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A Dynamic Analysis of a Motor Vehicle Pollutant Emission Reduction Management Model Based on the SD-GM Approach

机译:基于SD-GM方法的机动车污染减排管理模型动态分析

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摘要

The present study constructed a motor vehicle pollution charging management model by primarily reducing the trip volume of motor vehicles, introducing the charging mechanism, and employing integration of the system dynamics and grey model theory (SD-GM) from the perspective of the environment and society. To optimize the chosen parameters, the dynamic growth rate graphical function of the gross domestic product (GDP) was firstly generated based on the GM(1,1) prediction theory. In addition, verification was conducted in accordance with the degree of grey incidence. Secondly, the net migration rate was estimated based on the attraction degree of the city and the average net migration rate.The degree of PMx and NO_x pollution was finally defined and endowed with different weights to define the degree of air pollution in accordance with the actual degree of air pollution in Beijing. In terms of model testing and verification, we conducted extreme condition tests and sensitivity tests and checked the residual error. Finally, this study analyzed and compared different policies, which indicate that the amount of motor vehicle trips (AMVT), the amount of PMx generation (APMG), the amount of NO_x generation (ANOG), and the degree of air pollution (DAP) decreased by 31.01%, 26.52%, 21.29%, and 12.50%, respectively.
机译:本研究通过主要减少机动车辆的跳闸量,引入充电机制,利用系统动态和灰色模型理论(SD-GM)从环境与社会的角度来构建机动车污染充电管理模型。为了优化所选择的参数,首先基于GM(1,1)预测理论生成了国内生产总值(GDP)的动态生长速率图形功能。此外,验证按照灰色发病程度进行。其次,基于城市的吸引程度和平均净迁移率的净迁移率估计。最终定义PMX和NO_X污染的程度并赋予不同的权重,以确定根据实际的空气污染程度北京空气污染程度。在模型测试和验证方面,我们进行了极端的状态测试和灵敏度测试,并检查了残余错误。最后,本研究分析并比较了不同的政策,表明机动车行程(AMVT)的数量,PMX生成量(APMG),NO_X生成(ANOG)的量,以及空气污染程度(DAP)减少了31.01%,26.52%,21.29%和12.50%。

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