Traveling Transporter Problem: Arranging a New Circular Route in a Public Transportation System Based on Heterogeneous Non-Monotonic Urban Data

Fandel Lin, Hsun-Ping Hsieh
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引用次数: 1

Abstract

Hybrid computational intelligent systems that synergize learning-based inference models and route planning strategies have thrived in recent years. In this article, we focus on the non-monotonicity originated from heterogeneous urban data, as well as heuristics based on neural networks, and thereafter formulate the traveling transporter problem (TTP). TTP is a multi-criteria optimization problem and may be applied to the circular route deployment in public transportation. In particular, TTP aims to find an optimized route that maximizes passenger flow according to a neural-network-based inference model and minimizes the length of the route given several constraints, including must-visit stations and the requirement for additional ones. As a variation of the traveling salesman problem (TSP), we propose a framework that first recommends new stations’ location while considering the herding effect between stations, and thereafter combines state-of-the-art TSP solvers and a metaheuristic named Trembling Hand, which is inspired by self-efficacy for solving TTP. Precisely, the proposed Trembling Hand enhances the spatial exploration considering the structural patterns, previous actions, and aging factors. Evaluation conducted on two real-world mass transit systems, Tainan and Chicago, shows that the proposed framework can outperform other state-of-the-art methods by securing the Pareto-optimal toward the objectives of TTP among comparative methods under various constrained settings.
交通运输者问题:基于异构非单调城市数据的公共交通系统环形路线安排
将基于学习的推理模型和路线规划策略相结合的混合计算智能系统近年来蓬勃发展。在本文中,我们重点研究了异构城市数据的非单调性,以及基于神经网络的启发式方法,并在此基础上提出了交通运输问题(TTP)。TTP是一个多准则优化问题,可应用于公共交通环形路线的部署。其中,TTP的目标是根据基于神经网络的推理模型,找到一条客流最大化的优化路线,并在给定几个约束条件(包括必到站点和额外站点的需求)下最小化路线长度。作为旅行推销员问题(TSP)的一个变体,我们提出了一个框架,该框架首先在考虑站点之间羊群效应的情况下推荐新站点的位置,然后将最先进的TSP求解方法与受自我效能启发的元启发式方法“颤抖之手”结合起来解决TSP问题。确切地说,颤抖之手增强了空间探索,考虑了结构模式、先前行为和老化因素。对台南和芝加哥两个现实世界的公共交通系统进行的评估表明,在各种约束条件下,通过在比较方法中确保实现TTP目标的帕累托最优,所提出的框架可以优于其他最先进的方法。
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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