| Literature DB >> 30400237 |
Qing Yang1, Lingmei Fu2, Xingxing Liu3, Mengying Cheng4.
Abstract
Poor public health is always associated with the mismanagement of municipal solid waste (MSW). Many cities are besieged by MSW in the world. It is essential to do a good job in MSW management (MSWM). In order to improve the efficiency of MSWM, the Chinese government has intensively implemented relevant policies. There are still few studies on MSWM efficiency in China. The research aims to comprehensively analyze MSWM efficiency, find high-efficiency MSWM policy implementation routes and the breakthrough on improving MSWM efficiency. To measure Chinese MSWM efficiency accurately, this paper introduced the three-stage data envelopment analysis (DEA) model into the research. According to the results of DEA, Fuzzy c-Means algorithm was used to the cluster analysis of 33 typical cities. After eliminating the interference of the external environment and random disturbance, the mean value of MSWM efficiency declined from 0.575 to 0.544. The mean of pure technical efficiency (PTE) was declined from 0.966 to 0.611, while the mean of scale efficiency (SE) increased from 0.600 to 0.907. The PTE of central and northeastern cities was relatively low. The SE of western cities was comparatively high and the efficiency distribution of the eastern region was relatively scattered. In general, MSWM efficiency is low and expected to be improved. Regional differences in MSWM efficiency have been shown. The management effectiveness of eight pilot cities (MSW classification) is affirmative but not that significant. To improve MSWM efficiency, differential management for four types of cities should be carried out.Entities:
Keywords: management efficiency; municipal solid waste; pilot cities; sustainable construction; three-stage data envelopment analysis
Mesh:
Year: 2018 PMID: 30400237 PMCID: PMC6266437 DOI: 10.3390/ijerph15112448
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1The framework of the established three-stage data envelopment analysis (DEA) model.
Indicator system for measuring the efficiency of municipal solid waste (MSW) classification.
| Indicators | Variables | Unit |
|---|---|---|
| Input indicators | Number of Vehicles and Equipment Designated for Municipal Environmental Sanitation (X1) | Number |
| Fixed Assets Investment in the Public Facilities of Municipal Environmental Sanitation (X2) | 10,000 RMB | |
| Output indicators | Quantity of MSW Collected and Transported (Y1) | 10,000 ton |
| MSW Harmless Treatment Rate (Y2) | Percentage | |
| Environmental indicators | Quantity of Patent Authorization (Z1) | Piece |
| Total Retail Sales of Social Consumer Goods (Z2) | 100,000,000 RMB | |
| Excellent Rate of Urban Air Quality (Z3) | Percentage |
Overview of 33 typical cities in 2016.
| City | UDRP 1 | X1 | X2 | NHTP/G 2 | HTP 3 | Y1 | QHT 4 | Y2 |
|---|---|---|---|---|---|---|---|---|
| Beijing *,5 | 2172.90 | 11,033 | 1,613,451 | 27 | 24,341 | 872.61 | 871.20 | 99.84 |
| (BJ) | ||||||||
