| Literature DB >> 34070151 |
Yonglin Li1,2, Zhili Zuo1,2, Deyi Xu1,2, Yi Wei1.
Abstract
The mining industry is one of the pillar industries of Guangxi's economic and social development. The output value of mining and related industries accounts for 27% of the whole district's total industrial output value. Therefore, the mining eco-efficiency measurement in Guangxi can be of great significance for the sustainable development of Guangxi's mining industry. This study adopted Meta-US-SBM to measure the mining eco-efficiency in Guangxi from 2008 to 2018, including economic efficiency, resource efficiency, and environmental efficiency. It used the standard deviation ellipse model to simulate the migration trend of four efficiencies in Guangxi and used GeoDetector and Tobit models to explore the internal and external factors that affect the mining eco-efficiency. The four efficiencies in Guangxi show large temporal and spatial heterogeneity, and the internal and external factors that affect the mining eco-efficiency are different. The following conclusions can be drawn. (1) Environmental efficiency and mining eco-efficiency are improving, while economic efficiency and resource efficiency are deteriorating. Cities bordering other provinces have a significantly better mining eco-efficiency than non-bordering cities. (2) The development center in Guangxi has migrated to the Beibu Gulf Economic Zone. (3) Natural resources index and mining economic scale have a great impact on the mining eco-efficiency, and with the increase of the mining economic scale, the mining eco-efficiency showed a typical "U-shaped" curve. Finally, this study put forward corresponding policy recommendations to improve the mining eco-efficiency in Guangxi from four aspects: opening-up, technological progress, regional coordination, and government control.Entities:
Keywords: GeoDetector; Guangxi; Meta-US-SBM; Tobit Model; mining eco-efficiency; standard deviation ellipse model
Year: 2021 PMID: 34070151 PMCID: PMC8158517 DOI: 10.3390/ijerph18105397
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Summary of DEA applications to eco-efficiency.
| Reference | Research Object | Inputs | Desirable Outputs | Undesirable Outputs | Methodology |
|---|---|---|---|---|---|
| Zhang et al. [ | Regional industrial systems’ eco-efficiency in China | Water resource | Value-added to industry | COD discharge | CCR |
| Shao et al. [ | Eco-efficiency of China’s industrial sectors | Energy | Industrial value-added | CO2 | Two-stage DEA |
| Huang et al. [ | Composite eco-efficiency in 30 provinces | Energy | GDP | Pollution index | Meta-US-SBM |
| Zhang et al. [ | Industrial eco-efficiency in China | Capital, | The gross industrial output value | -- | Three-stage DEA |
| Wu et al. [ | Eco-efficiency of coal-fired power plants in China | Water | Electricity generated | CO2 emissions | Super efficiency DEA |
| Yu et al. [ | Eco-efficiency of 191 prefectural-level cities in China | Energy | GDP | Environmental pollution index | Meta-US-SBM |
| Masuda [ | Eco-efficiency of wheat production in Japan | Global warming potential | Wheat yield | -- | SBM-Window-DEA |
| Hu et al. [ | Eco-efficiency of centralized wastewater treatment plants in 128 Chinese industrial parks | Investment | COD removal efficiency | -- | SBM-DEA |
| Hu and Liu [ | Eco-efficiency in the Australian construction industry | Number of employed persons | Gross value added | CO2 equivalent | SBM-DEA |
| Liu et al. [ | Eco-efficiency of coal-fired power plants in China | Generator capacity | Net generation | -- | CCR |
| Zhang et al. [ | Eco-efficiency in 102 countries | Land area | GDP | CO2 emissions | Two-stage Super-SBM |
| Robaina-Alves et al. [ | Eco-efficiency in 27 European countries | Energy | GDP | Greenhouse gas emissions | A new stochastic frontier model |
| Yang and Zhang [ | Regional eco-efficiency in 30 provinces | Capital stock | GDP | Solid waste emissions | Global DEA |
Note: Cooper–Charnes–Rhodes (CCR), Banker–Charnes–Cooper (BCC), Meta-frontier undesirable outputs super efficiency SBM (Meta-US-SBM).
Figure 1Location of the study area.
Figure 2Research framework.
The selection of input indicators and output indicators.
| Type | Indicator | Unit | Obs. | Min. | Max | Mean | Std. Dev. | |
|---|---|---|---|---|---|---|---|---|
| Input | Labor | Labor force | Person | 154 | 883 | 35,156 | 8397.92 | 6783.06 |
| Capital | Annual investment in mining | 10,000 yuan | 154 | 1686.00 | 4,070,893.49 | 65,993.92 | 328,381.88 | |
| Natural resources index | Mining water consumption | 100 million m3 | 154 | 2.02 | 2116.32 | 140.65 | 294.78 | |
| Use area of the mining area | hectares | 154 | 114.48 | 28,451.7 | 4296.26 | 4606.62 | ||
| Comprehensive energy consumption of mining industry | 10,000 tons of SCE | 154 | 0.10 | 22.06 | 3.43 | 3.46 | ||
| Output | GMP | Gross mining output | 10,000 yuan | 154 | 4324.50 | 1,375,290.86 | 140,291.87 | 13,671.29 |
| Undesirable output | Mining environmental pollution index | Mining wastewater discharge | 10,000 tons | 154 | 4.07 | 7822.18 | 463.16 | 1097.564 |
| Mining dust emissions | ton | 154 | 5.037 | 23,210.37 | 876.39 | 2056.80 | ||
| Waste rock emissions | 10,000 tons | 154 | 0.01 | 675,166.00 | 4580.26 | 54,391.46 |
Figure 3The average value of the eco-efficiency in Guangxi.
