Improving Analytic Hierarchy Process inside the Analytic Group Decision-Making Approach Method with Two-Dimensional Cloud Model for Water Resource Pollution Risk Warning Evaluation: A Case Study in Shandong Province, China
Abstract
:1. Introduction
2. Establishment of Evaluation Index System
2.1. Hierarchical Model of Evaluation Indexes
2.2. Risk Index Level of Water Pollution Hazards
3. Water Resource Pollution Hazard Risk Assessment Method
3.1. Improved AGA-AHP Method
3.2. Improved Coefficient of Variation Method
- (1)
- Assuming that there are m evaluation objects and n evaluation indicators, the original data matrix A is constructed as follows:
- (2)
- The data are normalized by the extremum method, and the decision matrix is constructed .
- (3)
- The calculated coefficient of variation Vi is as follows:
- (4)
- The normalized weight ei of the ith indicator is as follows:
3.3. Game Theory Combinatorial Weighting Method
3.4. Two-Dimensional Cloud Model
3.5. Comprehensive Evaluation Cloud
3.6. Standard Cloud
3.7. Risk Warning Standards and Cloud Digital Characteristics
4. Case Analysis
4.1. Study Area Profile
4.2. Analytical Process
4.3. Analysis Result
5. Discussion
6. Conclusions
- (1)
- A comprehensive multi-indicator framework was established, which encompassed multiple aspects of water pollution risk assessment. The combination of the improved AGA-AHP method and cloud model enabled quantitative analysis and improved the accuracy and reliability of the evaluation.
- (2)
- The practicality of the method was demonstrated through a case study, providing a basis for subsequent decision-making. It offered new insights into water environmental risk management, but further optimization of the model is required to enhance predictive capability for better practical application.
- (3)
- The generalization of the research method to other regions should validate its applicability and effectiveness under different environments and conditions. The evaluation indicators and models should be optimized to improve prediction accuracy and decision support.
- (4)
- Application and validation of the research method should be conducted through real-world case studies to enhance its practicality and reliability. Further research should investigate the causes and influencing factors of water pollution risk, providing a scientific basis for the development of more effective risk management strategies.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Index | Ⅰ | Ⅱ | Ⅲ | Ⅳ | Ⅴ |
---|---|---|---|---|---|
Water quality assessment index U1 | |||||
Concentration of main pollutants in water bodyU11 | Very low concentration, excellent | Low concentration, good | Moderate concentration, average | Higher concentration, worse | Very high concentration, poor |
Transparency and turbidity of water bodiesU12 | Excellent transparency | High transparency, good | Transparency is moderate and average. | Lower transparency, poor | Very low transparency, poor |
pH and REDOX potentialU13 | The pH of the water is close to neutral. | The pH of the water is close to neutral. | The pH of the water is slightly acid-based. | The pH value of water is obviously acid-based. | The pH value of the water body deviates significantly from neutral. |
