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Article

Coal Resource Security Assessment in China: A Study Using Entropy-Weight-Based TOPSIS and BP Neural Network

1
School of Management, China University of Mining and Technology (Beijing), Beijing 100083, China
2
School of Finance, University of International Business and Economics, Beijing 100029, China
*
Author to whom correspondence should be addressed.
Sustainability 2020, 12(6), 2294; https://doi.org/10.3390/su12062294
Submission received: 24 January 2020 / Revised: 10 March 2020 / Accepted: 12 March 2020 / Published: 15 March 2020

Abstract

:
Energy security has become a worldwide issue in recent years. Coal resources security (CRS), an important part of energy security, has been an emerging concern in many countries, due to the diminishing fossil energy reserve and unbalanced energy structure. However, there is no universally agreed method of constructing indicator system for CRS assessment. Subjectivity in the process of evaluation also affects the results of assessment. Moreover, CRS is a complex system that should be evaluated scientifically under diverse methods. Therefore, we constructed an indicator system and evaluation model of CRS and used a case study of China and 31 provinces in its mainland to evaluate CRS at both national and provincial levels. The indicator system included two subsystems—long-term CRS and short-term CRS. We also chose a few elements and factors that are consistent with China’s reality. Different research methods were used: the entropy-weight-based TOPSIS (Technique for Order Preference by Similarity to an Ideal Solution) method is applied to evaluate the degree of CRS, which avoids the subjectivity of weight determination and reflects the relative merit of each indicator; the BP (Back-Propagation) Neural Network method is used to analyze the sensitivity of CRS to each index. The results show that the national level of CRS dropped in the early years but slowly picked up with the help of government intervention. Investment in coal industry development resulted in the immediate effect of improving CRS. The positive impact of maintaining environmental sustainability is stable over either the short, medium, or long term. The degrees of CRS vary significantly across provinces, even between those with similar coal stock levels. Extra attention should be paid to the transportation of coal resources among provinces and intervention to balance supply and demand within the regions.

1. Introduction

Energy security is crucial to the sustainable development of all countries and always rises high on the policy agenda of governments, considering its linkages with economic growth, trade openness, and the ecological environment [1]. However, due to diminishing fossil energy reserves, the increasing pressure of environmental protection, and a changing energy structure [2], the outlook for global energy security is not optimistic. To ensure energy security, a global race to develop renewable energy has begun [3]. Different countries are developing policies that facilitate technological innovation and open new horizons for global energy [4,5].
As a developing country with rapid economic growth, China faces a unique energy dilemma [6]. Its energy structure is extremely unbalanced: two-thirds of its energy consumption is provided by coal. The high reliance on coal makes the coal strategy a primary concern of policy makers [7]. Further, the objective assessment and understanding of coal resource status are the basis for making relevant government policy. Therefore, in this article, we will carry out an evaluation of coal resources security (CRS) in China.
China’s CRS situation is complicated. Fossil energy usage (mainly coal) results in China suffering enormous pressure from environmental pollution and climate problems [8]. There are many conflicts and contradictions in the development and utilization of coal resources, including the overcapacity of coal resources, the unreasonable allocation of coal resources in time and space [9], etc. As coal imports increase, China is closely connected to the international market, which means it is vulnerable to international terrorism and global geopolitical risks [10]. In such a complex context, many scholars have come to understand the CRS from different perspectives and have obtained different results. Hou et al. [11] calculated CRS from four aspects—resource security, development conditions, the ecological environment, and the coal market. They used CRS to give warning about coal consume quantity and production ability. Guo et al. [12] established a Pressure-State-Response (PRS) model to evaluate and predict CRS, and their results showed that, after 2009, CRS did not repeat its previous rising cycle and reached a maladjustment state from 2009 to 2016. This article shares the same turning point with our work. Gao and Li [13] established a measurement system through four interlocking steps—coal production, circulation, international trade, and consumption. Wang et al. [14] analyzed coal availability, accessibility, sustainability, and technology development and synthesized CRS with these four variables. Chao et al. [15] based CRS on coal supply and usage, paying more attention to the problems brought by coal usage. Jing Xua et al. [16] took CRS as symbol of sustainable development and found that economic growth in China was largely dependent on coal consumption.
The above literature shows that the research on CRS varies with the authors’ understanding. Actually, there is no universally agreed method of constructing indicator system for CRS assessment. The definition of CRS is slippery, and it can hold multiple dimensions and present different specificities depending on the district, timeframe, or energy type. This uncertainty makes it difficult to identify consistent research methods for analysis, prediction, and policy making [17]. In this paper, our understanding of CRS is an extension of the definition of energy security from the International Energy Agency (IEA), which is widely accepted and appears in many articles [18,19,20,21]. We define CRS as the uninterrupted availability of coal resources at an affordable price. We can also use long-term CRS and short-term CRS to summarize the influence factors.
Based on this definition of CRS, we will build CRS evaluation system to calculate the CRS degree. Considering the regional differences and multiple layers of coal policies in China, we will study CRS at both the overall level and the provincial level [22]. Finally, a back-propagation (BP) neural network model for prediction [23,24] will be built to simulate the non-linear relationships in the evaluation system and calculate indicators’ sensitivity to CRS. We want to achieve the following objectives through the above empirical test. First, we want to observe annual trends in CRS. Second, by sensitivity analysis, we want to find key variables that affect CRS. Third, we want to clearly delineate low-CRS areas and high-CRS areas. This work, we believe, will help policy makers to design a coal industry strategy and arrange overall coal production.
This study makes the following contributions. First, after extending the definition of energy security given by the IEA, we summarize a comprehensive set of factors affecting CRS. Second, we differentiate the indicator system of evaluation between national and provincial levels. Last but not least, it combines a back-propagation neural network with factor sensitivity analysis. The structure of this paper is as follows. Section 2 introduces the indicator system and evaluation methods. Section 3 shows the result of CRS at both the national and provincial levels. Section 4 presents the conclusions.

