The production routing problem (PRP) arises in the applications of integrated supply chain which jointly optimize the production, inventory, distribution, and routing decisions. The literature on this problem is quite rare due to its complexity. In this paper, we consider the multivehicle PRP (MVPRP) with order-up-to-level inventory replenishment policy, where every time a customer is visited, the quantity delivered is such that the maximum inventory level is reached. We propose an exact Benders’ decomposition approach to solve the MVPRP, which decomposes the problem as a master problem and a slave problem. The master problem decides whether to produce the product, the quantity to be produced, and the customers to be replenished for every period of the planning horizon. The resulting slave problem decomposes into a capacitated vehicle routing problem for each period of the planning horizon where each problem is solved using an exact algorithm based on the set partitioning model, and the identified feasibility and optimality cuts are added to the master problem to guide the solution process. Valid inequalities and initial optimality cuts are used to strengthen the linear programming relaxation of the master formulation. The exact method is tested on MVPRP instances and on instances of the multivehicle vendor-managed inventory routing problem, a special case of the MVPRP, and the good performance of the proposed approach is demonstrated.

Zhang, Z., Luo, Z., Baldacci, R., Lim, A. (2021). A Benders Decomposition Approach for the Multivehicle Production Routing Problem with Order-up-to-Level Policy. TRANSPORTATION SCIENCE, 55(1), 160-178 [10.1287/trsc.2019.0964].

A Benders Decomposition Approach for the Multivehicle Production Routing Problem with Order-up-to-Level Policy

Baldacci, Roberto;
2021

Abstract

The production routing problem (PRP) arises in the applications of integrated supply chain which jointly optimize the production, inventory, distribution, and routing decisions. The literature on this problem is quite rare due to its complexity. In this paper, we consider the multivehicle PRP (MVPRP) with order-up-to-level inventory replenishment policy, where every time a customer is visited, the quantity delivered is such that the maximum inventory level is reached. We propose an exact Benders’ decomposition approach to solve the MVPRP, which decomposes the problem as a master problem and a slave problem. The master problem decides whether to produce the product, the quantity to be produced, and the customers to be replenished for every period of the planning horizon. The resulting slave problem decomposes into a capacitated vehicle routing problem for each period of the planning horizon where each problem is solved using an exact algorithm based on the set partitioning model, and the identified feasibility and optimality cuts are added to the master problem to guide the solution process. Valid inequalities and initial optimality cuts are used to strengthen the linear programming relaxation of the master formulation. The exact method is tested on MVPRP instances and on instances of the multivehicle vendor-managed inventory routing problem, a special case of the MVPRP, and the good performance of the proposed approach is demonstrated.
2021
Zhang, Z., Luo, Z., Baldacci, R., Lim, A. (2021). A Benders Decomposition Approach for the Multivehicle Production Routing Problem with Order-up-to-Level Policy. TRANSPORTATION SCIENCE, 55(1), 160-178 [10.1287/trsc.2019.0964].
Zhang, Zhenzhen; Luo, Zhixing; Baldacci, Roberto; Lim, Andrew
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/790959
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