Nutrient concentration in waterU14 | Aquatic biodiversity is extremely rich. | The aquatic biodiversity is rich. | Aquatic biodiversity is moderate. | Aquatic biodiversity is low. | Aquatic biodiversity is extremely low. |
Water ecosystem assessment index U2 | |||||
Marine biodiversity U21 | The water ecosystem structure is complete. | The water ecosystem structure is relatively complete. | The water ecosystem structure is moderate. | The water ecosystem structure is relatively broken. | The structure of the water ecosystem is seriously broken. |
Status of water ecosystem structure and functionU22 | outstanding | good | normal | range | poor |
Water ecological process assessmentU23 | outstanding | good | normal | range | poor |
Water ecological process assessmentU24 | outstanding | good | normal | range | poor |
Water resources utilization and protection indicators U3 | |||||
Water resources supply and demand balance degreeU31 | outstanding | good | normal | range | poor |
Water resources use efficiencyU32 | outstanding | good | normal | range | poor |
Implementation of water resources protection measuresU33 | outstanding | good | normal | range | poor |
Economic benefit index of water resourcesU34 | Water resource utilization efficiency is extremely high. | The utilization efficiency of water resources is higher. | The efficiency of water resource utilization is moderate. | The efficiency of water resource utilization is low. | The efficiency of water resource utilization is very low. |
Water disaster risk assessment indicators U4 | |||||
Waterlogging risk assessmentU41 | The risk of flooding is extremely low | Low risk of waterlogging | The risk of flooding is moderate | Higher risk of waterlogging | The risk of flooding is extremely high |
Flood and drought risk assessmentU42 | Flood and drought risk is extremely low | Low flood and drought risk | Flood and drought risks are moderate | The risk of flood and drought is higher | The risk of floods and droughts is extremely high |
Water disaster emergency response capability assessmentU43 | Water disaster emergency response ability is very strong | Water disaster emergency response ability is strong | Water disaster emergency response ability is moderate | Water disaster emergency response ability is weak | Water disaster emergency response capacity is very weak |
Warning Level | Risk Probability | Degree of Harm | Value Range | Digital Feature |
---|---|---|---|---|
Ⅴ | low | small | [0, 2] | (1, 0.33, 0.05) |
Ⅳ | lower | lesser | [2, 4] | (3, 0.33, 0.05) |
Ⅲ | normal | normal | [4, 6] | (5, 0.33, 0.05) |
Ⅱ | higher | larger | [6, 8] | (7, 0.33, 0.05) |
Ⅰ | high | big | [8, 10] | (9, 0.33, 0.05) |
Risk Factor | X1/X1′ | X2/X2′ | X3/X3′ | X4/X4′ | X5/X5′ | X6/X6′ |
---|---|---|---|---|---|---|
U11 | 7.8/6.5 | 8.2/6.6 | 8.0/6.3 | 8.3/6.7 | 7.9/6.9 | 8.5/6.8 |
U12 | 7.1/6.9 | 7.0/6.8 | 7.3/7.0 | 7.4/7.3 | 6.9/6.9 | 7.2/7.2 |
U13 | 6.3/2.3 | 6.2/2.2 | 6.2/2.0 | 5.9/2.3 | 6.0/1.9 | 6.1/2.1 |
U14 | 7.5/7.2 | 7.2/7.3 | 7.6/7.4 | 7.8/7.5 | 7.4/6.9 | 7.3/7.6 |
U21 | 5.2/3.1 | 5.0/3.2 | 5.3/3.4 | 5.1/2.9 | 5.4/3.0 | 4.9/2.8 |
U22 | 5.1/7.2 | 5.3/7.3 | 4.9/7.4 | 5.0/7.2 | 5.2/6.9 | 5.4/7.1 |
U23 | 7.2/2.7 | 6.8/2.3 | 6.9/2.6 | 7.2/2.4 | 7.0/2.5 | 7.3/2.6 |
U24 | 7.3/2.4 | 7.5/2.6 | 7.8/2.2 | 7.4/2.5 | 7.6/2.9 | 7.5/2.7 |
U31 | 7.3/1.8 | 7.2/1.9 | 7.3/2.0 | 7.1/1.8 | 7.0/2.3 | 6.9/2.2 |