Figure 4Regional distribution of mining eco-efficiency, economic efficiency, environmental efficiency, and resource efficiency in 2008 and 2018.
The average value and ranking of the eco-efficiency by region.
| Prefecture-Level Cities | Economic Efficiency | Rank | Environmental Efficiency | Rank | Resource Efficiency | Rank | Mining Eco-Efficiency | Rank |
|---|---|---|---|---|---|---|---|---|
| Baise | 0.9052 | 7 | 0.8318 | 6 | 0.8332 | 8 | 0.7012 | 6 |
| Beihai | 1.1352 | 1 | 0.8683 | 3 | 1.3417 | 1 | 1.0493 | 1 |
| Chongzuo | 1.0242 | 3 | 0.8379 | 5 | 0.9836 | 2 | 0.9484 | 3 |
| Fangchenggang | 0.9238 | 5 | 0.8505 | 4 | 0.9162 | 4 | 0.6869 | 7 |
| Guigang | 0.7027 | 13 | 0.4916 | 13 | 0.6113 | 11 | 0.4839 | 10 |
| Guilin | 1.1166 | 2 | 0.9847 | 1 | 0.8969 | 5 | 1.0125 | 2 |
| Hechi | 0.7332 | 11 | 0.4632 | 14 | 0.6098 | 12 | 0.5769 | 9 |
| Hezhou | 0.7834 | 8 | 0.5038 | 12 | 0.9593 | 3 | 0.6055 | 8 |
| Laibin | 0.4399 | 14 | 0.5543 | 11 | 0.2606 | 14 | 0.1771 | 14 |
| Liuzhou | 0.7117 | 12 | 0.5827 | 10 | 0.7563 | 10 | 0.4399 | 13 |
| Nanning | 0.7796 | 9 | 0.6345 | 8 | 0.8236 | 9 | 0.4807 | 12 |
| Qinzhou | 0.7629 | 10 | 0.6254 | 9 | 0.5799 | 13 | 0.483 | 11 |
| Wuzhou | 0.9157 | 6 | 0.8927 | 2 | 0.8918 | 6 | 0.7109 | 5 |
| Yulin | 0.9399 | 4 | 0.6932 | 7 | 0.8633 | 7 | 0.7451 | 4 |
Changes of elliptical parameters of standard deviation from 2008 to 2018.
| Mining Eco-Efficiency | Economic Efficiency | |||||
|---|---|---|---|---|---|---|
| Year | Center | Long and short axis ratio | Rotation | Center | Long and short axis ratio | Rotation |
| 2008 | 109.12° E, 23.76° N | 0.617 | 74.213 | 109.12° E, 23.58° N | 0.678 | 70.063 |
| 2018 | 109.09° E, 23.07° N | 1.180 | 92.896 | 109.14° E, 23.16° N | 0.792 | 75.551 |
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| Year | Center | Long and short axis ratio | Rotation | Center | Long and short axis ratio | Rotation |
| 2008 | 108.99° E, 23.61° N | 0.615 | 69.918 | 109.15° E, 23.58° N | 0.609 | 71.736 |
| 2018 | 109.23° E, 23.42° N | 0.752 | 69.335 | 109.09° E,22.97° N | 0.871 | 63.816 |
Figure 5Standard deviational ellipses of mining eco-efficiency in Guangxi.
The q statistics of external factors based on GeoDetector.
| Period | X1 | X2 | X3 | X4 | X5 |
|---|---|---|---|---|---|
| 2008–2018 | 0.011 | 0.101 | 0.121 | 0.067 | 0.065 |
| 2008–2013 | 0.012 | 0.009 | 0.051 | 0.011 | 0.010 |
| 2014–2018 | 0.100 | 0.129 | 0.318 | 0.164 | 0.147 |
Note: X1 represents Capital, X2 represents Labor, X3 represents Natural resources index, X4 represents GMP, X5 represents Mining environmental pollution index.
Tobit regression results for external driving forces of mining eco-efficiency.
| Variable | Model (1) | Model (2) |
|---|---|---|
| MES | 2.117 * | −6.383 |
| (1.757) | (5.110) | |
|
| 57.226 * | |
| (32.418) | ||
| lnFDI | 0.209 *** | 0.257 *** |
| (0.047) | (0.054) | |
| TI | 0.419 * | 0.419 |
| (0.829) | (0.819) | |
| ER | 0.360 * | 0.322 * |
| (0.244) | (0.243) | |
| cons | −0.205 | −0.289 |
| (0.239) | (0.241) |
Note: ∗ and ∗∗∗ were shown to be significant at 0.1 and 0.01 levels.