Multi-objective Eco-routing in a Distributed Routing Framework

Lama Alfaseeh, Shadi Djavadian, R. Tu, B. Farooq, M. Hatzopoulou
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引用次数: 7

Abstract

A multi-objective eco-routing is developed and implemented in a real-time dynamic routing system based on a distributed network of intelligent intersections and connected & autonomous vehicles (CAVs). The performance of the proposed eco-routing system and its impact on travel time (TT), vehicle kilometres travelled (VKT), greenhouse gas (GHG), and Nitrogen Oxide (NOx) emissions are analyzed on Downtown Toronto network in an agent-based traffic simulation platform. A comparison between estimation approaches of TT based on two levels of spatial and temporal resolution is applied. The results showed that routing to optimize TT while adopting higher level of spatial and temporal resolution is the best among the single objective routing scenarios. Multi-objective routing strategies further reduced TT, GHG, and NOx when comparing to routing solely based on TT. Estimation approach based on a higher level of disaggregation produced substantially better results due to its ability to capture traffic characteristics more efficiently.
分布式路由框架中的多目标生态路由
在基于智能交叉口和自动驾驶汽车(cav)分布式网络的实时动态路由系统中开发并实现了多目标生态路由。在基于agent的交通模拟平台上,以多伦多市中心网络为例,分析了生态路线系统的性能及其对出行时间(TT)、车辆行驶公里数(VKT)、温室气体(GHG)和氮氧化物(NOx)排放的影响。比较了基于两个时空分辨率水平的TT估计方法。结果表明,在单目标路由方案中,采用更高时空分辨率的优化TT路由方案效果最好。与仅基于TT的路由相比,多目标路由策略进一步降低了TT、GHG和NOx。基于更高层次分解的估计方法产生了更好的结果,因为它能够更有效地捕获流量特征。
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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