基于路网感知的按需公共交通实时路线生成动态负载均衡技术

Thilina Perera, L. Wijerathna, Deshya Wijesundera, T. Srikanthan
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引用次数: 0

摘要

按需公共交通系统需要实时计算路线,以确保用户友好的响应服务,同时最大限度地减少车队的车辆行驶里程(VMT),以增加运营商的利润。为了确保响应性,快速生成接近最优解的启发式算法优于耗时的精确计算。为了进一步保证启发式算法的可扩展性,特别是在解决大型问题时,并行计算技术需要将工作负载均匀地分布在多个分区上,同时在单个分区内保持乘客在相似路线上较少绕路,以减少VMT。然而,现有的工作在划分工作负载时忽略了这些因素。本文提出了一种路网感知树分区算法,该算法不仅考虑了基于最短路径的路由,而且考虑了实时创建平衡分区的工作负载。在实际路网上的实验结果表明,该算法在结果质量和运行时间上都优于一种著名的无监督学习算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Road-network aware Dynamic Workload Balancing Technique for Real-time Route Generation in On-Demand Public Transit
On-demand public transit systems require real-time computation of routes to ensure a user-friendly responsive service while also minimizing the vehicle miles traveled (VMT) of the fleet for increasing the profits of an operator. To ensure responsiveness, heuristic algorithms that rapidly generate near-optimal solutions are preferred over time-consuming exact computations. In order to further ensure the scalability of heuristic algorithms, especially to solve large problems, parallel computing techniques need to distribute the workload evenly across several partitions, while keeping passengers on similar routes with less detour in a single partition to reduce the VMT. However, existing works ignore these factors when partitioning the workload. This work proposes a road-network aware tree partitioning algorithm that not only considers the shortest path based routes but also the workloads to create balanced partitions in real-time. Experimental results on a real road-network show that the proposed algorithm outperforms a well-known unsupervised learning algorithm in terms of quality of results and runtime.
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