Study of the Water Environment Risk Assessment of the Upper Reaches of the Baiyangdian Lake, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Risk Assessment Units
2.3. Assessment System of Accumulation Water Environment Risk
2.4. Grading Standard of Accumulation Water Environment Risk
2.5. Study Method of Sudden Water Environment Risk
2.6. Data Sources
3. Results
3.1. Cumulative Water Environmental Risk
3.2. Sudden Water Environmental Risk
3.3. Water Environment Risk Prevention and Control Measures
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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River Name | Water Environment Risk Assessment Units |
---|---|
Zhongyishui River—Nanyishui River—Baigou Canal (ZNBC) | (1) ZNBC–Yi County, (2) ZNBC–Dingxing County, and (3) ZNBC–Rongcheng County |
Cao River | (4) Cao River—Yi County, (5) Cao River—Mancheng District, and (6) Cao River—Xushui District |
Bao River | (7) Bao River—Yi County, (8) Bao River—Xushui District |
Tang River | (9) Tang River—Hunyuan County, (10) Tang River—Lingqiu County, (11) Tang River—Laiyuan County, (12) Tang River—Tang County, (13) Tang River—Dingzhou County, (14) Tang River—Wangdu County, (15) Tang River—Qingyuan District, and (16) Tang River—Anxin County |
Xiaoyi River | (17) Xiaoyi River—Quyang County, (18) Xiaoyi River—Dingzhou County, (19) Xiaoyi River—Anguo County, (20) Xiaoyi River—Boye County, (21) Xiaoyi River—Li County, and (22) Xiaoyi River—Gaoyang County |
Fu River | (23) Fu River—Lianchi District and (24) Fu River—Qingyuan District |
Criterion Layer | Factor Level | Scheme Layer | Index Layer | Beginning Reaches | Other Reaches |
---|---|---|---|---|---|
Weight | Weight | ||||
Risk sources | Non-point source pollution within the control range of the reaches | Planting pollution | Amount of fertilizer applied per unit of cultivated area | 0.1280 | 0.1148 |
Livestock pollution | Livestock and poultry excretions | 0.0657 | 0.0590 | ||
Rural living pollution | Domestic sewage discharge in rural areas | 0.0247 | 0.0221 | ||
Human excrement and urine emissions in rural areas | 0.0091 | 0.0081 | |||
Point source pollution within the control range of the reaches | Industrial effluents | Industrial wastewater discharge per unit of GDP | 0.2276 | 0.1048 | |
Water environmental risk impacts of the adjacent upstream reaches | Risk | Risk of the adjacent upstream reaches | - | 0.1069 | |
Distance | Distance to the adjacent upstream reaches * | - | 0.0393 | ||
River characteristics | Cross-section of river | Water quality condition | Water quality | 0.0895 | 0.0895 |
Rate of water quality above the standard in water function zoning | 0.0329 | 0.0329 | |||
Discharge | Perennial average annual discharge | 0.0450 | 0.0450 | ||
Physical geography and social development conditions | Social development | Population characteristics | Population | 0.0146 | 0.0146 |
Natural population growth rate | 0.0054 | 0.0054 | |||
Economic level | GDP per capita | 0.0543 | 0.0543 | ||
Physical geography | Location of pollution sources | Distance between the pollution source and the Baiyangdian Lake | 0.0273 | 0.0273 | |
Water pollution control ability | Primary control mechanism | Sewage exhaust state | Rate of industrial wastewater discharge up to standard | 0.0418 | 0.0418 |
Sewage treatment | Rate of centralized treatment of urban domestic sewage | 0.0214 | 0.0214 | ||
Refuse collection | Urban garbage collection rate | 0.0110 | 0.0110 | ||
Stimulus control mechanism | Risk management investment | Ratio of environmental investment to GDP | 0.2018 | 0.2018 |
