The multi-visit drone-assisted routing problem with soft time windows and stochastic truck travel times

IF 5.8 1区 工程技术 Q1 ECONOMICS
Shanshan Meng , Dong Li , Jiyin Liu , Yanru Chen
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引用次数: 0

Abstract

We consider a combined truck-drone delivery problem with stochastic truck travel times and soft time windows. A fleet of homogeneous trucks and drones are deployed in pairs to provide delivery services to customers. Each drone can be launched from and retrieved to its truck multiple times, and in each flight, a drone can serve one or more customers. Our objective is to determine the truck routes and drone flights that minimise the total cost, including time window violation penalties. We formulate this problem into a two-stage stochastic model with recourse action in the second stage to optimise the truck waiting time at each node. We approximate the stochastic model with a large-scale mixed-integer program using the sample average approximation (SAA) framework, which is computationally intractable. To this end, we propose a hybrid metaheuristic approach that incorporates SAA. The waiting times of each truck obtained in the planning phase are optimal against the sampled or estimated travel times along the entire route, but the actual values are known only once the truck has returned to the depot. To this end, we reformulate the second-stage model in a rolling-horizon manner, which can be easily implemented and efficiently solved in the execution phase. Extensive numerical experiments demonstrate the strong performance of the proposed metaheuristic approach and rolling-horizon model. The results also highlight the clear benefits of the stochastic modelling approach over its deterministic counterpart, with a pronounced reduction in the total cost in various scenarios.
具有软时间窗口和随机卡车旅行时间的无人机辅助多次访问路由问题
我们考虑的是卡车和无人机联合送货问题,该问题具有随机卡车行程时间和软时间窗口。由同质卡车和无人机组成的车队成对部署,为客户提供送货服务。每架无人机都可以多次从卡车上发射并收回,在每次飞行中,无人机可以为一个或多个客户提供服务。我们的目标是确定卡车路线和无人机航班,使总成本(包括时间窗口违规惩罚)最小化。我们将这一问题转化为一个两阶段随机模型,在第二阶段采取追索行动,以优化卡车在每个节点的等待时间。我们使用抽样平均近似(SAA)框架,用大规模混合整数程序来近似该随机模型,但这在计算上很难实现。为此,我们提出了一种结合 SAA 的混合元启发式方法。在规划阶段获得的每辆卡车的等待时间与整个路线上的采样或估计行驶时间相比是最优的,但实际值只有在卡车返回车厂后才能知道。为此,我们以滚动视距方式重新制定了第二阶段模型,在执行阶段可以轻松实现并高效求解。广泛的数值实验证明了所提出的元启发式方法和滚动地平线模型的强大性能。实验结果还凸显了随机建模方法相对于确定性建模方法的明显优势,在各种情况下都能显著降低总成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Transportation Research Part B-Methodological
Transportation Research Part B-Methodological 工程技术-工程:土木
CiteScore
12.40
自引率
8.80%
发文量
143
审稿时长
14.1 weeks
期刊介绍: Transportation Research: Part B publishes papers on all methodological aspects of the subject, particularly those that require mathematical analysis. The general theme of the journal is the development and solution of problems that are adequately motivated to deal with important aspects of the design and/or analysis of transportation systems. Areas covered include: traffic flow; design and analysis of transportation networks; control and scheduling; optimization; queuing theory; logistics; supply chains; development and application of statistical, econometric and mathematical models to address transportation problems; cost models; pricing and/or investment; traveler or shipper behavior; cost-benefit methodologies.
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