运筹与管理 ›› 2025, Vol. 34 ›› Issue (5): 209-216.DOI: 10.12005/orms.2025.0164

• 应用研究 • 上一篇    下一篇

基于框架效应的机动车减污降碳协同效应研究

贾书伟1, 朱宛明昊2   

  1. 1.河南师范大学 政治与公共管理学院,河南 新乡 453007;
    2.河南农业大学 信息与管理科学学院,河南 郑州 450046
  • 收稿日期:2023-01-28 发布日期:2025-08-26
  • 通讯作者: 贾书伟(1982-),男河南平顶山人,博士(后),副教授研究方向:复杂系统建模与仿真,资源与环境管理。
  • 作者简介:贾书伟(1982-),男,河南平顶山人,博士(后),副教授,研究方向:复杂系统建模与仿真,资源与环境管理。
  • 基金资助:
    国家自然科学基金资助项目(11901167);中国博士后科学基金资助项目(2021M690889);河南省哲学社会科学规划项目(2022BJJ052);河南省软科学研究计划项目(232400410057)

Research on Synergistic Effect of Vehicle Pollution Control andCarbon Reduction Based on Framework Effect

JIA Shuwei1, ZHU Wanminghao2   

  1. 1. School of Politics and Public Administration, Henan Normal University, Xinxiang 453007, China;
    2. College of Information and Management Science, Henan Agricultural University, Zhengzhou 450046, China
  • Received:2023-01-28 Published:2025-08-26

摘要: “双碳”目标导向下,城市交通污染物与CO2减排(简称“减污降碳”)的协同效应研究已成为一项紧迫任务。为此,将系统动力学与行为经济学理论相结合,引入碳税政策,提出一种考虑框架效应的机动车出行心理决策算法,并将其应用到城市交通减污降碳的管理模型中。通过动态仿真和对比分析,揭示基准情景、绿色低碳及心理联动等情景对机动车减污降碳协同效应的影响效果,探寻实现增效的优化方案。结果表明:载客与载货汽车的尾气排放具有较大差异,单一碳税政策能够降低机动车污染物和CO2排放量,具有协同效应;双因素驱动下绿色低碳情景和心理联动情景均具有协同效应,相较于基准情景,心理联动情景使得机动车CO2和PM2. 5存量大约分别下降了23. 3%和23. 6%。最后,分别从优化经济调控模式、注重客货减排差异性及强化心理因素引导等层面提出对策建议,这对我国“双碳”目标的实现具有一定的助推作用。

关键词: 减污降碳, 协同效益, 碳税, 框架效应, 系统动力学

Abstract: For the target of carbon peak and carbon neutrality, the research on the mechanism of urban traffic pollutants and CO2 reduction (referred to as “pollution control and carbon reduction”) has become an urgent task. Transportation accounts for 24% of global CO2 emissions, while road transportation accounts for about 18%. However, transportation sector accounts for a significant proportion of energy consumption, with road transportation emissions bearing the brunt. The greenhouse gases and atmospheric pollutants generated by vehicle emissions have a relatively adverse impact on climate, economy, and people’s physical and mental health. Therefore, research on the synergistic effects of urban traffic pollution control and carbon reduction (TPCCR) has important practical significance.
In this article, the system dynamics and behavioral economics theory are combined, and a frame-effect-based-motor-vehicle-trip-psychological-decision-making algorithm is constructed, considering the carbon tax policy, which is applied to the management of TPCCR. Through dynamic simulation and comparative analysis, the impact of the baseline scenario, green low-carbon and psychological linkage scenarios on the synergistic effect of TPCCR is revealed. The optimization scenarios have also been formulated. The data mainly comes from the “China Mobile Source Environmental Management Annual Report”, “Beijing Transport Development Annual Report”, “Beijing Statistical Yearbook”, “China Statistical Yearbook”, and some existing literature.
The results show that: the single carbon tax policy can reduce motor vehicle pollutants and CO2 emissions to a certain extent, with synergistic effects, but the emission reduction effect on PM2. 5 is still limited. The pollutants and CO2 emissions reduction of passenger and trucks vary significantly, especially during the epidemic period. The improved model (low-carbon and psychological linkage scenarios) can achieve the goal of carbon reduction and has certain pollution reduction performance. Compared with the original model, the low-carbon and psychological linkage scenarios show a decrease of approximately 5.8% and 23. 3% in the amount of CO2, and a decrease of approximately 5.9% and 23. 6% in the amount of PM2. 5. Therefore, both types of improved models have synergistic effects on reducing pollution and carbon emissions, but the effect of the low-carbon scenario is relatively limited. The psychological linkage model that emphasizes the strength of carbon tax policies and framework effects has a more significant effect. Based on the above findings, the following suggestions are proposed from the perspectives of optimizing economic regulation models, emphasizing differences in passenger and freight emissions reduction, and strengthening psychological guidance.
Some governments have tried to take measures in response to the call for low carbon, but the CO2 and PM2. 5 content of motor vehicles still has risen rapidly year by year in the current situation, which does harm to the economy and environment. The single carbon tax policy can reduce the total emissions of motor vehicle pollutants (including CO2 and PM2. 5), and has a synergistic effect on reducing pollution and carbon emissions of motor vehicles. In the carbon tax policy, the psychological guidance generated by the framework effect is taken into account to make a relatively significant change in the synergistic emission reduction effect. The reasons may include two aspects. The first is that the framework effect enhances the intensity of the carbon tax policy and reduces the number of motor vehicle trips to a certain extent. The second is to add psychological guidance to the carbon tax policy, which makes enterprises vulnerable to the impact of the positive framework. In the face of uncertain operating income and the tax relief that can be obtained by reaching the emission reduction target, enterprises choose the tax relief with certainty, and the logistics and passenger flow controlled by enterprises can be reduced, thus reducing the emissions of CO2 and PM2. 5 from motor vehicles. Therefore, the two-factor drive has the synergistic effect of “1+1>2” for reducing pollution and CO2 of motor vehicles.

Key words: pollution control and carbon reduction, synergistic effect, carbon tax, framing effect, system dynamics

中图分类号: