基于动态需求的元启发式公交站位鲁棒优化:以发展中国家为例

IF 1.1 Q3 TRANSPORTATION SCIENCE & TECHNOLOGY
M. Ghasedi, M. Ghorbanzadeh, I. Bargegol
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引用次数: 5

摘要

伊朗大部分城市公交系统的运行状况并不高效,提高公交系统运行效率所必需的常规公交调度、公交专用道等管理方法没有得到足够重视。因此,基于非均匀的乘客时空分布以及当地交通模式,实现公交站点的定位和优化站点数量的方法是重要的研究课题。因此,本研究旨在根据乘客在整个路线上的非均匀时空分布,研究公交系统走廊的建模,以优化公交吸引的乘客数量。为此,选择伊朗北部拉什特市从Vali-e-asr环岛到Gas环岛的8公里路线进行建模。采用Hammersley抽样法和遗传算法(GA)和粒子群算法(PSO)两种启发式优化技术生成非均匀种群并求解优化模型。因此,在不考虑参考不确定性的情况下,将本分析结果与采用概率分析的优化结果进行比较。最后,选择粒子群算法作为公交车站建模和定位的优越算法,因为它的运行时间更短,并且由于它具有更高的精度和对现实环境的适应性,证明了鲁棒优化模型的有效性。总体而言,尽管基于不确定分析的优化结果比基于确定分析的优化结果带来了更多的平均出行时间,但在公交系统的18个活跃小时内,新引入的站点覆盖了更多的人口集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Optimization of Bus Stop Placement Based on Dynamic Demand Using Meta Heuristic Approaches: A Case Study in a Developing Country
Abstract The operating condition of bus transit system has not been efficient in most cities of Iran, and many management methods such as regular bus scheduling, assigning exclusive bus lanes, etc., which are necessary for increasing the efficiency of this system, were not regarded enough. Thus, achieving a method for locating the bus stops and optimizing the number of such stops based on a non-homogeneous spatial and temporal distribution of passengers as well as the local traffic patterns are important to be investigated. As such, the present study aims to investigate the modeling of a bus transit system corridor according to the non-homogeneous spatial and temporal distribution of passengers throughout the route aiming at optimization of the number of attracted passengers to the bus. For this purpose, the 8-km route from Vali-e-asr roundabout to Gas roundabout in the city of Rasht in the north of Iran is selected for modeling. Hammersley sampling method, as well as two heuristic optimization techniques, including a Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) algorithm, are used for generating a non-uniform population and solving the optimization model. Therefore, the results of this analysis are compared to the optimization results by using the probabilistic analysis without considering the reference uncertainty. Finally, the PSO is selected as the superior algorithm for modeling and locating the bus stops due to its results in less travel time, and the validity of robust optimization model is shown due to its higher accuracy and adaptation to the real-world environment. Overall, although the optimization results based on indeterminate analysis in comparison to determinate analysis brought about more average travel time, more population sets were covered by the new introduced stops during 18 active hours of the bus transit system.
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来源期刊
Transport and Telecommunication Journal
Transport and Telecommunication Journal TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
3.00
自引率
0.00%
发文量
21
审稿时长
35 weeks
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