025−0.1320.1040.028
Drowsy−0.1640.1290.034−0.1730.1330.040
Lack of Safety Distance−0.1330.1060.028−0.1330.1020.030
Negligence−0.1000.0800.020−0.1030.0830.020
Main Crash Factor-Driver other−0.0900.0720.018−0.0950.0750.019
Congestion−0.0980.0780.020−0.1110.0870.024
Forward Car stopped−0.0730.0590.014−0.0890.0710.019
Saturday0.010−0.008−0.0020.012−0.010−0.002
Snowy0.051−0.042−0.0090.062−0.054−0.008
Car–Car−0.2710.2080.063−0.2810.2040.077
Car–Facility−0.0170.0140.003−0.0170.0140.003
Car–Person−0.7980.2810.518−0.7720.2450.527
Right Curve−0.0110.0090.002−0.0140.0110.002
Downhill−0.0170.0140.003−0.0220.0190.004
Construction Area0.022−0.018−0.0040.023−0.020−0.004
The 40s−0.0110.0090.002−0.0130.0110.002
The 50s−0.0160.0130.003−0.0200.0160.003
Over 60−0.0310.0250.006−0.0370.0300.007
Table 11. Results of the AIC and BIC comparison for each model.
Table 11. Results of the AIC and BIC comparison for each model.
ModelAICBIC
LogitProbitLogitProbit
Ordered Model17,189.7617,154.6317,382.3917,355.30
Multinomial Model14,861.2214,853.8415,334.9515,327.57
Mixed-effects Model17,187.6817,154.5317,388.4417,354.75
Random-effects Ordered Model14,777.5414,748.7214,954.1214,933.33
Multilevel Mixed-effects ordered Model13,808.4113,790.8613,984.9913,967.44
Table 12. Variables affecting freight vehicle crash severity.
Table 12. Variables affecting freight vehicle crash severity.
Variable TypeVariables
Variables that increase the severityNight, Accident factor-vehicle, Speeding, Drowsy, Lack of Safety Distance, Negligence, Main Crash Factor-Driver other, Congestion, Forward Car stopped, Foggy, Right curve, Downhill, Guardrail-guard fence
Variables that decrease the severity (normal)Tollgate, Ramp, Saturday
Variables that decrease the severity (abnormal)Road Fault, Snowy, Surface-wet, Construction Area
Ordered VariableYear, Car–Person > Car–Car > Car–Facility, Age
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Park, S.; Park, J. Multilevel Mixed-Effects Models to Identify Contributing Factors on Freight Vehicle Crash Severity. Sustainability 2022, 14, 11804. https://doi.org/10.3390/su141911804

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Park S, Park J. Multilevel Mixed-Effects Models to Identify Contributing Factors on Freight Vehicle Crash Severity. Sustainability. 2022; 14(19):11804. https://doi.org/10.3390/su141911804

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Park, Seongmin, and Juneyoung Park. 2022. "Multilevel Mixed-Effects Models to Identify Contributing Factors on Freight Vehicle Crash Severity" Sustainability 14, no. 19: 11804. https://doi.org/10.3390/su141911804

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