基于机器学习的交通NOx污染预测和健康成本估算:以加拿大多伦多为例

Q4 Energy
Hamidreza Shamsi, E. Haghi, Manh‐Kien Tran, S. Walker, K. Raahemifar, Michael Fowler
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引用次数: 0

摘要

道路交通是空气污染的一个重要来源,对人类健康产生有害影响。为了减少运输部门化石燃料消耗对健康和环境的影响,许多国家实施了促进电动汽车部署的政策。在制定支持电动汽车使用的政策时,需要考虑的一个重要因素是化石燃料消耗对健康的货币化影响。本研究旨在调查在加拿大多伦多市以零排放车辆取代内燃机车辆(icev)的健康效益。在这项工作中,我们开发了一个长短期记忆(LSTM)模型来预测未来的氮氧化物浓度,考虑交通量、天气、一天中的时间和历史氮氧化物浓度的影响。然后使用开发的模型预测多伦多四种不同情景下零排放车辆部署的长期氮氧化物浓度和年平均氮氧化物减少量。此外,采用插值方法对多伦多市所有传播区(DA)的污染减少量进行了预测,并进行了健康成本评估,估算了所有情景下的健康效益。本工作的模拟结果表明,在所有情景下,多伦多西部地区的氮氧化物浓度都降低得更高。这些减少是这些地区交通量和污染之间相关性较高的结果。结果还表明,ICEV交通量减少10%,每年可预防70例过早死亡,相当于每年5.6亿加元的健康效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic NOx Pollution Prediction and Health Cost Estimation Using Machine Learning: A Case Study of Toronto, Canada
Road traffic is a significant source of air pollution that has a harmful impact on human health. To reduce the health and environmental impacts of fossil fuel consumption in the transportation sector, many countries have implemented policies to promote the deployment of electric vehicles (EVs). A vital factor to consider when designing policies to support EV use is the monetized health impacts of fossil fuel consumption. This research aims to investigate the health benefit of replacing internal combustion engine vehicles (ICEVs) with zero-emission vehicles in the city of Toronto, Canada. A long short-term memory (LSTM) model is developed in this work to predict future NOx concentrations considering the effect of the traffic volume, weather, time of day, and historical NOx concentrations. The developed model is then used to predict long-term NOx concentrations and annual average NOx reduction from zero-emission vehicle deployment in four different scenarios in Toronto. Additionally, interpolation methods are used to predict the pollution reduction in all Dissemination Areas (DA) of Toronto, and a health cost assessment is conducted to estimate the health benefit in all the scenarios. The results of the modeling in this work show that the western areas of Toronto experience higher NOx concentration reduction in all scenarios. These reductions are the result of the higher correlation between traffic volume and pollution in those areas. The results also show that with a 10% reduction in ICEV traffic volume, 70 premature deaths can be prevented annually, equivalent to 560 million CAD in health benefits per year.
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Journal of Nuclear Energy Science and Power Generation Technology
Journal of Nuclear Energy Science and Power Generation Technology Energy-Energy Engineering and Power Technology
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