2. Research Method

2.1. Indicator System for CRS at the Provincial and National Levels

Coal resource security (CRS) is a multifaceted concept. Inspired by the definition of energy security from the International Energy Agency (IEA), we define CRS as the uninterrupted availability of coal resources at an affordable price, which involves long-term CRS and short-term CRS.
Long-term CRS is affected by three elements—coal reserves, the development level of the coal industry, and environment sustainability. They reflect whether the supply and use of coal resources will be limited in the long run. Coal reserves affect the self-sufficiency of coal resources. The development level of the coal industry indicates the capacity of coal production, thus affecting the supply and use of coal resources in the medium and long term. The destruction to the environment caused by coal production and consumption increases the economic cost of using coal in the long run. We should not ignore the fact that that environmental pressure is the driving factor to reduce the use of fossil fuels and develop clean energy [5].
Short-term CRS is affected by three elements—coal supply, coal demand, and coal import and export. Coal supply refers to domestic coal capacity, which determines to what extent China can achieve coal self-sufficiency. Coal demand refers to the minimum requirement for the coal supply. Increases in coal demand may indicate that a country is more dependent on coal and has fewer alternative energy sources. The factor of coal import and export reflects the ability to acquire external coal resources and control the balance of supply and demand by reacting promptly to emergencies such as a shortage of external coal supply or overly volatile prices in the international market. Coal imports have a negative impact on national coal resource security, in that a large quantity of coal imports is detrimental to the domestic coal industry, leading to high dependence on overseas coal resources and low self-sufficiency.
Based on the analysis of the definition of coal resource security, this paper sets four tiers in the index system. The first tier is the ultimate goal of our research—CRS. The second tier includes the two subsystems. The third tier includes the primary indicators affecting the subsystems, as discussed above. The fourth tier includes secondary indicators linked closely with the front indicators, some of which are flow and stock data and some are elasticity indexes reflecting sensitivity.
In order to evaluate the degree of CRS at national and provincial levels, we establish two indicator systems for evaluation [25].
The indicators at the national level are shown in Table 1. Among them, the elasticity coefficient of coal production N9 refers to the average annual growth rate of total coal production divided by the average annual growth rate of the national economy. Coal self-sufficiency ratio N14 refers to coal production divided by coal consumption. Data for the other indicators are directly available from our database. Table 1 also lists the impact direction of each factor on national CRS. Among them, all indexes for coal reserves (N1 and N2), development level of coal industry (N3, N4, N5, and N6), and coal supply (N9 and N10) are hypothesized to have positive effects on CRS, while all the indicators for coal demand (N11, N12, and N13) have a negative impact. In terms of environment sustainability, SO2 emission (N7) has a negative impact on CRS because high pollution leads to higher social and economic cost. However, the investment of waste gas treatment projects (N8) improves environment sustainability and thus has a positive impact on CRS. The coal self-sufficiency ratio (N14) indicates the ability of the country to satisfy its coal demand and thus is consistent with CRS, while net coal import (N15) is detrimental to the self-sufficiency ratio, and thus, a negative direction should be identified.
We do not consider carbon dioxide emissions as a secondary indicator because the technology of carbon dioxide (CO2) capture and storage (CCS) is still immature, and policies such as carbon credits, carbon taxes, and other incentives to increase the cost of coal use are still in operation on a small scale, so it is difficult to measure the actual increase in the cost of coal usage caused by CO2 emissions [26,27]. However, SO2 emissions from coal can be avoided by coal washing, which increases the cost of coal use in practice.
Table 2 shows the evaluation system of coal resource security at provincial level. Compared with Table 1, we add some indicators to reflect the movement of coal resources between provinces (M5, M9 and M10).
The total amount of inward deployment of coal (M5) refers to the amount of coal received from the other provinces, which indicates a negative situation of CRS. The total amount of coal available for deployment (M9) refers to the total output of key state-owned coal mines in each province. The amount of outward deployment of coal (M10) refers to the ratio of the total amount that can be allocated to other provinces. These two indicators are consistent with the capacity of coal resources within the province, so they have a positive impact on the CRS.

