Enhanced-GA supports traffic signal optimizations and protects the urban environment

Manh Do Van, Hoc Tran Quang, Giang Le Khanh, Cong Tran Duc, Phuong Vu Ngoc
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Abstract

Much current research on traffic signal optimization often neglects the impact of environmental factors in urban areas. This can result in suboptimal solutions that do not consider the effects of traffic on air pollution and the overall urban environment. To address this issue, this article proposes a solution that combines Enhanced GA with a comprehensive framework for considering environmental factors in traffic signal optimization. By optimizing traffic signal timings and minimizing emissions, the proposed solution aims to reduce congestion and improve urban transportation networks' efficiency while protecting the environment. The proposed approach uses a set of optimization algorithms and assumptions to generate a comprehensive framework for traffic signal optimization. These algorithms and assumptions consider environmental factors such as air quality and the impact of traffic on the local ecosystem. Moreover, this article provided the enhanced genetic algorithm operators and suggested model formulation that could be applied in other research on traffic signal optimization directly to reduce calculation times and increase the efficiency of the novel suggested models
增强型全球导航支持交通信号优化,保护城市环境
目前关于交通信号优化的许多研究往往忽视了城市地区环境因素的影响。这可能会导致未考虑交通对空气污染和整体城市环境影响的次优解决方案。针对这一问题,本文提出了一种解决方案,将增强型 GA 与考虑交通信号优化中环境因素的综合框架相结合。通过优化交通信号时序并最大限度地减少排放,所提出的解决方案旨在减少拥堵、提高城市交通网络效率的同时保护环境。所提出的方法采用了一系列优化算法和假设,为交通信号优化提供了一个综合框架。这些算法和假设考虑了空气质量和交通对当地生态系统的影响等环境因素。此外,本文还提供了增强型遗传算法算子和建议的模型表述,可直接应用于其他交通信号优化研究中,以减少计算时间并提高建议的新型模型的效率。
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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