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Tackling a VRP challenge to redistribute scarce equipment within time windows using metaheuristic algorithms

机译:使用元启发式算法应对VRP挑战,以便在时间窗口内重新分配稀有设备

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This paper reports on the results of the VeRoLog Solver Challenge 2016-2017: the third solver challenge facilitated by VeRoLog, the EURO Working Group on Vehicle Routing and Logistics Optimization. The authors are the winners of second and third places, combined with members of the challenge organizing committee. The problem central to the challenge was a rich VRP: expensive and, therefore, scarce equipment was to be redistributed over customer locations within time windows. The difficulty was in creating combinations of pickups and deliveries that reduce the amount of equipment needed to execute the schedule, as well as the lengths of the routes and the number of vehicles used. This paper gives a description of the solution methods of the above-mentioned participants. The second place method involves sequences of 22 low level heuristics: each of these heuristics is associated with a transition probability to move to another low level heuristic. A randomly drawn sequence of these heuristics is applied to an initial solution, after which the probabilities are updated depending on whether or not this sequence improved the objective value, hence increasing the chance of selecting the sequences that generate improved solutions. The third place method decomposes the problem into two independent parts: first, it schedules the delivery days for all requests using a genetic algorithm. Each schedule in the genetic algorithm is evaluated by estimating its cost using a deterministic routing algorithm that constructs feasible routes for each day. After spending 80 percent of time in this phase, the last 20 percent of the computation time is spent on Variable Neighborhood Descent to further improve the routes found by the deterministic routing algorithm. This article finishes with an in-depth comparison of the results of the two approaches.
机译:本文报告了2016-2017年VeRoLog解算器挑战赛的结果:由欧洲车辆路线和物流优化工作组VeRoLog推动的第三次解算器挑战。作者是挑战赛组委会的第二名和第三名。挑战的中心问题是丰富的VRP:昂贵的设备,因此稀缺的设备将在时间范围内重新分配到客户位置。困难在于创建取件和交付的组合,以减少执行计划所需的设备数量,以及路线的长度和所用车辆的数量。本文介绍了上述参与者的解决方法。第二种方法涉及22个低级启发式方法的序列:这些启发式方法中的每一个都与转移到另一个低级启发式方法的转换概率相关。将这些试探法的随机绘制序列应用于初始解,然后根据该序列是否提高了目标值来更新概率,从而增加了选择生成改进解的序列的机会。第三名方法将问题分解为两个独立的部分:首先,它使用遗传算法安排所有请求的交货日期。遗传算法中的每个计划都通过使用确定性路由算法估算其成本来进行评估,确定性路由算法每天构建可行的路由。在此阶段花费了80%的时间后,最后20%的计算时间都花在了可变邻域下降上,以进一步改善确定性路由算法找到的路由。本文最后对两种方法的结果进行了深入的比较。

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