贝叶斯优化方法用于调整分组遗传算法,以解决实际取货和送货问题

Logistics Pub Date : 2024-02-04 DOI:10.3390/logistics8010014
Cornelius Rüther, Julia Rieck
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引用次数: 0

摘要

背景:具有时间窗口和异构车辆车队的多仓库取货和交货问题(MDPDPTWHV)是一个强烈的面向实际的路由问题,具有许多现实世界的约束条件。因此,自动选择最佳参数配置可提高整体求解质量。方法为了求解 MDPDPTWHV,我们提出了一个包含多个算子和种群管理变体的分组遗传算法(GGA)框架。我们引入了贝叶斯优化(BO)方法来优化 GGA 的参数配置。参数调整在五个数据集上进行了评估,这五个数据集的结构特征各不相同,包含 1200 个问题实例。参数调整后的 GGA 结果与初始 GGA 参数配置和最先进的自适应大邻域搜索 (ALNS) 进行了比较。结果:所提出的 GGA 框架比 ALNS 获得了更好的解决方案质量,即使是所使用的初始参数配置也是如此。对于每一类问题,相对误差的平均值都小于 0.9%,标准偏差小于 1.31%。而对于 ALNS,这些数值最多可高出三倍,GGA 比 ALNS 快 38%。结论结果表明,作为一种参数调整方法,BO 是一种很好的选择,可以在每个数据集的所有实例中提高所考虑的元启发式的性能。此外,具有相同特征的每类问题的最佳参数配置能够显著提高找到最佳解决方案的频率,以及该解决方案的相对误差。
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A Bayesian Optimization Approach for Tuning a Grouping Genetic Algorithm for Solving Practically Oriented Pickup and Delivery Problems
Background: The Multi Depot Pickup and Delivery Problem with Time Windows and Heterogeneous Vehicle Fleets (MDPDPTWHV) is a strongly practically oriented routing problem with many real-world constraints. Due to its complexity, solution approaches with sufficiently good quality ideally contain several operators with certain probabilities.Thus, automatically selecting the best parameter configurations enhances the overall solution quality. Methods: To solve the MDPDPTWHV, we present a Grouping Genetic Algorithm (GGA) framework with several operators and population management variants. A Bayesian Optimization (BO) approach is introduced to optimize the GGA’s parameter configuration. The parameter tuning is evaluated on five data sets which differ in several structural characteristics and contain 1200 problem instances. The outcomes of the parameter-tuned GGA are compared to both the initial GGA parameter configuration and a state-of-the-art Adaptive Large Neighborhood Search (ALNS). Results: The presented GGA framework achieves a better solution quality than the ALNS, even for the initial parameter configuration used. The mean value of the relative error is less than 0.9% and its standard deviation is less than 1.31% for every problem class. For the ALNS, these values are up to three times higher and the GGA is up to 38% faster than the ALNS. Conclusions: It is shown that the BO, as a parameter tuning approach, is a good choice in improving the performance of the considered meta-heuristic over all instances in each data set. In addition, the best parameter configuration per problem class with the same characteristics is able to improve both the frequency of finding the best solution, as well as the relative error to this solution, significantly.
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