带时间窗的多目标取货问题的一种进化方法

Abel García-Nájera, M. Gutiérrez-Ándrade
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引用次数: 7

摘要

取货和送货问题(PDP)在现实生活中有许多应用。在这个问题中,有一个客户集,它被划分为两个子集:需要一定数量产品的客户(交付)和提供产品的客户(取货)。还有一组运输请求,指定必须从原始客户处提取并交付给目的地客户的产品数量。有许多车辆可用于完成这些任务。PDP包括寻找成本最小的路线集合,这样所有的运输请求都能得到服务。传统的方法是先最小化路线的数量,然后最小化行程的距离,但是,如果这些目标被认为是同等重要的,这个问题可以作为一个双目标问题来解决。此外,时间并不总是与距离成正比,因此旅行时间也可以被认为是一个重要的优化标准,因此,PDP必须被视为一个三目标问题。本文采用进化算法将PDP作为一个多目标问题来求解,并使用合适的多目标性能评估工具对其性能进行评估。
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An evolutionary approach to the multi-objective pickup and delivery problem with time windows
The pickup and delivery problem (PDP) has many real-life applications. In this problem there is a customer set which is partitioned into two subsets: the customers requiring an amount of product (delivery) and the customers providing the product (pickup). There is also a set of transportation requests, which specify the quantity of product that has to be picked up from an origin customer and delivered to a destination customer. There exist a number of vehicles available to be used for completing these tasks. PDP consists of finding a collection of routes with minimum cost, such that all transportation request are serviced. Traditionally, the number of routes has been minimized first, and then the travel distance, however, if these objectives are considered to be equally important, the problem can be tackled as a bi-objective problem. Moreover, time is not always directly proportional to distance, thus travel time can also be considered an important criterion to be optimized and, consequently, PDP has to be regarded as a tri-objective problem. In this paper, we solve PDP as a problem with multiple objectives by means of an evolutionary algorithm and evaluate its performance with proper multi-objective performance tools.
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