基于ADMM分解算法的高速铁路车辆调度

L. Zhou, Y. Yue, Mingxuan Zhong, F. Jin
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引用次数: 0

摘要

随着近年来高速铁路的快速发展,机车车辆调度优化已成为运输组织的重要组成部分,可以促进减少机车车辆数量,提高运行效率。以列车时刻表为输入条件,采用时-空状态网络来制定车辆调度优化问题,并建立优化模型。以列车总运行时间成本最小为目标,约束条件有列车任务分配唯一性约束、流量平衡约束、一级维护约束等。利用乘法器的交替方向法(ADMM)算法求解该模型,该模型是整数线性规划的一个特例。将多车辆调度优化问题分解为每辆车辆的最小费用列车路径子问题,采用改进的动态规划方法求解子问题。京津高铁实例试验。我们设置了ADMM中的拉格朗日乘数和惩罚系数的值,对该案例进行了测试,并计算了每辆机车的利用率。验证了模型和算法的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-speed Railway Rolling Stock Scheduling Based on ADMM Decomposition Algorithm
With the rapid development of high-speed railways in recent years, the optimization of the rolling stock scheduling has become an important part of transportation organization, which can promote to reduce the number of rolling stocks and improve the efficiency of operation. We take the train timetable as the input condition, adopt the time-space-state network to formulate the optimization problem of rolling stock scheduling, and build the optimization model. The goal is to minimize the total operating time cost of the train, the constraints is the train task assignment unique constraints, flow balance constraints, the first-level maintenance constraints etc. We use the Alternating Direction Method of Multipliers (ADMM) algorithm to solve the model, which is a special case of integer linear programming. The multi rolling stocks scheduling optimization problem is decomposed into the least-cost train path sub-problem of every rolling stock, we solve sub-problems by the improved dynamic programming method. The Beijing-Tianjin high-speed railway instance is tested. We set the value of the lagrange multiplier and the penalty coefficient in ADMM, test this case, and calculate the utilization of every rolling stock. The practicability of the model and algorithm is verified.
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