| Shanghai * | 2419.70 | 7036 | 65,828 | 14 | 23,530 | 629.37 | 629.37 | 100 |
| (SH) | ||||||||
| Guangzhou * | 1759.49 | 4550 | 141,734 | 6 | 12,727 | 504.36 | 484.67 | 96.10 |
| (GZ) | ||||||||
| Shenzhen * | 1190.84 | 2456 | 102 | 8 | 14,025 | 572.28 | 572.28 | 100 |
| (SZ) | ||||||||
| Nanjing * | 703.05 | 1925 | 112,355 | 7 | 8950 | 212.72 | 212.72 | 100 |
| (NJ) | ||||||||
| Hangzhou * | 899.96 | 1484 | 350 | 6 | 6007 | 342.46 | 342.46 | 100 |
| (HZ) | ||||||||
| Xiamen * | 520.08 | 1028 | 50,002 | 5 | 3760 | 166.21 | 162.48 | 97.75 |
| (XM) | ||||||||
| Guilin * | 139.15 | 455 | 2496 | 1 | 1000 | 40.86 | 40.86 | 100 |
| (GL) | ||||||||
| Tianjin | 1360.43 | 4449 | 18,518 | 9 | 10,800 | 269.03 | 253.30 | 94.16 |
| (TJ) | ||||||||
| Shijiazhuang | 472.74 | 962 | 1937 | 6 | 4100 | 95.97 | 95.97 | 100 |
| (SJZ) | ||||||||
| Taiyuan | 387.00 | 2837 | 3859 | 2 | 4727 | 180.98 | 180.98 | 100 |
| (TY) | ||||||||
| Hohhot | 194.53 | 444 | 5784 | 2 | 1550 | 60.38 | 60.38 | 100 |
| Shenyang | 649.73 | 1931 | 30,771 | 3 | 5135 | 263.03 | 262.90 | 99.95 |
| (SY) | ||||||||
| Changchun | 479.19 | 4063 | 180 | 5 | 5593 | 194.89 | 175.93 | 90.27 |
| (CC) | ||||||||
| Harbin | 620.17 | 3118 | 6973 | 4 | 3380 | 163.00 | 142.23 | 87.26 |
| Hefei | 450.55 | 1920 | 27,943 | 2 | 4527 | 144.30 | 144.30 | 100 |
| (HF) | ||||||||
| Fuzhou | 275.41 | 608 | 4027 | 2 | 2850 | 108.24 | 107.16 | 99 |
| (FZ) | ||||||||
| Nanchang | 336.93 | 1261 | 6000 | 1 | 2380 | 96.07 | 96.06 | 99.99 |
| (NC) | ||||||||
| Jinan | 481.52 | 1651 | 18,303 | 3 | 3168 | 167.32 | 167.32 | 100 |
| (JN) | ||||||||
| Zhengzhou | 748.27 | 2846 | 15,015 | 2 | 4700 | 223.08 | 223.08 | 100 |
| (ZZ) | ||||||||
| Wuhan | 1121.62 | 8748 | 122,619 | 8 | 9650 | 356.29 | 356.29 | 100 |
| (WH) | ||||||||
| Changsha | 351.51 | 1592 | 29,030 | 1 | 7111 | 215.28 | 215.28 | 100 |
| (CS) | ||||||||
| Nanning | 539.78 | 4748 | 56,383 | 3 | 3400 | 107.31 | 106.28 | 99.04 |
| (NN) | ||||||||
| Haikou | 262.60 | 3603 | 745 | 2 | 3400 | 94.51 | 94.51 | 100 |
| (HK) | ||||||||
| Chongqing | 2907.38 | 3116 | 55,194 | 24 | 11,753 | 494.13 | 494.05 | 99.98 |
| (CQ) | ||||||||
| Chengdu | 940.54 | 2687 | 736 | 4 | 7800 | 350.96 | 350.96 | 100 |
| (CD) | ||||||||
| Guiyang | 319.00 | 1775 | 9182 | 2 | 3000 | 118.74 | 113.99 | 96 |
| (GY) | ||||||||
| Kunming | 443.41 | 1429 | 5113 | 6 | 5380 | 200.92 | 194.86 | 96.98 |
| (KM) | ||||||||
| Xi’an | 629.24 | 1916 | 20,771 | 4 | 9683 | 346.81 | 345.77 | 99.7 |
| (XN) | ||||||||
| Lanzhou | 268.85 | 1330 | 44,053 | 4 | 3114 | 96.08 | 32.43 | 33.75 |
| (LZ) | ||||||||
| Xining | 147.02 | 352 | 19,170 | 3 | 1360 | 56.16 | 53.56 | 95.36 |
| (XN) | ||||||||
| Yinchuan | 151.81 | 1033 | 400 | 2 | 2500 | 46.78 | 45.38 | 97 |
| (YC) | ||||||||
| Urumchi | 312.34 | 3279 | 39,118 | 2 | 3636 | 145.06 | 138.81 | 95.69 |
Note: 1 UDRP: Urban District Resident Population (10,000 persons); 2 NHTP/G: Number of Harmless Treatment Plants/Grounds; 3 HTP: Harmless Treatment Capacity (ton/day); 4 QHT: Quantity of Harmlessly Treated (10,000 ton); 5 Cities with “*” are pilot cities for MSW classification.