2.2. Evaluation Methods

2.2.1. The Entropy-Weight-Based TOPSIS

The methods for evaluation of indicator system vary extensively, including the method based on Catastrophe theory [28], the analytic hierarchy process [29], the principal component analysis [18], and the entropy-weight-based TOPSIS (Technique for Order Preference by Similarity to an Ideal Solution) [29,30,31,32,33,34]. The entropy-weight-based TOPSIS method has been widely applied in the field of evaluation and management since the 1980s and has become a classic method in multi-index comprehensive evaluation. The entropy-weight method is advantageous because it avoids the arbitrariness of subjective determination of indicators’ weights and has strong adaptability in the process of weight determination [31,34,35,36,37]. TOPSIS was first proposed by Wang and Yoon in 1981 for evaluation and decision-making problems. It is a comparative method of analyzing the difference between each object and its optimal solution. It has no special requirement for sample data and can be combined with many other methods. Therefore, we apply this method in our article.
The specific steps of entropy-weight-based TOPSIS method are as follows:
  • Formulate a matrix M = [ m i j ] p × q , with p evaluation objects and q evaluation indicators. In order to make different indicators comparable, we standardize each index and get the normalized matrix Z = [ z i j ] p × q .
  • Use the entropy weight method to calculate weights of each index. First, calculate the proportion of the ith target indicator value under the jth indicator: v i j = z i j i = 1 p z i j . Then, use v i j to calculate the information entropy of jth indicator e j = h i = 1 p v i j ln v i j , where h is a positive number and can be set as h = 1 / ln p . Next, calculate the coefficient of difference of jth indicator g i = 1 e i . Finally, the weight for the jth evaluation index can be expressed as w j = g j j = 1 p g j .
  • Determine the correlation between each indicator and the final evaluation target—coal resource security. If it is positive, the optimal solution is the maximum value of the indicator, and the worst solution is the minimum value of the indicator, and vice versa if it is negative. A positive ideal solution E + is formed by all the optimal values and a negative ideal solution E is formed by all the worst values.
  • Calculate the Euclidean distances from evaluation object to the positive ideal solutions or negative ideal solutions using the following equations:
    D i + = j = 1 p w j ( z j + z j ) 2 , D i = j = 1 p w j ( z j z j ) 2
  • Calculate the relative approach degree for all the evaluation objectives using C i = D i + D i + + D i , in which the larger the C i , the lower the comprehensive evaluation, and vice versa. The level of coal resource security can be evaluated based on the value of 1- C i . The larger the value of 1- C i , the better the situation of coal resource security.

