1. Introduction
Mining plays an important role in promoting China’s economic transformation and sustainable and efficient development. With the advancement of reforms and opening up, the country’s gross national product (GDP) has maintained rapid growth. Its proven mineral resources account for about 12% of the world’s total, ranking third, and 158 kinds of minerals have been found throughout the country. According to its proven reserves, 25 of China’s 45 major minerals rank in the top three globally, of which 12 are rare earth, gypsum, vanadium, titanium, tantalum, tungsten, bentonite, graphite, Glauber’s salt, barite, magnesite, and antimony. China is certainly one of the few countries in the world with abundant mineral resources, a broad range of mineral resources, and supportive service facilities around mining areas, such as water (water source), electricity, roads, etc. As an important non-petroleum mineral resource, coal made up around 60% of mining in 2017, and although its proportion within total energy consumption has gradually fallen, it still plays an important role in China’s energy supply. At present, over 95% of energy, over 80% of industrial raw materials, and over 70% of the agricultural means of production come from mineral resources. This shows how mining and the development of mines provide the necessary material basis and resource guarantee for the development of China’s economy and help improve the employment level and income level of its citizens. Therefore, its government should pay particular attention to the improvement of mining input–output efficiency.
The process of mining not only leads to the destruction of land, but also to the damaging of property and loss of life [
1]. In China’s pursuit of mining production, it must consider the rehabilitation of destructed land caused by mining. For example, for the period 2012–2017, the accumulated destructed or occupied land totaled over 2 million hectares. In 2013, Inner Mongolia saw 50 million hectares of land occupied or destroyed during the mining process, which is about 100 times higher than that in 2012. In 2013, the accumulated destructed or occupied land in all provinces of China increased by about 17 times, compared with that in 2012, while non-petroleum mineral resources’ production in the same year showed a downward trend. This shows that the contradiction between mineral exploitation and land destruction caused by mining is becoming increasingly fiercer.
Starting with the outline of the 13th five-year plan, China’s economic path has changed from high-speed development to high-quality development, among which investment in the mining industry continues to decline, while land protection requirements for resource exploitation are increasing. In 2016–2017, the area of rehabilitation due to mining in China increased by over 80%. Driven by government policies, land destructed or occupied by mining in China is being alleviated. President Xi Jinping pointed out at the 19th Communist Party of China (CPC) National Congress, on October 18, 2017, that the country should target harmonious coexistence between mankind and nature and practice the concept of “Clear waters and green mountains are as good as mountains of gold and silver”. On August 31, 2018, the 5th Session of the 13th National People’s Congress (NPC) passed a law for the People’s Republic of China, on the prevention and control of soil pollution, which regulates prevention and protection, risk control and repair, and guarantee and supervision. Among them, risk control and restoration are distinguishable between agricultural land and construction land. On April 27, 2019, the Office of the Work Safety Committee of the State Council issued a notice on the closure of non-coal mines that do not meet specific conditions for safe production. The notice pointed out that the task of ensuring the closure of over 1000 non-coal-mine mountains (including tailings ponds) that do not meet such requirements is to be completed in 2019, so as to prevent and defuse major safety risks at the source. For land-destruction problems caused by mining, the government uses administrative means to further strengthen land protection. When insisting upon sustainable development, China should focus on both the economic output brought by mining and the land rehabilitation after mining. Problems and solutions to this process have led to extensive investigation by Chinese scholars.
As the material basis for the survival of a country, land resources are also affected by natural factors, such as changes in weather and climate patterns. In northern mines, climate factors have an important impact on open-pit mining and land restoration—for example, (1) the difficulty of mining equipment maintenance increases in winter; (2) in freezing winter, permafrost and other factors can negatively impact mining; and (3) during mining restoration, a cold climate aggravates the process, while high temperatures in summer affect and interfere with vegetation restoration in the process of land restoration. Therefore, when exploring the overall efficiency of mining production and land rehabilitation, climate factors, as external variables, become interference factors to mining and land rehabilitation.
To fully understand the problems existing in the mining process in China, one must explore the amount of mineral resources and the degree of land destruction during the process, as well as the efficiency of land rehabilitation. By finding the weak link of low efficiency, provinces in China can then implement practical policies by using existing resources that promote a balance between mining and land protection. Data envelopment analysis (DEA) is a relatively effective method for evaluating the efficiency of decision-making units (DMU) and has been widely used in different industries and departments, as it has a stronger advantage in dealing with multi-index inputs and multi-index outputs, making it a favorite of many scholars around world and suitable for this research topic.