Descriptive summaries of inputs and outputs in 2016.
| Variable | Mean | St. Dev | Min | Max |
|---|---|---|---|---|
| X1 | 2778 | 2371.74 | 352 | 11,033 |
| X2 | 76,610.36 | 278,296.35 | 102 | 1,613,451 |
| Y1 | 240.49 | 190.83 | 40.86 | 872.61 |
| Y2 | 96.30 | 11.62 | 33.75 | 100 |
| Z1 | 20,482.48 | 23,911.34 | 829 | 100,578 |
| Z2 | 3343.56 | 2784.08 | 346.85 | 11,005.10 |
| Z3 | 74.36 | 16.27 | 43.44 | 99.40 |
Analysis tools used in the research.
| Analysis Tool | Inventor | Main Characteristics | Role in the Research |
|---|---|---|---|
| DEAP 2.1 | Tim Coelli | DEAP 2.1 is the computer program designed for DEA methods: CCR, BCC, the extension of CCR and BCC models, Malmquist. It does not need to be installed. Compared with MAXDEA, DEA-SOLVER, it is simpler and more convenient. | Analyzing the TE, PTE and SE of MSWM |
| Frontier 4.1 | Tim Coelli | Frontier 4.1 is a computer program. It does not need to be installed. It can provide maximum likelihood estimates of a wide variety of stochastic frontier production and cost functions. | Eliminating the influence of environmental factors and random errors |
| MATLAB R2017b | MathWorks | MATLAB R2017b is a strong functional software for matrix operation. It needs to be installed. It adds new important deep learning capabilities that simplify how engineers, researchers, and other domain experts design, train, and deploy models. | Clustering analysis of 33 typical cities |
The 33 typical cities in China before and after adjustment of municipal solid waste management (MSWM) efficiency.
| City | Stage 1 | Stage 3 | ||||||
|---|---|---|---|---|---|---|---|---|
| TE | PTE | SE | RTE | TE | PTE | SE | RTE | |
| Beijing *,1 | 0.339 | 1 | 0.339 | drs | 0.335 | 1 | 0.335 | drs 2 |
| (BJ) 3 | ||||||||
| Shanghai * (SH) | 0.384 | 1 | 0.384 | drs | 0.389 | 1 | 0.389 | drs |
| Guangzhou * | 0.476 | 0.961 | 0.496 | drs | 0.483 | 0.519 | 0.932 | drs |
| (GZ) | ||||||||
| Shenzhen * (SZ) | 1 | 1 | 1 | - | 0.917 | 1 | 0.917 | drs |
| Nanjing * | 0.506 | 1 | 0.506 | drs | 0.489 | 0.515 | 0.95 | drs |
| (NJ) | ||||||||
| Hangzhou * | 1 | 1 | 1 | - | 1 | 1 | 1 | - 4 |
| (HZ) | ||||||||
| Xiamen * | 0.766 | 0.977 | 0.784 | drs | 0.749 | 0.752 | 0.996 | irs 5 |
| (XM) | ||||||||
| Guilin * | 1 | 1 | 1 | - | 1 | 1 | 1 | - |
| (GL) | ||||||||
| Tianjin | 0.267 | 0.942 | 0.283 | drs | 0.26 | 0.262 | 0.991 | irs |
| (TJ) | ||||||||
| Shijiazhuang | 0.822 | 1 | 0.822 | drs | 0.515 | 0.633 | 0.815 | drs |
| (SJZ) | ||||||||
| Taiyuan | 0.346 | 1 | 0.346 | drs | 0.334 | 0.403 | 0.829 | drs |
| (TY) | ||||||||
| Hohhot | 1 | 1 | 1 | - | 1 | 1 | 1 | - |
| Shenyang | 0.607 | 0.999 | 0.607 | drs | 0.587 | 0.601 | 0.977 | drs |
| (SY) | ||||||||
| Changchun | 0.54 | 0.903 | 0.598 | drs | 0.485 | 0.537 | 0.903 | irs |
| (CC) | ||||||||