2.2.2. Back-Propagation (BP) Neural Network

Neural network is a calculation model that simulates the biological nervous system for decision making and prediction. In this article, the BP neural network is used to simulate the relationship between the secondary indicators (from the CRS evaluation system) and CRS degree, so that we can get the resulting predictive value under any given secondary indicators. Back-propagation neural network can find the non-linear correlation in data sets. Compared with other prediction models, such as the grey model [33,38], the BP neural network algorithm is able to adapt, generalize, and tolerate faults. It has been used in various prediction problems [31,32,39]. That is why it is an effective prediction model, and we can apply this model to find the reaction of CRS when changing one input indicator.
The functionality of the neural network is determined by its network structure and connection weights between neurons. The first step in predicting is to train a neural network model to minimize the loss function f . The loss function includes two parts—the error term and the regular term. The error term measures the degree of fitting of the neural network model on the training data set, while the regular term measures the complexity of the model to prevent over-fitting.
The value of the loss function is determined by the two parameters of the model: weight value P = [ p i j ] n 1 × n 2 and offset value B = [ b i j ] n 1 × 1 , where n 1 is the number of neurons, and n 2 is the number of neurons in the previous layer (or the number of input layer features). We combine P and B into an n-dimensional weight vector W = [ w 1 , w 2 , , w n ] , n = n 1 ( n 2 + 1 ) . Therefore, the loss function can be expressed as f ( W ) . W * is the minimum value of the loss function. By arbitrarily selecting a point A in space, we can calculate the first-order and second-order derivatives of the loss function. The first order derivative can be expressed as a vector:
g r a d f ( W ) i = f i ( W ) = d f d w i , ( i = 1 , , n )
Similarly, the second order derivative can be expressed as a Hessian matrix:
H i j ( f ( W ) ) = d 2 f d w i d w j , ( i , j = 1 , , n )
Therefore, the training problem of the neural network is transformed into the problem of solving the multivariable continuous differentiable function. We abstract the learning problem of the neural network into the problem of finding the parameter vector W * , so that the loss function f ( W ) reaches the minimum value at this point. Suppose that we find the minimum point of the loss function, then the gradient of the neural network function is considered to be equal to zero. Usually, the loss function is a non-linear function. Therefore, we search step by step in the parameter space to find the optimal solution. In each step, the parameters of the neural network model are recalculated, and the value of f ( W ) are correspondingly reduced. The specific method is as follows: first, randomly initialize a set of model parameters; then, update the set of parameters iteratively so the loss function value decreases; and finally, when a specific condition or termination condition is met, the entire training process ends.
Common training algorithms include gradient descent, Newton’s method, conjugate gradient, the quasi-Newton method, and the Levenberg–Marquardt (LM) algorithm. In this paper, the Levenberg–Marquardt algorithm, also known as the least square method of attenuation, is applied to find the squared error in the loss function. It is efficient even when the size of data is small.
The iterative process of LM algorithm is as follows:
  • Set the training error allowable value ε , the initialization weight W n and the number of iterations n , as the weight correction parameter [ λ , v ] . Generally, λ is a small number. v takes a number greater than 1. Set the initial n = 0 .
  • Calculate the output value t n of the network, then calculate the error ε n .
  • Calculate the Jacobian matrix J .
  • Base on [ λ , v ] and W n to calculate the weight correction amount Δ W n , and get the weight correction value W n + 1 = W n + Δ W n .
  • If the error ε n satisfies the accuracy requirement, go to (7); otherwise, calculate the new error ε n + 1 with the weight correction value W n + 1 .
  • If the new error ε n + 1 is smaller than the old error, let n = n + 1 and λ = λ × v and return to (2); otherwise, if the weight value is not updated this time, the new weight W n + 1 is equal to the old weight W n , the weight correction parameter is changed to λ = λ × v , and return to (4).
  • Stop.

2.2.3. Sensitivity Analysis

The sensitivity analysis of input parameters studies the change of output parameters when given input parameters are changed in a certain baseline state—that is, the influence of the change of input parameters on the output parameters. The calculation process is as follows. First, normalize all input indicators to [0,1]. A single input variable is tested with the values 0, 0.25, 0.5, 0.75, and 1, while the other input variables remain unchanged. After introducing each test value of the input index into the network, observe the value of the output index given by the neural network, record the maximum and minimum outputs, and calculate the ratio of their difference to the maximum output. The mean of all the ratios is the sensitivity of the input variable. In this process, the values of the other variables are the calculating benchmarks. The sensitivity values are different against different benchmarks. This difference reflects the joint effect of all the input variables.

3. Results

3.1. National CRS Assessment

Our study period is from 2004 to 2017. During these 14 years, the overall situation of coal in China has significantly changed. Base coal reserves have fallen by 80 billion tons in 14 years. If the rate of coal use continues at the same level, China’s coal reserves will be exhausted in 30 years. In the past decade, with the development of the economy, the investment in the coal industry has increased year by year, leading to the problem of coal overcapacity. In addition, for the first time in recent years, China’s coal industry has seen a sharp decline in investment in mining because of the country’s policy to reduce excess capacity. The ratio of coal mining industry investment in the total energy industry investment has also declined year by year since 2011. SO2 emission decreased by 50% in the last five years. The share of thermal power generation has declined significantly in the past five years. Coal consumption and production continue to rise with the development of the economy. China’s coal self-sufficiency rate has been decreasing since 2008, while net coal imports have been increasing for many years.
For a more comprehensive assessment of coal resources, in this part, we used the entropy-weight-based TOPSIS to evaluate and analysis the degree of coal resource security in China at national level during 2004–2017. Then, we trained the back-propagation neural networks and combine it with sensitivity analysis, so we can understand the influence mechanism in our national CRS system further.

