Study on the Influence of Undertaking Industrial Transfer on the Sustainability Development of Wanjiang City Belt
Abstract
:1. Introduction
2. Literature Review
2.1. Research on Industrial Transfer and Undertaking Industrial Transfer
2.2. Undertaking Industrial Transfer and Regional Sustainable Development
3. Study Area and Methods
3.1. Overview of the Study Area
3.2. Nonparametric Test
3.3. Time Series Forecasting Model
4. Results and Analysis
4.1. Analysis of Nonparametric Test
4.2. Analysis of Time Series Prediction
4.3. Analysis on the Influencing Factors of Undertaking Industrial Transfer on the Development of the Wanjiang City Belt
4.3.1. Slowdown of Undertaking Industrial Transfer
4.3.2. Restriction of Regional Administrative Barriers
4.3.3. Low Level of Industrial Agglomeration
5. Conclusions
5.1. Research Conclusions
5.2. Policy Recommendations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
City | Year | ||||
---|---|---|---|---|---|
2015 | 2016 | 2017 | 2018 | 2019 | |
Hefei | 5660.27 | 6274.38 | 7003.05 | 7822.91 | 9409.40 |
Chuzhou | 1305.70 | 1422.83 | 1604.39 | 1801.75 | 2909.06 |
Ma’anshan | 1365.30 | 1493.76 | 1710.09 | 1918.10 | 2110.97 |
Wuhu | 2457.32 | 2699.44 | 2963.28 | 3278.53 | 3618.26 |
Xuancheng | 971.46 | 1057.82 | 1185.56 | 1317.20 | 1561.34 |
Tongling | 911.60 | 957.30 | 1122.10 | 1222.36 | 960.17 |
Chizhou | 544.74 | 589.02 | 624.35 | 684.93 | 831.73 |
Anqing | 1417.43 | 1531.18 | 1708.83 | 1917.59 | 2380.52 |
Lu’an | 1016.49 | 1108.15 | 1168.05 | 1288.05 | 1620.13 |
Wanjiang City Belt | 15,650.31 | 17,133.88 | 19,089.7 | 21,251.42 | 25,401.58 |
Shanghai | 25,123.45 | 28,178.65 | 30,632.99 | 32,679.87 | 38,156.00 |
Nanjing | 9720.77 | 10,503.02 | 11,715.10 | 12,820.40 | 14,030.15 |
Hangzhou | 10,050.21 | 11,313.72 | 12,603.36 | 13,509.15 | 15,373.05 |
City | Year | ||||
---|---|---|---|---|---|
2015 | 2016 | 2017 | 2018 | 2019 | |
Hefei | 73,102.00 | 80,138.00 | 88,456.00 | 97,470.00 | 115,623.00 |
Chuzhou | 32,634.00 | 35,302.00 | 39,517.00 | 43,999.00 | 70,429.00 |
Ma’anshan | 60,802.00 | 65,833.00 | 74,709.00 | 82,695.00 | 89,867.00 |
Wuhu | 67,592.00 | 73,715.00 | 80,458.00 | 88,085.00 | 96,154.00 |
Xuancheng | 37,610.00 | 40,740.00 | 45,467.00 | 50,065.00 | 58,819.00 |
Tongling | 57,387.00 | 59,960.00 | 69,935.00 | 75,524.00 | 58,726.00 |
Chizhou | 38,014.00 | 40,919.00 | 43,178.00 | 46,865.00 | 56,217.00 |
Anqing | 31,101.00 | 33,294.00 | 36,928.00 | 41,088.00 | 50,574.00 |
Lu’an | 21,524.00 | 23,298.00 | 24,406.00 | 26,731.00 | 33,370.00 |
Wanjiang City Belt | 419,766.00 | 453,199.00 | 503,054.00 | 552,522.00 | 629,779.00 |
Shanghai | 103,796.00 | 116,562.00 | 126,634.00 | 134,982.00 | 157,279.00 |
Nanjing | 118,171.00 | 127,263.83 | 141,103.00 | 152,886.00 | 165,681.00 |
Hangzhou | 112,230.00 | 124,286.00 | 135,113.00 | 140,180.00 | 152,465.00 |
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Year | Secondary Industry (%) | Tertiary Industry (%) |
---|---|---|
2020 | 7.07 | 6.89 |
2021 | 6.14 | 6.17 |
2022 | 5.76 | 5.46 |
2023 | 5.11 | 4.74 |
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Gui, L.; Hu, X.; Li, X.; Zheng, M. Study on the Influence of Undertaking Industrial Transfer on the Sustainability Development of Wanjiang City Belt. Sustainability 2022, 14, 14993. https://doi.org/10.3390/su142214993
Gui L, Hu X, Li X, Zheng M. Study on the Influence of Undertaking Industrial Transfer on the Sustainability Development of Wanjiang City Belt. Sustainability. 2022; 14(22):14993. https://doi.org/10.3390/su142214993
Chicago/Turabian StyleGui, Lizhi, Xiaowen Hu, Xiaorui Li, and Ming Zheng. 2022. "Study on the Influence of Undertaking Industrial Transfer on the Sustainability Development of Wanjiang City Belt" Sustainability 14, no. 22: 14993. https://doi.org/10.3390/su142214993
APA StyleGui, L., Hu, X., Li, X., & Zheng, M. (2022). Study on the Influence of Undertaking Industrial Transfer on the Sustainability Development of Wanjiang City Belt. Sustainability, 14(22), 14993. https://doi.org/10.3390/su142214993