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Data-Driven Optimization of Public Transit Schedule

机译:数据驱动的公共交通时间表优化

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Bus transit systems are the backbone of public transportation in the United States. An important indicator of the quality of service in such infrastructures is on-time performance at stops, with published transit schedules playing an integral role governing the level of success of the service. However there are relatively few optimization architectures leveraging stochastic search that focus on optimizing bus timetables with the objective of maximizing probability of bus arrivals at timepoints with delays within desired on-time ranges. In addition to this, there is a lack of substantial research considering monthly and seasonal variations of delay patterns integrated with such optimization strategies. To address these, this paper makes the following contributions to the corpus of studies on transit on-time performance optimization: (a) an unsupervised clustering mechanism is presented which groups months with similar seasonal delay patterns, (b) the problem is formulated as a single-objective optimization task and a greedy algorithm, a genetic algorithm (GA) as well as a particle swarm optimization (PSO) algorithm are employed to solve it, (c) a detailed discussion on empirical results comparing the algorithms are provided and sensitivity analysis on hyper-parameters of the heuristics are presented along with execution times, which will help practitioners looking at similar problems. The analyses conducted are insightful in the local context of improving public transit scheduling in the Nashville metro region as well as informative from a global perspective as an elaborate case study which builds upon the growing corpus of empirical studies using nature-inspired approaches to transit schedule optimization.
机译:公交系统是美国公共交通的骨干。此类基础设施中服务质量的重要指标是站点的准时性能,已发布的运输时间表在支配服务成功水平方面起着不可或缺的作用。但是,很少有利用随机搜索的优化体系结构专注于优化公交时刻表,其目的是使公交车在某个时间点的到达时间具有所需导通时间范围内的延迟,从而使公交车到达的概率最大化。除此之外,缺乏充分的研究来考虑与这种优化策略相集成的延迟模式的月度和季节变化。为了解决这些问题,本文对交通准时绩效优化研究做出了以下贡献:(a)提出了一种无监督的聚类机制,该机制将具有相似季节性延迟模式的月份进行分组,(b)将问题表述为使用单目标优化任务和贪婪算法,遗传算法(GA)以及粒子群优化(PSO)算法来解决它;(c)详细讨论经验结果,对算法进行比较并进行敏感性分析关于启发式超参数的介绍与执行时间一起使用,这将有助于从业人员研究类似的问题。所进行的分析在改善纳什维尔大都市地区的公共交通调度的当地环境中具有深刻见解,并且作为一项详尽的案例研究,从全球角度提供了有益的信息,该案例研究建立在使用自然启发性方法进行交通调度优化的经验研究的日益增长的基础上。

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