3.1.1. Calculation of National CRS

Our data were extracted from National Bureau of Statistics, China Coal Information Network, and China Customs, covering the time period 2004–2017.
First, the entropy weight method was used to calculate the weight of each index. According to the normalized matrix, positive ideal scheme A+ and negative ideal scheme A− in the finite scheme (14 years) are obtained. Table 3 shows that the average weights of indexes under two factors—development level of coal industry (N3, N4, N5, and N6) and coal import and export (N14 and N15) are the largest. N3 (the proportion of investment in state-owned coal mining industry in total energy investment) and N8 (investment in waste gas projects) have the largest two weights, which indicates that these two indicators have more information and play a more important role in the evaluation of national CRS.
The Euclidean distances D+ and D were calculated respectively. Then, the relative proximity of each evaluation object to the positive ideal scheme C was calculated. Here, 1-C represents the comprehensive evaluation of national CRS degree. The results are plotted in Figure 1, from which we identify the changing direction of CRS degree in China during the data period. The national CRS increased with slightly fluctuation from 2004 to 2009 and reached its peak in 2007. From 2009 to 2015, it gradually declined, but recovered after 2015.
Here is our analysis combined with economic facts and relevant policies (we assume that the policy lag is only one to two years):
(1)
From 2004 to 2008, influenced by the upward economic trend and the country’s vigorous construction of infrastructure, the demand for coal increased greatly, which led to the development of the coal industry. By calculating the Euclidean distance D+ from the primary indicators to their positive ideal solutions (see Table 4), we found that from 2004 to 2008, the development level of the coal industry had moved the most towards the positive ideal solution. So, it contributed most to the change of national CRS. The fluctuation of coal demand’s D+ caused the fluctuation of CRS. We believe that the period from 2004 to 2008 was the golden development period of the coal industry, and the coal supply was gradually improved, so the CRS during this period climbed step by step.
(2)
From 2008 to 2012, under the government’s Four Trillion Plan, the rapid growth of the coal industry and coal supply led to a glut of coal stocks that China’s domestic market could not absorb. Though the Table 4, we found that the D+ of coal demand didn’t change much; the huge increase in the D+ of coal import and export had exacerbated the contradiction between domestic coal supply and demand. The imbalance put some pressure on the national CRS. We think that the period from 2008 to 2012 was the adjustment period for coal industry, and CRS slightly decreased.
(3)
From 2012 to 2014, the coal industry was oversaturated, and the economic downturn led to a reduction in coal demand, which intensified the contradiction between coal supply and demand. In these three years, the incremental D+ of coal import and export contributed most to the negative change of national CRS. We think that the period from 2012 to 2014 was the winter for coal industry, and CRS sharply declined. And we should also notice the positive contribution of environmental sustainability to CRS.
(4)
From 2015 to 2017, national policies and the operating pressure of coal industry had led to the closure of overcapacity and backward coal producers. Some policies also drove a decline in coal import and coal industry investment, which reduced the gap between supply and demand for coal. Margins in the coal economy also started to recover. In Table 4, we can see the D+ of all four primary indicators to its fluctuated during the three years, and their mutual cooperation helped the national CRS to recover slowly. We think that the period from 2015 to 2017 was the recovery period for coal industry, and CRS slightly picked up.

3.1.2. Sensitivity Analysis

In 2019, the National Development and Reform Commission formulated overall coal planning and systematic arrangements to be implemented by 2025. They aimed to construct an efficient system of coal production, supply, and marketing and provide solutions to the potential problems within the system, which would ensure China’s coal industry to gradually move toward a controllable and predictable future. So, an empirical prediction of the situation of coal resource security in China is able to provide help for policy makers in determining energy strategies.
The back-propagation neural network model was applied to predict the security of coal resources in China. We normalized 14-year data of the 15 indicators as the input data. Fourteen-year CRS degrees obtained from the Entropy-weight-based TOPSIS method were used as the prediction variables (output variables). The 14 samples from 14 years were divided into a training set (85%) and a test set (15%) randomly in the process of training, which are shown in the Table A1.
We used Neural Network Toolbox in MATLAB (a software from MathWorks Company in Natick, Massachusetts, USA) to train our BP neural network model. First, we need to set the structure of the Neural Network. The number of nodes in the input layer is 15, corresponding to the 15 indexes in the coal resource security evaluation index system. Set the number of network hidden layers to 1. According to the calculation formula of the number of neuronal nodes in the hidden layer, n 1 = n 2 + l + α (where n 2 is the number of nodes in the input layer, l is the number of hidden layers, α [ 1 , 10 ] ), the number of nodes should be between 5 and 11. After testing the number of different hidden layer nodes, it was finally determined that the number of selected nodes in this paper is 10. The number of nodes in the output layer is 1, and the output object is the degree of CRS. The next step is to determine the parameters of the neural network. The LM algorithm is applied to train the neural network. The target is that the MSE of the training set is less than 0.000001, and that of the test set is less than 0.0001. In our tests, the MSE of the training set turned out to be 1.28241 × 10−7, and that of the test set was 4.67832 × 10−5, which met our accuracy requirements.
Next, we calculated and sorted the sensitivities of output parameters to changes in input parameters under the neural network model. We selected three calculating benchmarks which are 2017, 2013–2017, and 2004–2017, to calculate single-term average, medium-term average, and long-term average sensitivities, respectively. Take N1’s sensitivity as an example. We use five numbers (0, 0.25, 0.7, 0.75, 1) to replace the valuation of N1 in 2017 to get five different samples for the input of BP Neural Network model. After inputting them to the trained model, we can get five outputs for the prediction of CRS degree. Then, we record the maximum and minimum outputs and take the ratio of their difference to the maximum output as sensitivity of N1 in 2017 and also as the single-term sensitivities of N1. N1’s medium-term average sensitivity is the average of N1’s sensitivities from 2013 to 2017. N1’s long-term average sensitivity is the average of N1’s sensitivities from 2004 to 2017. The results are shown in the Figure 2.
By comparing the sensitivities for different lengths of term, we find the following:
(1)
The single-term sensitivities of indexes for coal industry development (N4 and N5) are higher than their medium-term and long-term average sensitivities, which indicates that the positive impact of development in the coal industry takes effect immediately within the first year, while being compromised by the changes in the other indexes in later years.
(2)
The sensitivities of indexes for environment sustainability (N7 and N8) in the single, medium, and long terms are stable, which indicates that they work independently. Therefore, we can draw the conclusion that regardless of changes in any other indexes, investment in environment sustainability always has a positive impact on CRS.
(3)
The mid-term average sensitivities of most indexes, even those related to short-term CRS (N9, N10, N14, and N15), are higher than their single-term and long-term average sensitivities, which indicates that they are more influential in the period 2013–2017 than in the other years. This is not surprising considering the intensive government intervention starting from 2015.

