Statistical Analysis of Connected and Autonomous Vehicles (CAVs) Effects on the Environment in Terms of Pollutants and Fuel Consumption

Alireza Ansariyar, Safieh Laaly
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引用次数: 1

Abstract

Over the last decades, interest in integrating autonomous and connected technologies in vehicle design in order to improve mobility, safety, and reduce transportation's environmental impact has dramatically increased. The state-of-the-art specified that connected and autonomous vehicles (CAVs) ameliorate traffic mobility, safety, fuel/energy consumption, and reduce environmental pollution. The State of Maryland (MD) in the United States was selected as a case study, and the paper appraised CAVs' fuel consumption and air pollutants (CO, PM, and NOx), and utilized reasonable linear regression models to forecast CAV's environmental effects. The VISUM software was applied to simulate MD transport network as a multi-modal transport network and the required data on a set of variables were collected through an exhaustive survey. The amount of pollutants and fuel consumption were obtained for timestamps 2010 to 2021 from the macro simulation. Eventually, four linear regression models were suggested to predict the amount of CO, NOx, PM pollutants and, fuel consumption. The results demonstrated that CAVs' pollutants and fuel consumption have a significant correlation with income, age, and race of the CAV customers. Moreover, the reliability of four statistical models was compared with the reliability of macro simulation model outputs in year 2030. The error values of three pollutants and fuel consumption were obtained less than 9% by statistical models in SPSS. This research is expected to assist researchers and policymakers with planning decisions to reduce CAV environmental impacts in MD.
联网和自动驾驶汽车(cav)在污染物和燃料消耗方面对环境影响的统计分析
在过去的几十年里,人们对将自动驾驶和互联技术整合到车辆设计中以提高机动性、安全性并减少交通对环境的影响的兴趣急剧增加。最先进的技术指出,联网和自动驾驶汽车(cav)改善了交通机动性、安全性、燃料/能源消耗,并减少了环境污染。以美国马里兰州为例,评价了自动驾驶汽车的油耗和空气污染物(CO、PM和NOx),并利用合理的线性回归模型对自动驾驶汽车的环境影响进行了预测。应用VISUM软件将MD运输网络模拟为多式联运网络,并通过详尽的调查收集了一组变量所需的数据。从宏观模拟中获得了2010年至2021年时间戳的污染物量和燃料消耗量。最后,提出了四种线性回归模型来预测CO、NOx、PM污染物的数量和燃料消耗。结果表明,轿车的污染物和燃油消耗与收入、年龄和种族有显著的相关关系。并将4种统计模型的可靠性与2030年宏观模拟模型输出的可靠性进行了比较。三种污染物与油耗通过SPSS统计模型得到误差值小于9%。这项研究有望帮助研究人员和决策者制定计划决策,以减少CAV对MD的环境影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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