4.7 Article

Exact and metaheuristic algorithms for the vehicle routing problem with a factory-in-a-box in multi-objective settings

Journal

ADVANCED ENGINEERING INFORMATICS
Volume 52, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.aei.2022.101623

Keywords

Supply chains; Urgent demand; Factory-in-a-box; Vehicle routing problem; Metaheuristics; Hybrid algorithms

Funding

  1. National Science Foundation [CMMI-1901109]

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This study examines the decisions of vehicle selection and supply chain optimization in factory-in-a-box manufacturing and presents a multi-objective optimization model and solution method. A case study shows that the developed method outperforms traditional optimization methods and other metaheuristics.
Emergencies, such as pandemics (e.g., COVID-19), warrant urgent production and distribution of goods under disrupted supply chain conditions. An innovative logistics solution to meet the urgent demand during emer-gencies could be the factory-in-a-box manufacturing concept. The factory-in-a-box manufacturing concept de-ploys vehicles to transport containers that are used to install production modules (i.e., factories). The vehicles travel to customer locations and perform on-site production. Factory-in-a-box supply chain optimization is associated with a wide array of decisions. This study focuses on selection of vehicles for factory-in-a-box manufacturing and decisions regarding the optimal routes within the supply chain consisting of a depot, sup-pliers, manufacturers, and customers. Moreover, in order to contrast the options of factory-in-a-box manufacturing with those of conventional manufacturing, the location of the final production is determined for each customer (i.e., factory-in-a-box manufacturing with production at the customer location or conventional manufacturing with production at the manufacturer locations). A novel multi-objective optimization model is presented for the vehicle routing problem with a factory-in-a-box that aims to minimize the total cost associated with traversing the edges of the network and the total cost associated with visiting the nodes of the network. A customized multi-objective hybrid metaheuristic solution algorithm that directly considers problem-specific properties is designed as a solution approach. A case study is performed for a vaccination project involving factory-in-a-box manufacturing along with conventional manufacturing. The case study reveals that the devel-oped solution method outperforms the epsilon-constraint method, which is a classical exact optimization method for multi-objective optimization problems, and several well-known metaheuristics.

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