3.2. Provincial CRS Assessment

The issues of uneven distribution of coal resources, mismatch of coal supply and coal demand between provinces, and difficulties in cross-regional allocation of coal have all threatened the security of coal resources. Therefore, we calculated the weights of indicators in our provincial evaluation system (in mainland China) from 2012 to 2016 and ranked the degrees of CRS of each province for each year. The data is from the National Bureau of Statistics, the China Energy Yearbook, and the China Coal Industry Yearbook. The weights are shown in Figure 3 and they vary over five years. In particular, note that the M5’s weight in 2014 is significantly different from other years.
Based on the weights we calculated the degrees of CRS in each province and sorted them for each year. We gave the ranks for the provinces according to their CRS degree. The results are presented in Table 5.
Our findings are as follows:
(1)
Shanxi, Inner Mongolia, Anhui, Guizhou, Yunnan, Shaanxi, and Xinjiang have remained in the top 10 provinces for all studied years because they are major coal producing provinces, with coal reserves and supplies far ahead of the rest of the provinces. Among them, Guizhou, as the only province in southern China that transfers coal resources and sends electricity from the west to the east, has been vigorously carrying out mergers, reorganizations, transformations, and upgrades of its coal mines since 2012. This explains its improved rankings in the last two years.
(2)
Tianjin, Liaoning, Jilin, Shanghai, Jiangsu, Zhejiang, Shandong, Hubei, and Guangdong all remained in the bottom 10. This is mainly because these provinces have large demand for coal, but their own coal supply cannot meet the need. Therefore, the transfer of coal from other provinces or other counties is relatively large.
(3)
The rankings of Henan, Shandong, Heilongjiang, and Ningxia decreased in 2015, mainly because the effective supply was insufficient, and the amount of coal transferred to other provinces dropped significantly. It reflects the contradiction between supply and demand in these provinces.
For more intuitive result, we made Figure 4. We can draw the following conclusions:
(1)
There are obvious regional differences in provincial CRS degree. CRS is quite low in the southeastern coastal provinces and high in the western and northern provinces. This characteristic also reflects that coal is mainly distributed in the inland areas and that the southeast coastal areas have large population, resulting in high coal demand.
(2)
Shanxi, Inner Mongolia, Shaanxi, Gansu, Ningxia Hui, and Xinjiang Uygur have high coal stocks. Among these provinces, Shanxi has the largest coal supply. This is because Shanxi has made a high investment in the coal industry for many years, and traffic to and from Shanxi is relatively convenient compared with other inland provinces. Therefore, other inland provinces who want to improve their coal supply capacity require supporting transportation facilities and necessary investment, which will reduce part of the cost for domestic coal, thus enhancing competitiveness and gradually expanding the internal market.
(3)
We find that the CRS of Fujian, Shandong, Hunan, and Guangdong have stayed at a same low level, which is mainly because these eastern and southeastern coastal provinces have a high dependence on other provinces. Therefore, the import restrictions for these provinces should be lowered during peak seasons of coal use.

