Multi-period vehicle routing problem with time windows for drug distribution in the epidemic situation

•We integrate epidemic spread model and multi-period vehicle routing problem to consider the synergy between them.•An ε-global optimization method and a hybrid tabu search heuristic are applied to solve different size instances.•Extensive test experiments are conducted to study the performance of ou...

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Vydáno v:Transportation research. Part C, Emerging technologies Ročník 160; s. 104484
Hlavní autoři: Zhang, Jie, Li, Yanfeng, Lu, Zhaoyang
Médium: Journal Article
Jazyk:angličtina
Vydáno: Elsevier Ltd 01.03.2024
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ISSN:0968-090X
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Shrnutí:•We integrate epidemic spread model and multi-period vehicle routing problem to consider the synergy between them.•An ε-global optimization method and a hybrid tabu search heuristic are applied to solve different size instances.•Extensive test experiments are conducted to study the performance of our methods. This paper investigates a novel drug distribution system for the epidemic situation by linking two separate models. The improved SEIQR spread model and the multi-period vehicle routing optimization model are integrated to fit the epidemic environment. The epidemic spread model is used to capture virus transmission characteristics and drug demand fluctuations. Given this, we formally describe and model how to minimize the total travel time, the relative psychological cost, and the economic cost in the multi-period by considering realistic features including time-varying demand, priority distribution, and temperature control. Furthermore, we adopt an ε-global optimization method with the outer-approximation scheme for yielding global ε-optimal solutions in small instances and propose a hybrid tabu search algorithm (HTS) to solve large instances. In the HTS algorithm, the initial solution is constructed using an improved CW algorithm and then several neighborhood operators are developed to handle intra-route and inter-route operations, destroy and repair operators are embedded in the tabu search framework to facilitate better solutions. Finally, extensive test experiments are conducted to demonstrate the performance of our proposed methods. An empirical case study of Chongqing city, China indicates the effectiveness of the periodic dynamic update mechanism and optimization algorithms. The results of the sensitivity analysis provide some management implications regarding drug distribution optimization in the event of a sudden epidemic situation.
ISSN:0968-090X
DOI:10.1016/j.trc.2024.104484