Collaborative truck multi-drone routing and scheduling problem: Package delivery with flexible launch and recovery sites

无人机 卡车 调度(生产过程) 计算机科学 车辆路径问题 作业车间调度 模拟退火 利用 整数规划 布线(电子设计自动化) 运筹学 实时计算 工程类 计算机网络 汽车工程 运营管理 计算机安全 生物 遗传学 算法
作者
Mohamed Salama,Sharan Srinivas
出处
期刊:Transportation Research Part E-logistics and Transportation Review [Elsevier BV]
卷期号:164: 102788-102788 被引量:167
标识
DOI:10.1016/j.tre.2022.102788
摘要

This paper deals with the problem of coordinating a truck and multiple heterogeneous unmanned aerial vehicles (UAVs or drones) for last-mile package deliveries. Existing literature on truck–drone tandems predominantly restricts the UAV launch and recovery operations (LARO) to customer locations. Such a constrained setting may not be able to fully exploit the capability of drones. Moreover, this assumption may not accurately reflect the actual delivery operations. In this research, we address these gaps and introduce a new variant of truck–drone tandem that allows the truck to stop at non-customer locations (referred to as flexible sites) for drone LARO. The proposed variant also accounts for three key decisions — (i) assignment of each customer location to a vehicle, (ii) routing of truck and UAVs, and (iii) scheduling drone LARO and truck operator activities at each stop, which are always not simultaneously considered in the literature. A mixed integer linear programming model is formulated to jointly optimize the three decisions with the objective of minimizing the delivery completion time (or makespan). To handle large problem instances, we develop an optimization-enabled two-phase search algorithm by hybridizing simulated annealing and variable neighborhood search. Numerical analysis demonstrates substantial improvement in delivery efficiency of using flexible sites for LARO as opposed to the existing approach of restricting truck stop locations. Finally, several insights on drone utilization and flexible site selection are provided based on our findings.
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