4. Conclusions

In this paper, we set up an indicator system of CRS and evaluated the degree of CRS in China based on the entropy-weight-based TOPSIS method from 2004–2017. During the 14 years of the study period, CRS went through a golden period, an adjustment period, a decline period, and a recovery period. We also found that government intervention played an important role in improving CRS in China in recent years. Then, we tried to find indexes of high sensitivities to CRS based on the BP neural network model. After comparing the single-term (2017), medium-term (2013–2017), and long-term (2004–2017) results, we discovered that investment in coal industry development can take immediate effect within one year to improve CRS. This effect will be compromised in later years by changes in the other indexes. However, the positive impact of investment in environment sustainability is stable. In a word, the government can indirectly control CRS by adjusting the amount of investment in the coal industry. Environmental protection has a positive and stable effect on the safety of coal resources. Therefore, we should constantly increase investment in environmental protection and promote environmental protection policies.
Additionally, we adjust the indicator system of CRS to accommodate provincial data issues. We evaluated and ranked the degrees of provincial CRS with data from 2012 to 2016. It is surprising to find significant differences in CRS between provinces with similar coal reserve levels. For provinces with rich coal reserves, extra attention should be paid to setting up an efficient intervention system within the region and more investment in their transportation network. For those with low coal reserves but high coal demand, government restrictions on coal import should be lowered, especially during peak seasons of coal use.
Our article has some limitations. First, our data set is too small, and therefore, the time segments for analysis are too short. It will take a longer time to verify the results. Second, the CRS degrees we calculated are a function of the distance to the ideal target, and its size has practical significance only in a limited context. Third, this paper is too conservative in the selection of indicators, which may affect the effectiveness of the results. In the future, we need to improve or change the model to solve this problem.

Author Contributions

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

Funding

This work is supported by the Major Program of National Social Science Foundation of China No.18ZDA079 and the National Key R&D Program of China, 2018YFF0214804.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. Normalized input variables.
Table A1. Normalized input variables.
Index20172016201520142013201220112010200920082007200620052004
Input dataN10.3633 0.2751 0.2322 0.1991 0.1687 0.1160 0.0000 0.5232 0.8488 0.9079 0.9078 0.9682 0.9613 1.0000
N20.23220.19910.16870.11600.00000.52320.84880.90790.90780.96820.96131.00000.97420.9541
N31.00000.97260.87270.95920.94750.80840.55910.51170.30010.13500.12740.05330.00000.0506
N40.41840.50160.70860.85350.96631.00000.90110.66120.50570.36510.23810.16420.10100.0000
N50.97721.00000.98910.94780.84890.71040.61350.55750.47260.34900.24450.17060.10660.0000
N60.00000.07960.31300.50860.74590.98211.00000.71000.57200.49440.37940.31550.24350.0757
N70.00000.13280.57410.64140.68200.72520.78350.76430.78130.84370.92951.00000.97700.8051
N80.46930.64750.58621.00000.77040.17770.10650.07020.13870.19010.20490.13990.10850.0000
N90.67470.00000.35620.40660.56200.55740.81960.73680.67970.60790.69030.71440.90091.0000
N100.75690.69580.87740.94601.00000.98430.88650.70500.53590.42140.34410.24150.13070.0000
N110.91550.91050.94010.98601.00000.95360.92210.73660.66200.56630.53740.38330.23100.0000
N120.00000.03230.15380.35920.56430.55160.85130.65590.75610.55501.00000.97370.90060.8652
N130.00000.13440.27270.42980.57850.66940.80990.72730.92560.91741.00000.99170.99170.8099
N140.10500.24670.06120.00000.09080.32350.32620.44020.70310.69610.75760.82280.90741.0000
N150.85890.69990.91541.00000.89970.62210.61350.46310.19340.20070.14350.09300.03700.0000
Target dataCRS
degree
0.39220.37980.36340.37210.43190.46460.47630.48770.54610.56090.57200.50660.54070.4988c