Level | Class of Risk | Scoring Value | Risk Characterization |
---|---|---|---|
Ⅰ | No risk or acceptable risk | (0,1] | Probability of risk is extremely low, or destructiveness is weak |
Ⅱ | Low risk | (1,2] | Water use behavior should be regulated to prevent risks |
Ⅲ | Middle risk | (2,3] | Risk may happen or have the potential to cause damage |
Ⅳ | High risk | (3,4] | Risk happens easily and can cause great damage |
Ⅴ | Very high risk | (4,5] | Risks happens frequently and causes damage that is not easy to recover from |
Criterion Layer | Index Layer | Unit | Scoring Value | Reference | ||||
---|---|---|---|---|---|---|---|---|
0~1 | 1~2 | 2~3 | 3~4 | 4~5 | ||||
Risk sources | Amount of fertilizer applied per unit of cultivated area | kg/ha | 0~250 | 250~450 | 450~650 | 650~850 | ≥850 | [40] |
Livestock and poultry excretions | 104 t | 0~3.8 | 3.8~10.4 | 10.4~28.6 | 28.6~78.4 | ≥78.4 | W–F law | |
Domestic sewage discharge in rural areas | 104 m3 | 0~22 | 22~53 | 53~126 | 126~301 | ≥301 | W–F law | |
Human excrement and urine emissions in rural areas | 104 t | 0~1.4 | 1.4~3.3 | 3.3~7.9 | 7.9~18.7 | ≥18.7 | W–F law | |
Industrial wastewater discharge per unit of GDP | t/(CNY 104) | 0~1 | 1~4 | 4~14 | 14~52 | ≥52 | W–F law | |
Risk of the adjacent upstream reaches | Scoring value | 0~1 | 1~2 | 2~3 | 3~4 | 4~5 | [24] | |
Distance to the adjacent upstream reaches * | km | ≥52 | 34~52 | 22~34 | 15~22 | 0~15 | W–F law | |
River characteristics | Water quality | Ⅰ | Ⅱ | Ⅲ | Ⅳ | Others | Standard | |
Rate of water quality above the standard in water function zoning | % | 100 | 80~100 | 60~80 | 40~60 | 0~40 | [40] | |
Perennial average annual discharge | 108 m3 | ≥4.72 | 1.21~4.72 | 0.31~1.21 | 0.09~0.31 | 0~0.09 | W–F law | |
Physical geography and social development conditions | Population | 104 person | 0~3.4 | 3.4~9.4 | 9.4~25.9 | 25.9~71.5 | ≥71.5 | W–F law |
Natural population growth rate | ‰ | ≤−9.9 | −9.9~−3.1 | −3.1~3.8 | 3.8~10.6 | ≥10.6 | W–F law | |
GDP per capita | CNY 103 | ≥50.4 | 30.7~50.4 | 18.7~30.7 | 11.4~18.7 | ≤11.4 | W–F law | |
Distance between the pollution source and the Baiyangdian Lake | km | ≥268 | 77~268 | 22~77 | 3~22 | 0~3 | W–F law | |
Water pollution control ability | Rate of industrial wastewater discharge up to standard | % | 100 | 95~100 | 90~95 | 80~90 | ≤80 | [40] |
Rate of centralized treatment of urban domestic sewage | % | 100 | 95~100 | 90~95 | 85~90 | ≤85 | [40] | |
Urban garbage collection rate | % | 100 | 95~100 | 90~95 | 85~90 | ≤85 | [40] | |
Ratio of environmental investment to GDP | % | ≥3 | 2~3 | 1~2 | 0.5~1 | 0~0.5 | Standard |
Serial Number | Type of Risk Source | Registered Size (CNY 104) | Environmental Risk Substance | Maximum Presence of Environmental Risk Substance (t) | Threshold Quantity of Environmental Risk Substance (t) | Q |
---|---|---|---|---|---|---|
1 | Chemical raw materials and chemical products manufacturing | 1000 | Vitriol | 400 | 10 | 40 |
2 | Paper products industry | 600 | Vitriol | 0.3 | 10 | 0.03 |
Oil substances | 0.18 | 2500 | 0.000072 | |||
3 | Textile industry | 1000 | Sodium hydrosulfite | 0.029 | 5 | 0.0058 |
Acetic acid | 0.065 | 10 | 0.0065 | |||
4 | Sewage treatment plant | 8078 | Methyl alcohol | 5.329 | 10 | 0.5329 |
5 | Food manufacturing industry | 3000 | Ammonium hydroxide | 2.236 | 10 | 0.2236 |
Methyl alcohol | 7.091 | 10 | 0.7091 | |||
6 | Metal products industry | 1000 | Oil substances | 110.32 | 2500 | 0.044128 |
Ammonium hydroxide | 107 | 10 | 10.7 | |||