U32 | 6.4/1.6 | 6.2/1.5 | 6.6/1.5 | 6.5/1.7 | 6.3/1.4 | 6.2/1.3 |
U33 | 5.1/3.5 | 5.2/3.6 | 5.0/3.2 | 4.9/3.7 | 4.9/3.8 | 5.2/3.4 |
U34 | 3.4/2.8 | 3.0/2.5 | 3.1/2.6 | 2.8/2.3 | 3.3/2.4 | 2.9/2.7 |
U41 | 2.5/2.6 | 2.4/3.2 | 2.2/3.0 | 2.6/3.1 | 2.5/2.7 | 2.3/3.3 |
U42 | 4.2/1.8 | 4.0/1.4 | 3.9/1.3 | 3.8/1.5 | 4.3/1.6 | 4.4/1.9 |
U43 | 2.5/3.2 | 2.3/3.1 | 2.5/3.4 | 2.6/2.9 | 2.4/3.0 | 2.5/3.2 |
Integrated Risk Cloud | Level 1 Risk Cloud | Level 2 Risk Cloud | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
Overall Index | Risk (Ex1, En1, He1) | Chance (Ex2, En2, He2) | Level 1 Index | Weight | Risk (Ex1, En1, He1) | Chance (Ex2, En2, He2) | Level 2 Index | Weight | Risk (Ex1, En1, He1) | Chance (Ex2, En2, He2) |
U | (6.54, 0.43, 0.39) | (6.57, 0.43, 0.38) | U1 | 0.239 | (5.05, 0.54, 0.49) | (6.00, 0.55, 0.44) | U11 | 0.072 | (5.49, 0.61, 0.60) | (6.15, 0.56, 0.49) |
U12 | 0.060 | (4.20, 0.63, 0.53) | (4.10, 0.84, 0.55) | |||||||
U13 | 0.066 | (5.41, 0.45, 0.41) | (6.33, 0.36, 0.34) | |||||||
U14 | 0.061 | (4.23, 0.35, 0.33) | (6.58, 0.27, 0.26) | |||||||
U2 | 0.298 | (7.39, 0.58, 0.49) | (7.79, 0.27, 0.26) | U21 | 0.069 | (7.88, 0.52, 0.45) | (8.00, 0.21, 0.20) | |||
U22 | 0.061 | (7.29, 0.44, 0.42) | (7.45, 0.27, 0.27) | |||||||
U23 | 0.062 | (6.90, 0.79, 0.60) | (7.85, 0.33, 0.32) | |||||||
U24 | 0.062 | (7.63, 0.21, 0.21) | (7.75, 0.34, 0.31) | |||||||
U3 | 0.225 | (7.68, 0.35, 0.33) | (7.16, 0.43, 0.40) | U31 | 0.061 | (7.78, 0.31, 0.31) | (7.75, 0.40, 0.38) | |||
U32 | 0.062 | (8.50, 0.33, 0.32) | (7.57, 0.38, 0.35) | |||||||
U33 | 0.074 | (5.91, 0.36, 0.34) | (6.82, 0.48, 0.45) | |||||||
U34 | 0.064 | (7.56, 0.27, 0.26) | (6.40, 0.75, 0.58) | |||||||
U4 | 0.221 | (7.54, 0.33, 0.31) | (7.07, 0.56, 0.48) | U41 | 0.064 | (4.57, 0.32, 0.29) | (4.80, 0.38, 0.34) | |||
U42 | 0.065 | (7.63, 0.25, 0.24) | (6.47, 0.31, 0.28) | |||||||
U43 | 0.082 | (4.73, 0.33, 0.32) | (4.87, 0.47, 0.41) |
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Zhou, F.; Li, Z.; Gao, Y.; Wang, H.; Wei, J.; Zhou, B. Improving Analytic Hierarchy Process inside the Analytic Group Decision-Making Approach Method with Two-Dimensional Cloud Model for Water Resource Pollution Risk Warning Evaluation: A Case Study in Shandong Province, China. Water 2024, 16, 802. https://doi.org/10.3390/w16060802
Zhou F, Li Z, Gao Y, Wang H, Wei J, Zhou B. Improving Analytic Hierarchy Process inside the Analytic Group Decision-Making Approach Method with Two-Dimensional Cloud Model for Water Resource Pollution Risk Warning Evaluation: A Case Study in Shandong Province, China. Water. 2024; 16(6):802. https://doi.org/10.3390/w16060802
Chicago/Turabian StyleZhou, Fulei, Zhijun Li, Yu Gao, Haiqing Wang, Jiantao Wei, and Bo Zhou. 2024. "Improving Analytic Hierarchy Process inside the Analytic Group Decision-Making Approach Method with Two-Dimensional Cloud Model for Water Resource Pollution Risk Warning Evaluation: A Case Study in Shandong Province, China" Water 16, no. 6: 802. https://doi.org/10.3390/w16060802
APA StyleZhou, F., Li, Z., Gao, Y., Wang, H., Wei, J., & Zhou, B. (2024). Improving Analytic Hierarchy Process inside the Analytic Group Decision-Making Approach Method with Two-Dimensional Cloud Model for Water Resource Pollution Risk Warning Evaluation: A Case Study in Shandong Province, China. Water, 16(6), 802. https://doi.org/10.3390/w16060802