Most studies in the existing literature on industrial environmental pollution are from the perspective of macro-environmental pollution, or they separately analyze coal among mining resources. In general, scholars have used one-stage DEA to look into the damage to land caused by mining. Based on the dynamic two-stage directional distance function DEA model under the exogenous variables model, this paper studies 29 provinces of China (not including Tibet and Shanghai, due to a lack of data, and excluding Hong Kong, Macao, and Taiwan). This paper calculates the overall efficiencies of mining production and land rehabilitation and the efficiency of each stage for 2014–2017 and also studies the efficiency of each variable on mining production and land rehabilitation, so as to put forward specific suggestions for each province’s own situation that can improve mining production and land destruction efficiencies.
This paper’s contribution to the development and improvement of China’s mining areas mainly includes the following points. First, it is a pioneer research that explores mining production and land destruction in 29 provinces of China, from the national level. In the mining production stage, fixed assets’ investment stock and mining employees are regarded as the input variables, non-petroleum mineral resources are the desirable output, and accumulated destruction of land area is the undesirable output. On this basis, the accumulated destruction of land area is the intermediate variable of the two stages. In the land rehabilitation stage, rehabilitation investment is the input variable, and rehabilitation of land area is the output variable. Second, by comparing mining production and land rehabilitation efficiency of 29 provinces in China, this paper observes the overall efficiency for each year and each stage, demonstrating the contribution and misappropriation of various variables in each region to total efficiency. Third, we discuss the characteristics and numerical fluctuations of the mining production stage and land rehabilitation stage from a local perspective and put forward specific suggestions for the efficiency changes of each province, providing guiding opinions for the sustainable development of China’s mining industry. Fourth, this paper introduces local annual temperature as an exogenous variable, and by adding this, the influence of temperature changes in the mining area can be taken into account and therefore help provide a reasonable conclusion for the evaluation of a mining area.
3. Model and Method
The DEA model can be divided into radial DEA model and non-radial DEA model. In the case of Charnes et al. with fixed returns to scale, the CCR model is proposed, and Banker et al. then replaced the constant returns to scale (CRS) BCC model with variable returns to scale (VRS) [
31,
32]. The non-radial DEA model is represented by the slack-based measure (SBM) model proposed by Tone [
33]. In addition to the CCR, BCC, and SBM models, Chung et al. set up the directional distance function ray DEA model, with the direction vector composed of input direction vector and output direction vector. The direction vector values of different input and output indicators represent their degrees of relative priority (or importance). This model can also be applied to undesirable output and has been applied to the fields of energy, environment, and ecology. However, Chung et al. proposed the concept of the radial distribution function (RDF), which is an extended RDF [
34]. The traditional directional distance function (DDF) is a ray measurement model, but efficiency calculation fails to cover all non-zero margins, meaning all inefficient sources are covered. Therefore, the efficiency value is overestimated, and non-radial DDF has the advantage of being a pragmatic measure of manufacturers’ operational efficiency. In order to solve this kind of problem, Fare and Grosskopf established a non-directed distance function that is better than other methods, because it provides a more reasonable and accurate estimate [
35].
When traditional DEA is evaluated for efficiency, it transforms the efficiency between the two variables through input and output projects, and the conversion process is identified as a “black box”. Fare et al. considered that the production process is composed of multiple production technologies, and a sub-production technology is regarded as a sub-DMU, and hence the efficiency of each sub-process can be analyzed [
36]. Chen and Zhu, Kao and Hwang, and Kao linked all stages through some intermediate outputs [
37,
38,
39]. By linking the stages in this way, they calculated the efficiencies of each stage under different conditions. After Fare et al., Tone and Tsutsui put forward the weighted slack-based measures model [
40]. The analysis basis of the network DEA model takes the linkage among departments of decision-making units and regards each department as a sub-DMU, to find the optimal solution. In the network DEA model, the dynamic method is also allowed, in which DMUs are evaluated at different periods of time, and a carryover is introduced to connect different stages of DMUs in different periods [
41]. In the development of dynamic DEA, Klopp proposed window analysis and first used dynamic analysis [
42]. Fare and Grosskopf were the first to put interconnecting activities into the dynamics, while Fare and Grosskopf presented dynamic DEA modification and extension [
43,
44]. Following Fare et al., Tone and Tsutsui extended the model to a dynamic analysis of a slacks-based measure [
36,
41]. Tone and Tsutsui once again proposed the weighted SBM dynamic network DEA model, taking the linkage among departments of decision-making units as the analysis basis of the network DEA model and regarded each department as a sub-DMU, with carryover activities as the linkage [
45].