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Figure 1. Evaluation of coal resources security degree in China during 2004–2017.
Figure 1. Evaluation of coal resources security degree in China during 2004–2017.
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Figure 2. Single-term, medium-term, and long-term average sensitivities of every indicator in the national CRS system.
Figure 2. Single-term, medium-term, and long-term average sensitivities of every indicator in the national CRS system.
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Figure 3. Weights of indicators in our provincial CRS system during 2012–2016.
Figure 3. Weights of indicators in our provincial CRS system during 2012–2016.
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Figure 4. Graphical distribution of provinces based on CRS degree. (Provinces are divided into three categories. The provinces that rank in the top 15 for five consecutive years are marked dark green, the provinces that rank in the bottom 10 for five consecutive years are marked yellow, and the rest are marked medium green.).
Figure 4. Graphical distribution of provinces based on CRS degree. (Provinces are divided into three categories. The provinces that rank in the top 15 for five consecutive years are marked dark green, the provinces that rank in the bottom 10 for five consecutive years are marked yellow, and the rest are marked medium green.).
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Table 1. The indicator system of national coal resource security (CRS).
Table 1. The indicator system of national coal resource security (CRS).
TargetSubsystemPrimary IndicatorSecondary IndicatorsImpact Direction
National CRSLong-term CRSCoal ReservesN1: Proved coal reserves+
N2: Base coal reserves+
Development level of Coal IndustryN3: Output of special mining equipment +
N4: Investment in coal mining industry+
N5: Energy industry investment+
N6: The ratio of coal mining industry investment in the total energy industry investment+
Environment sustainabilityN7: SO2 emission
N8: Investment in waste gas treatment projects+
Short-term CRSCoal supplyN9: Elasticity coefficient of coal production+
N10: Coal production+
Coal demandN11: Coal consumption
N12: The ratio of Thermal power generation to the total power generation
N13: The ratio of coal consumption to domestic energy
Coal import and exportN14: Coal self-sufficiency ratio +
N15: Net coal import
Table 2. The indicator system of provincial CRS.
Table 2. The indicator system of provincial CRS.
TargetSubsystemPrimary IndicatorSecondary IndicatorsImpact Direction
Provincial CRSLong-term CRS Coal ReservesM1: Base coal reserves+
Development level of Coal IndustryM2: The ratio of coal mining industry investment to the total energy industry investment+
M3: The ratio of the fixed assets investment of state-owned coal mining industry to the total investment of state-owned economic energy+
Environment sustainabilityM4: SO2 emission
Short-term CRSCoal demandM5: The total amount of coal transfer
M6: The ratio of Thermal power generation to the total power generation
M7: Coal consumption
Coal supplyM8: Coal production+
M9: The total amount of coal available for deployment+
M10: The outward allocation of coal+
Coal import and exportM11: Net coal import
Table 3. Weight, positive solution, and negative solution of indicators in national CRS system.
Table 3. Weight, positive solution, and negative solution of indicators in national CRS system.
IndexWeightPositive Ideal SolutionNegative Ideal SolutionIndexWeightPositive Ideal SolutionNegative Ideal Solution
N10.03000.9862−2.6474N90.03241.52032.5005
N20.07210.95021.5892N100.05471.17471.8295
N30.10191.19701.3033N110.04042.20880.9646
N40.06701.21211.6103N120.06431.73191.2183
N50.06701.42591.5917N130.04911.98451.0164
N60.07831.69641.4366N140.09111.55941.3440
N70.03832.36821.0711N150.09601.32511.4272
N80.11722.17591.0682
Table 4. The Euclidean distance D+ from the primary indicator to its positive ideal solution.
Table 4. The Euclidean distance D+ from the primary indicator to its positive ideal solution.
YearCoal ReservesDevelopment Level of Coal IndustryEnvironment SustainabilityCoal DemandCoal SupplyCoal Import and Export
20170.67060.97530.34740.34100.08461.1516
20160.34540.80330.16120.34590.56950.7921
20150.37420.42500.36070.40570.22451.2863
20140.42090.20120.18660.54950.18591.4952
20130.52700.06430.27600.73320.10051.2235
20120.17570.06841.07270.73860.10270.6330
20110.10020.20971.26321.04180.02340.6224
20100.02430.39111.33150.69560.07930.3966
20090.00600.75041.19210.87750.16000.0948
20080.00121.14531.13210.67530.24580.1002
20070.00151.44001.17181.11980.26260.0601
20060.00011.72461.36611.02570.32680.0304
20050.00041.99621.41340.91100.37820.0076
20040.00102.37501.52770.70920.49380.0040
Table 5. Rankings of the provincial CRS degree from 2012 to 2016.
Table 5. Rankings of the provincial CRS degree from 2012 to 2016.
Province20122013201420152016
Beijing1815221313
Tianjin2321272019
Hebei2526152626
Shanxi11111
Inner Mongolia22222
Liaoning2730253029
Jilin2025242422
Heilongjiang1722132117
Shanghai2423262224
Jiangsu3131303131
Zhejiang2927282728
Anhui57655
Fujian2218211521
Jiangxi1917192320
Shandong2828172930
Henan161971225
Hubei2624312523
Hunan1411111010
Guangdong3029292827
Guangxi Zhuang Autonomous Region2120231918
Hainan1212201112
Chongqing1113161415
Sichuan1516141616
Guizhou65544
Yunnan969914
Tibet Autonomous Region10101866
Shaanxi33333
Gansu13141089
Qinghai881278
Ningxia Hui Autonomous Region4441711
Xinjiang Uygur Autonomous Region798187

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Yang, Y.; Zheng, X.; Sun, Z. Coal Resource Security Assessment in China: A Study Using Entropy-Weight-Based TOPSIS and BP Neural Network. Sustainability 2020, 12, 2294. https://doi.org/10.3390/su12062294

AMA Style

Yang Y, Zheng X, Sun Z. Coal Resource Security Assessment in China: A Study Using Entropy-Weight-Based TOPSIS and BP Neural Network. Sustainability. 2020; 12(6):2294. https://doi.org/10.3390/su12062294

Chicago/Turabian Style

Yang, Yuexiang, Xiaoyu Zheng, and Zhen Sun. 2020. "Coal Resource Security Assessment in China: A Study Using Entropy-Weight-Based TOPSIS and BP Neural Network" Sustainability 12, no. 6: 2294. https://doi.org/10.3390/su12062294

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