| Harbin | 0.26 | 0.873 | 0.298 | drs | 0.303 | 0.346 | 0.876 | irs |
| Hefei | 0.374 | 1 | 0.374 | drs | 0.353 | 0.391 | 0.902 | drs |
| (HF) | ||||||||
| Fuzhou | 1 | 1 | 1 | - | 1 | 1 | 1 | - |
| (FZ) | ||||||||
| Nanchang | 0.487 | 1 | 0.487 | drs | 0.47 | 0.665 | 0.706 | drs |
| (NC) | ||||||||
| Jinan | 0.49 | 1 | 0.49 | drs | 0.447 | 0.485 | 0.921 | drs |
| (JN) | ||||||||
| Zhengzhou | 0.361 | 1 | 0.361 | drs | 0.333 | 0.348 | 0.955 | drs |
| (ZZ) | ||||||||
| Wuhan | 0.176 | 1 | 0.176 | drs | 0.175 | 0.177 | 0.991 | drs |
| (WH) | ||||||||
| Changsha | 0.618 | 1 | 0.618 | drs | 0.596 | 0.627 | 0.951 | drs |
| (CS) | ||||||||
| Nanning | 0.125 | 0.99 | 0.126 | drs | 0.128 | 0.129 | 0.995 | drs |
| (NN) | ||||||||
| Haikou | 0.42 | 1 | 0.42 | drs | 0.67 | 0.67 | 1 | - |
| (HK) | ||||||||
| Chongqing | 0.682 | 1 | 0.682 | drs | 0.673 | 0.72 | 0.935 | drs |
| (CQ) | ||||||||
| Chengdu | 0.566 | 1 | 0.566 | drs | 0.522 | 0.525 | 0.995 | drs |
| (CD) | ||||||||
| Guiyang | 0.367 | 0.96 | 0.383 | drs | 0.391 | 0.404 | 0.968 | irs |
| (GY) | ||||||||
| Kunming | 0.662 | 0.97 | 0.683 | drs | 0.663 | 0.667 | 0.995 | irs |
| (KM) | ||||||||
| Xi’an | 0.784 | 0.997 | 0.786 | drs | 0.676 | 0.678 | 0.997 | drs |
| (XN) | ||||||||
| Lanzhou | 0.319 | 0.338 | 0.945 | drs | 0.288 | 0.388 | 0.742 | irs |
| (LZ) | ||||||||
| Xining | 1 | 1 | 1 | - | 1 | 1 | 1 | - |
| (XN) | ||||||||
| Yinchuan | 1 | 1 | 1 | - | 0.49 | 0.501 | 0.979 | irs |
| (YC) | ||||||||
| Urumchi | 0.219 | 0.957 | 0.229 | drs | 0.217 | 0.219 | 0.99 | irs |
| Mean | 0.575 | 0.966 | 0.600 | 0.544 | 0.611 | 0.907 | ||
Note: 1 Cities with “*” are pilot cities for MSW classification; 2 “drs” represents diminishing returns to scale; 3 The contents in brackets are the abbreviations for corresponding city names; 4 “-” represents constant returns to scale; 5 “irs” represents increasing returns to scale.
Figure 2Different types of cities before and after the Adjustment of MSWM efficiency means.
Stage 2: Results of Stochastic Frontier Analysis (SFA) regression model.
| Variables | Z1 | Z2 | Z3 | Constant |
| LR |
|---|---|---|---|---|---|---|
| Slack Variable of X1 | −0.006 *** | 4.191 *** | 0.048 *** | −478.819 *** | 0.999 *** | 28.848 *** |
| Slack Variable of X2 | −0.278 ** | 255.736 *** | 2.670 *** | −30,690.464 *** | 0.999 *** | 20.944 *** |
Note: “***” donates significant at significance levels of 1%; “**” donates significant at significance levels of 5%.
Figure 3Clustering Diagram of MSWM.
Figure 4Regional distributions of four types of MSWM efficiency. (a) Regional distribution of the first type of MSWM efficiency; (b) Regional distribution of the second type of MSWM efficiency; (c) Regional distribution of the third type of MSWM efficiency; (d) Regional distribution of the fourth type of MSWM efficiency.