Liquefied petroleum gas | 2 | 10 | 0.2 | |||
Substances harmful to water environments (Chronic toxicity Category: Chronic 2) | 300 | 200 | 1.5 | |||
Organic wastewater (concentration of CODcr ≥ 10000 mg/L) | 36 | 10 | 3.6 | |||
7 | Service industry | 25,417 | Oil substances | 0.484 | 2500 | 0.0001936 |
Ethyl alcohol | 0.202 | 500 | 0.000404 | |||
Hydrochloric acid | 0.605 | 7.5 | 0.081 | |||
Sodium chlorate | 0.806 | 100 | 0.00806 | |||
8 | Leather, fur, and feather products as well as footwear | 2000 | Health hazards, acute toxic substances (Class 2, Class 3) | 6.25 | 50 | 0.125 |
9 | Petroleum, coal, and other fuel processing industries | 1500 | Oil substances | 14,600 | 2500 | 5.84 |
10 | Wine, beverage, and refined tea manufacturing | 1200 | Ammonium hydroxide | 1.037 | 10 | 0.1037 |
Vitriol | 0.00216 | 10 | 0.000216 | |||
11 | Mining and washing of coal industry | 14,260 | Oil substances | 427.822 | 2500 | 0.171 |
12 | Special equipment manufacturing | 1488 | Additives | 1.674 | 50 | 0.033 |
13 | Manufacturing of railway, marine, aerospace, and other transportation equipment | 2000 | Oil substances | 1.304 | 2500 | 0.0005 |
Flammable liquid | 0.953 | 50 | 0.019 | |||
Acetone | 0.00048 | 10 | 0.000048 | |||
Ethyl alcohol | 0.00048 | 500 | 0.00000096 | |||
Hydrochloric acid | 0.000027 | 7.5 | 0.0000037 | |||
14 | Motor industry | 5000 | Oil substances | 6.45 | 2500 | 0.00258 |
Methylbenzene | 0.375 | 10 | 0.0375 | |||
Xylene | 4.375 | 10 | 0.4375 | |||
Nickel nitrate | 0.625 | 0.25 | 2.5 | |||
15 | Manufacture of non-metallic mineral products | 1000 | Oil substances | 16.667 | 2500 | 0.00667 |
16 | Production and supply of electric power and heat power | 313972 | Oil substances | 156.986 | 2500 | 0.063 |
Name of River | Name of County or District | Water Quality |
---|---|---|
Fu River | Lianchi District | Ⅲ |
Fu River | Qingyuan District | Ⅱ |
Xiaoyi River | Quyang County | Ⅱ |
Xiaoyi River | Dingzhou County | Ⅴ |
Xiaoyi River | Anguo County | Ⅴ |
Xiaoyi River | Boye County | Ⅴ |
Xiaoyi River | Li County | Ⅳ |
Xiaoyi River | Gaoyang County | Ⅳ |
Tang River | Hunyuan County | Ⅲ |
Tang River | Lingqiu County | Ⅱ |
Tang River | Laiyuan County | Ⅱ |
Tang River | Tang County | Ⅰ |
Tang River | Dingzhou County | Ⅲ |
Tang River | Wangdu County | Ⅲ |
Tang River | Qingyuan District | Ⅲ |
Tang River | Anxin County | Ⅲ |
Bao River | Yi County | Worse than Ⅴ |
Bao River | Xushui District | Ⅲ |
Cao River | Yi County | Ⅲ |
Cao River | Mancheng District | Ⅲ |
Cao River | Xushui District | Ⅲ |
Zhongyishui River | Yi County | Ⅱ |
Nanyishui River | Dingxing County | Ⅱ |
Baigou Canal | Rongcheng County | Worse than Ⅴ |
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Guan, X.; Ren, X.; Tao, Y.; Chang, X.; Li, B. Study of the Water Environment Risk Assessment of the Upper Reaches of the Baiyangdian Lake, China. Water 2022, 14, 2557. https://doi.org/10.3390/w14162557
Guan X, Ren X, Tao Y, Chang X, Li B. Study of the Water Environment Risk Assessment of the Upper Reaches of the Baiyangdian Lake, China. Water. 2022; 14(16):2557. https://doi.org/10.3390/w14162557
Chicago/Turabian StyleGuan, Xiaoyan, Xiaoqiang Ren, Yuan Tao, Xiaomin Chang, and Bing Li. 2022. "Study of the Water Environment Risk Assessment of the Upper Reaches of the Baiyangdian Lake, China" Water 14, no. 16: 2557. https://doi.org/10.3390/w14162557
APA StyleGuan, X., Ren, X., Tao, Y., Chang, X., & Li, B. (2022). Study of the Water Environment Risk Assessment of the Upper Reaches of the Baiyangdian Lake, China. Water, 14(16), 2557. https://doi.org/10.3390/w14162557