Research on Collaborative Governance Mechanism of Air Pollutant Emissions in Ports: A Tripartite Evolutionary Game Analysis with Evidence from Ningbo-Zhoushan Port
Abstract
1. Introduction
2. Literature Review
3. Model Construction
3.1. Problem Description
3.2. Model Assumptions
3.3. Model Construction
3.4. Replicator Dynamics Equations
4. Evolutionary Game Analysis
Evolutionary Strategy Stability Analysis
5. Simulation Analysis
5.1. Initial Setup of System Simulation
5.2. Impact of Parameter Changes
5.2.1. Impact of C1 Variation
5.2.2. Impact of M Variation
5.2.3. Impact of S5 Variation
6. Conclusions and Recommendations
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Participant | Parameter | Parameter Description and Correlation |
---|---|---|
Government | The special budget for environmental governance (C1) (http://sthjj.ningbo.gov.cn/art/2024/2/27/art_1229051503_4364171.html (accessed on 16 June 2025)) | Investment required for government supervision (monitoring equipment, personnel training, etc.). |
Incentive policy costs (C2) (http://sthjj.ningbo.gov.cn/art/2024/2/27/art_1229051503_4364171.html (accessed on 16 June 2025)) | Direct expenditure of the government to implement subsidies and technical support. | |
Benchmark values of tax losses (R1) (http://tjj.ningbo.gov.cn/art/2025/3/20/art_1229042825_58921061.html (accessed on 16 June 2025)) | Ningbo City Port Enterprise Annual Tax Benchmark Value. | |
Tax loss coefficient (a) | The portion of tax reductions caused by corporate emissions reduction. | |
No incentive for policy loss (L) | Additional treatment costs are caused by increased pollution when the government is not encouraging them. | |
Public support degree gain (S1) | The social reputation of the government has been improved after successful governance. | |
Enterprises | Emission reduction input cost (C3) (https://www.ningbo.gov.cn/art/2023/5/10/art_1229095998_1773019.html (accessed on 16 June 2025)) | Initial investment for enterprises to purchase green technology and equipment upgrades. |
Carbon market trading gains (S2) | Economic gains from trading on carbon emission rights. | |
Green financing concessions (K) | Low-interest bank loans to low-carbon companies. | |
Income from government subsidies (S3) | Companies receive direct subsidies from government incentive policies. | |
Gain in market competitiveness (S4) | Additional benefits brought by the green brand effect after emission reduction. | |
Not reduce reputation loss (D) | Economic losses caused by the influence of public opinion when not reducing emissions and the supervision of the masses. | |
Fine amount (M) | The fines they face when companies cut emissions. | |
Public | Supervise the cost (C4) | The energy and time cost of the masses to participate in the supervision. |
Health and economic value (J) | Economic value of improving air quality to reduce respiratory diseases. | |
Report reward (S5) | The government rewards the public for reporting on enterprises’ illegal emissions. | |
Environmental satisfaction benchmark value (R2) | The average satisfaction of people with air quality before governance. | |
Environmental satisfaction coefficient (b) | Air quality improvement: 1 unit of satisfaction improvement. |
The Government’s Strategy | Enterprise’s Strategy | Public’s Strategy | Government’s Earnings | Enterprise’s Income | Public Income |
---|---|---|---|---|---|
Incentive (x) | Emission reduction (y) | Supervise (z) | −C1 − C2 + S1 + (1 − a) R1 | −C3 + S2 + K + S3 + S4 | −C4 + J + S5 + (1 + b)R2 |
Incentive (x) | Emission reduction (y) | Non-supervise (1 − z) | −C1 − S3 + S1 + (1 − a)R1 | −C3 + S2 + K + S3 + S4 | J + (1 + b)R2 |
Incentive (x) | Nonemission reduction (1 − y) | Supervise (z) | −C1 − S5 + R1 + M − L | −M − D | −C4 + S5 + R2 |
Incentive (x) | Nonemission reduction (1 − y) | Nonsupervise (1 − z) | −C1 + R1 + M − L | −M | R2 |
Nonincentive (1 − x) | Emission reduction (y) | Supervise (z) | (1 − a)R1 | −C3 + S2 + K + S4 | −C4 + J + (1 + b)R2 |
Nonincentive (1 − x) | Emission reduction (y) | Nonsupervised (1 − z) | (1 − a)R1 | −C3 + S2 + K + S4 | J + (1 + b)R2 |
Nonincentive (1 − x) | Nonemission reduction (1 − y) | Supervise (z) | R1 − L | −D | −C4 + R2 |
Nonincentive (1 − x) | Nonemission reduction (1 − y) | Nonsupervise (1 − z) | R1 − L | 0 | R2 |
Equilibrium Points | Symbol | Stability | |
---|---|---|---|
E1(0,0,0) | × | ESS | |
× | |||
− | |||
E2(1,0,0) | × | Unstable | |
× | |||
+ | |||
E3(0,1,0) | × | ESS | |
× | |||
− | |||
E4(0,0,1) | × | Unstable | |
× | |||
+ | |||
E5(1,1,0) | × | Unstable | |
× | |||
+ | |||
E6(1,0,1) | × | ESS | |
× | |||
− | |||
E7(0,1,1) | × | Unstable | |
× | |||
+ | |||
E8(1,1,1) | × | ESS | |
× | |||
− |
Parameters | C1 | C2 | R1 | a | L | S1 | C3 | S2 | K |
Values | 1.5 | 0.8 | 120 | 0.06 | 3 | 2.5 | 6 | 1.5 | 0.75 |
Parameters | S3 | S4 | D | M | C4 | J | S5 | R2 | b |
Values | 0.3 | 0.8 | 0.3 | 3 | 1 | 2 | 1.5 | 28.2 | 0.5 |
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Yuan, K.; Ma, L.; Wang, R. Research on Collaborative Governance Mechanism of Air Pollutant Emissions in Ports: A Tripartite Evolutionary Game Analysis with Evidence from Ningbo-Zhoushan Port. Mathematics 2025, 13, 2025. https://doi.org/10.3390/math13122025
Yuan K, Ma L, Wang R. Research on Collaborative Governance Mechanism of Air Pollutant Emissions in Ports: A Tripartite Evolutionary Game Analysis with Evidence from Ningbo-Zhoushan Port. Mathematics. 2025; 13(12):2025. https://doi.org/10.3390/math13122025
Chicago/Turabian StyleYuan, Kebiao, Lina Ma, and Renxiang Wang. 2025. "Research on Collaborative Governance Mechanism of Air Pollutant Emissions in Ports: A Tripartite Evolutionary Game Analysis with Evidence from Ningbo-Zhoushan Port" Mathematics 13, no. 12: 2025. https://doi.org/10.3390/math13122025
APA StyleYuan, K., Ma, L., & Wang, R. (2025). Research on Collaborative Governance Mechanism of Air Pollutant Emissions in Ports: A Tripartite Evolutionary Game Analysis with Evidence from Ningbo-Zhoushan Port. Mathematics, 13(12), 2025. https://doi.org/10.3390/math13122025