In this paper, we consider the influence of exogenous variables of climate change on the efficiency of mining and land destruction. Therefore, we refer to the concept of a dynamic two-stage model and add the DDF model, to consider the exogenous variables for climate change. Thus, to solve the shortage of static one-stage and exogenous variables, this paper proposes the dynamic two-stage directional distance function DEA, model under exogenous variables. At the same time, to fully understand the overall picture of industrial operation performance and avoid the underestimation or overestimation of efficiency value and improvement space, an empirical study of the new model considers the impact of average temperature change on mining production and land destruction efficiency. Below, we propose the dynamic two-stage DDF, considering exogenous variables for climate change.
3.1. Dynamic Two-Stage DDF with Exogenous Variables
Suppose DMU has two stages (mining production stage and land rehabilitation stage) in each time period t
. The mining production stage has M inputs
, D intermediate products
, and K desirable outputs
The land rehabilitation stage includes G inputs
and S desirable outputs
|
: the carryover variable; |
V: external variables; |
: the inputs of mining production are mining employees |
: the link between the mining production stage and land rehabilitation stage, which is accumulated destruction land area; |
: the output of mining production, which is production of non-petroleum mineral resources; |
: the input of land rehabilitation stage is rehabilitation investment; |
: rehabilitation of land area; |
: fixed assets investment stock; |
: average temperature |
S.T. is the constraints:
Mining production stage | Land rehabilitation stage |
| |
| |
| |
| |
| |
The exogenous variables are as follows:
The link between the two stages is as follows:
The link between the two periods is as follows:
Among them, is the weight assigned to time period, t; and and are the weights assigned to the mining production stage and land rehabilitation stage in time period, t, respectively. Therefore, for each time period (t), .
We can calculate the following four efficiency groups through the linear programming formula in Equations ((5)–(8)).
The efficiency of the mining production stage is as follows:
The efficiency of the land rehabilitation stage is as follows:
The period efficiency value is as follows:
To evaluate the overall efficiency of each period,
T, of the DMU being evaluated in this group, we express it as follows:
The DMU’s overall efficiency is evaluated in this group and is given by the weighted sum of periodic efficiency on t, which can be expressed as:
3.2. Input, Desirable Output, and Undesirable Output Efficiency
We use Hu and Wang’s total-factor energy-efficiency index to overcome any possible biases in the traditional energy efficiency indicators, for which there are four key efficiency models: production of non-petroleum mineral resources, accumulated destruction of land area, rehabilitation investment, and rehabilitation of land area [
46]. “
I” represents area, and “
t” represents time. The efficiency models are defined in the following:
If the target inputs equal the actual inputs, then the efficiencies are 1 and indicate overall efficiency; however, if the target inputs are less than the actual inputs, then the efficiencies are less than 1 and indicate overall inefficiency.
If the target desirable outputs are equal to the actual desirable outputs, then the efficiencies are 1 and indicate overall efficiency; however, if the target desirable outputs are more than the actual desirable outputs, then the efficiencies are less than 1 and indicate overall inefficiency.
If the target undesirable outputs are equal to the actual undesirable outputs, then the efficiencies are 1 and indicate overall efficiency; however, if the target undesirable outputs are less than the actual undesirable outputs, then the efficiencies are less than 1 and indicate overall inefficiency.
5. Conclusion and Policy Recommendations
5.1. Conclusions
This research uses the dynamic two-stage directional distance function DEA model, with environmental exogenous variables, to measure the mining production/land rehabilitation efficiencies of 29 provinces in China and arrived at the following conclusions.
The overall efficiencies of most provinces in China are in general below 0.5. Among them, the efficiencies of Tianjin, Inner Mongolia, and Heilongjiang reached the DEA optimal level, which closely relate to the distribution of local natural resources and policy guidance. The efficiencies of Anhui, Chongqing, Jiangsu, and Liaoning were relatively low. There was a big fluctuation in the efficiency of the land rehabilitation stage in the four years, but the average efficiency was slightly higher than that in the mining production stage. Thus, the fluctuation of land restoration efficiency should be reduced to make it grow steadily better. For the process of demand-and-supply transformation of the mining industry, China still faces greater risks and problems that must be improved.
By comparing the efficiencies of the mining production stage and the land rehabilitation stage, we find that the efficiency of the former is relatively low. Thus, mining efficiency should urgently be improved in order to promote the overall efficiency of a region.
The efficiency distribution of China’s provinces is not uniform, which relates to regional policy and resource distribution. For overall efficiency levels, Jiangsu, Anhui, Shaanxi, and Chongqing are lower, while Inner Mongolia, Heilongjiang, and Tianjin are higher.
