求解时变车辆路径问题的改进蚁群算法

Yongqiang Liu, Qing Chang, Huagang Xiong
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引用次数: 7

摘要

车辆路径问题是一个重要的组合优化问题。它在物流优化和供应链管理理论中有着重要的地位。在真实交通网络中,由于交通流、交通事件等因素的影响,道路的行驶速度和行驶时间具有较大的时变性和随机性。研究时变网络中的车辆路径问题具有更大的实用价值。结合时变网络的特点,给出了时变车辆路径问题的数学模型。在此基础上,对传统的蚁群优化算法进行了改进。提出了一种适用于时变网络的蚂蚁路径转移新策略和信息素动态更新新策略。在此基础上,提出了求解时变网络中车辆路径问题的改进蚁群算法。仿真结果表明,该算法能有效地解决时变网络中的车辆路径问题,具有较好的计算效率和收敛速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Ant Colony Algorithm for the Time-Dependent Vehicle Routing Problem
Vehicle routing problem is an important combinatorial optimization problem. It has an important position in logistics optimization and supply chain management theory. Due to traffic flow, traffic incidents and other factors, the travel speed and travel time of road has large time-variability and randomness in real transport network. The study of vehicle routing problem in time-dependent network has even more practical value. This paper combines features of time-dependent networks and gives the mathematical models of time-dependent vehicle routing problem. On this basis, the traditional ant colony optimization algorithm is improved. A new path transfer strategy of ants and new dynamic pheromone update strategy applicable to time-dependent network are proposed. Based on these strategies, the improved ant colony algorithm is given for solving the vehicle routing problem in time-dependent network. The simulation results show that the algorithm can effectively solve the vehicle routing problem in time-dependent network and has better computational efficiency and convergence speed.
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