Production–Living–Ecological Risk Assessment and Corresponding Strategies in China’s Provinces under Climate Change Scenario
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data and Methods
2.2. Identification of PLE Risks from Climate Change Risks
2.3. Assessment of PLE Risk Index at Provincial Scale in China
2.4. Principles and Methods for Determining Category to Cope with the PLE Risks
3. Results
3.1. Distribution Patterns of Production, Living, and Ecological Risks in the Provinces of China under Climate Change
3.2. Problem Diagnosis for Coping with PLE Risk at the Provincial Level in China
3.3. Strategy to Cope with PLE Risk
4. Discussion and Conclusions
4.1. Discussion
4.2. Conclusions
- (1)
- Under climate change scenarios, various provinces in China had different levels of production, living, and ecological risks due to the impact of different disasters. When affected by heat waves and floods, the production and living risks were high in Jiangsu and Guangdong in the southeastern coastal areas of China. Due to the impact of droughts, the production risks were high in Shandong, Anhui, and Henan of the Huang–Huai–Hai Plain area. When affected by floods, the living risks were high in Jiangxi and Jiangsu in the middle and lower reaches of the Yangtze River. With the gradual changes in climatic factors such as temperature and precipitation, the ecological risks were high in Yunnan and Guangxi in southern China, and Ningxia and Shaanxi in the middle and upper reaches of the Yellow River.
- (2)
- Based on the production, living, and ecological risks in various provinces in China, these provinces were classified into three categories to cope with PLE risks: A, B and C. Category A zones include the Guangdong-Hong Kong-Macao Greater Bay Area with Guangzhou as the center, the Beibu Gulf optimized development zone with Nanning as the center, the Hainan Free Trade Port, and Henan and Jiangsu in the main production areas of the Huang–Huai–Hai Plain. Category B zones include Heilongjiang, Hebei, Hubei, and Guizhou in the main production areas of the Northeast Plain, the Huang–Huai–Hai Plain, and the Yangtze River Basin. Category C zones include Inner Mongolia, Xinjiang, Qinghai, and Tibet, which are located in national key ecological function zones and development-prohibited zones.
- (3)
- Strategies to cope with PLE risk in China were proposed from the perspective of territorial spatial planning. The specific recommendations for each category to cope with the risks are as follows. Category A zones should be optimized by establishing disaster risk monitoring and early warning systems for the southeastern coast and the main agricultural production areas to cope with high risks. Moreover, urban protection areas with the potential to serve as ecological shelters, such as Nanning and Haikou, should be developed. The economic and energy structures should be adjusted, and greenhouse gases and other pollutant emissions should be controlled. Category B zones are mainly characterized by high production and living risks. In the main production areas of the Huang–Huai–Hai Plain, the construction of agricultural infrastructure and improving the agricultural mechanization rate is key. Promoting water-saving economics is very important, especially in this area, which suffers from water shortages. Additionally, crops with strong adaptability need to be established in each main production area. Relocation programs are necessary for disaster-prone rural areas with living risks at a high level. In category C zones, where ecological risks are the focus, strengthening ecological restoration and permafrost protection in ecologically fragile areas, and reducing the impact of human activities are indispensable. For the three-river source region, the improvement of water use efficiency is important. The stability of alpine ecosystems should be maintained. The ice/snow-related tourism resources are an opportunity for Northeast China.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Categories | Contents | Values |
---|---|---|
A | (1) Production, living, and ecology risks all at a high level (2) Two types of production, living, and ecology risks are at a high level, and the remining risk is at a medium level | (1) Production risk High: 0.80–1.00 Medium: 0.58–0.80 Low: 0.10–0.58 (2) Living risk High: 0.72–0.80 Medium: 0.53–0.72 Low: 0.01–0.53 (3) Ecology risk High: 0.40–1.00 Medium: 0.05–0.40 Low: 0–0.05 |
B | (1) One type of production, living, and ecology risk is at a high level, and the remining risks are at a medium level (2) One type of production, living, and ecology risk is at a high level, one is at a medium level, and the other is at a low level (3) Production, living, and ecology risks are all at a medium level (4) Two types of production, living, and ecology risks are at a medium level, and the remining risk is at a low level | |
C | (1) One type of production, living, and ecology risk is at a medium level, and the remining risks are at a low level (2) Production, living, and ecology risks are all at a low level |
Categories | Distribution | |
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Risks Level | Provinces | |
A | Production, living, and ecology risks are all at a high level | Guangdong, Hainan, Jiangxi |
Production and living risks are at a high level, and ecology risks at a medium level | Henan, Jiangsu, Shandong, Anhui, Hunan | |
Production and ecology risks are at a high level, and living risks at a medium level | Fujian, Guangxi | |
Ecology risk is at a high level, production risk at a medium level, and living risk at a low level | Yunnan | |
B | Production risk is at a high level, and living and ecology risk is at a medium level | Hubei |
Ecology risk is at a high level, and living and ecology risk is at a medium level | Shaanxi, Ningxia | |
Production risk is at a high level, living risk is at a medium level, and ecology risk is at a low level | Zhejiang | |
Living risk is at a high level, production risk is at a medium level, and ecology risk is at a low level | Tianjin | |
Ecology risk is at a high level, production risk is at a medium level, and living risk is at a low level | Taiwan | |
Production, living, and ecology risks are all at a medium level | Shanxi, Guizhou | |
Production and living risks are at a medium level, and ecology risks are at a low level | Beijing, Hebei, Liaoning, Jilin, Chongqing | |
Production and ecology risks are at a medium level, and living risk is at a low level | Heilongjiang | |
Living and ecology risks are at a medium level, and production risk is at a low level | Shanghai | |
C | Ecology risk is at a medium level, and production and living risks are at a low level. | Inner Mongolia, Gansu, Sichuan, Xinjiang |
Production, living and ecology risk are all at a low level | Qinghai, Tibet |
Categories | Distributed Range | Existing Problems | Strategy |
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A |
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B |
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C |
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Hou, W.; Wu, S.; Yang, L.; Yin, Y.; Gao, J.; Deng, H.; Wu, M.; Li, X.; Liu, L. Production–Living–Ecological Risk Assessment and Corresponding Strategies in China’s Provinces under Climate Change Scenario. Land 2022, 11, 1424. https://doi.org/10.3390/land11091424
Hou W, Wu S, Yang L, Yin Y, Gao J, Deng H, Wu M, Li X, Liu L. Production–Living–Ecological Risk Assessment and Corresponding Strategies in China’s Provinces under Climate Change Scenario. Land. 2022; 11(9):1424. https://doi.org/10.3390/land11091424
Chicago/Turabian StyleHou, Wenjuan, Shaohong Wu, Linsheng Yang, Yunhe Yin, Jiangbo Gao, Haoyu Deng, Maowei Wu, Xiaojie Li, and Lulu Liu. 2022. "Production–Living–Ecological Risk Assessment and Corresponding Strategies in China’s Provinces under Climate Change Scenario" Land 11, no. 9: 1424. https://doi.org/10.3390/land11091424
APA StyleHou, W., Wu, S., Yang, L., Yin, Y., Gao, J., Deng, H., Wu, M., Li, X., & Liu, L. (2022). Production–Living–Ecological Risk Assessment and Corresponding Strategies in China’s Provinces under Climate Change Scenario. Land, 11(9), 1424. https://doi.org/10.3390/land11091424