This paper employs a theoretical analysis of 29 provinces’ mining efficiency in China. The aim is to effectively guide each province in mining and rehabilitation and to deal with the lack of specialization in China for this sector, presently and in future. While this research paper’s sample selection is scientific and objective, it fails to fully simulate the various emergencies of mining and land restoration.
5.2. Policy Recommendations
Due to the great difference between the resource distribution and efficiencies of provinces in China, the projects for improving the efficiency level of each province are different. Thus, corresponding policies need to strengthen these efficiencies. Based on the development efficiency for the period 2014–2017, the following suggestions are made.
5.2.1. Integrate Mining Resources
Through the market guidance mechanism, developed provinces should be able to control their mining output and promote the sustainable development of mining areas. Speeding up the business of mining area integration can help to gradually replace the situation of decentralized mining of small- and medium-sized mines in China. Integrating regional resources can spur a region to achieve a good state of economies of scale and scope. By integrating resources, mining areas with similar resource reserves and quality can share technology, machinery, and equipment and thus reduce repeated investment in fixed assets. This is also conducive to the spillover effect in the land rehabilitation stage, so that mining areas with a similar environment and damage conditions can reduce rehabilitation investment and obtain better rehabilitation of land area. China should continue to promote the improvement of efficiency in the land rehabilitation stage. Provinces with low efficiency levels, like Shaanxi, can learn from provinces with a similar climate environment and mining-area types, introduce advanced mining and land rehabilitation technology locally, and implement technology improvement so as to increase their level of efficiency. The government should strengthen with the surrounding water, circuit, and other infrastructure. On the premise of not affecting the life of residents around the area, the government can give priority to providing cheap hydropower resources and mine-road subsidies for mining areas. Integration of surrounding infrastructure can achieve the purpose of resource integration around a mining area.
5.2.2. Eliminate Backward Capacity and Technology
Mining firms can phase out backward production capacity and replace old existing fixed assets by introducing high-tech mining machines and accessories. At the same time, they can set up corresponding research bases according to the unique situation locally, increase R&D investment, strengthen their scientific and technological levels, change from rough mining to scientific mining, and conform to the trend of high-quality development in China. In addition, a special group for land rehabilitation should set up a scientific and technological research base. By analyzing the local mining environment and soil conditions, damaged or occupied land can be restored into a historical mining park or reclaimed as cultivated land, in order to give full play to the residual value of damaged soil. Such actions can strengthen the efficiency of the land rehabilitation stage.
In view of the amount of seriously damaged land, biochemical measures should be introduced in each area, to gradually repair damaged land and improve the environment of mining areas by building a stable ecosystem. For the mountainous provinces of Guizhou, Sichuan, and Chongqing, environmental restoration should be planned according to the geological conditions of mines in each area. For the land restoration of mining areas in mountainous regions, crops with economic value and in line with China’s market, such as artemisia argyi or Conyza canadensis (L.) Cronq., can be selected as vegetation restoration options in the southwest part of the country. Depending on varying slopes, different vegetation can be adopted to firm up the slopes and prevent the occurrence of landslides, so as to ensure smooth mining and land restoration. For winter freezing conditions in areas like Xinjiang, Heilongjiang, Jilin, Liaoning, and Inner Mongolia, it is necessary to solve the problem of frozen soil. By introducing new winter mining technology, the impact of bad weather on mining should be able to slow down. For the current operation of mining machines, it is possible to retrieve the braking and driving devices of crushers or excavators and clean their internal widgets after each use, especially those that are easily damaged by freezing. Mining firms must pay attention to the temperature while cleaning and check whether the widgets are leaking.
5.2.3. Strengthen Government Administrative Measures
For serious damage caused by mining, local governments should intervene in administrative management and guide the coordinated development of mining production and land rehabilitation. National and local people’s congressional bodies should enhance the laws and regulations on the examination and approval of mining licenses, the handling of safety production licenses, and the division of responsibility for mining accidents and further guide the coordinated development of regional production and environment. As to the mining sector, each province can give appropriate tax exemptions to mining enterprises that run under high efficiency and strong land rehabilitation efficiency according to the situation of their own conditions. Through the leading role of excellent mining enterprises, the efficiency of land rehabilitation can be improved. For some old mining areas that are short of funds, each province should set up special cash reserves that can support old mining areas to update their own equipment and strengthen their efficiency level. In order to improve the use of special funds for the environmental restoration of mining areas in each province, local governments should closely track the whereabouts of the funds and present restoration results in real time, thus curbing any misappropriation of money or financial corruption. Implementing these measures should help China clean up the land damage caused by mining in local mining areas and promote the improvement of overall efficiency in this important industrial sector.