Abstract

In this study, we investigated the time-varying capacitated lot-sizing problem under a fast-changing production environment, where production factors such as the setup costs, inventory-holding costs, production capacities, or even material prices may be subject to continuous changes during the entire planning horizon. Traditional lot-sizing theorems and algorithms, which often assume a constant production environment, are no longer fit for this situation. We analyzed the time-varying environment of today’s agile enterprises and modeled the time-varying setup costs and the time-varying production capacities. Based on these, we presented two mixed-integer linear programming models for the time-varying capacitated single-level lot-sizing problem and the time-varying capacitated multi-level lot-sizing problem, respectively, with considerations on the impact of time-varying environments and dynamic capacity constraints. New properties of these models were analyzed on the solution’s feasibility and optimality. The solution quality was evaluated in terms of the entropy which indicated that the optimized production system had a lower value than that of the unoptimized one. A number of computational experiments were conducted on well-known benchmark problem instances using the AMPL/CPLEX to verify the proposed models and to test the computational effectiveness and efficiency, which showed that the new models are applicable to the time-varying environment. Two of the benchmark problems were updated with new best-known solutions in the experiments.

Highlights

  • The multi-level lot-sizing (MLLS) problem [1,2] plays an important role in the efficient operation of a modern manufacturing and assembly system

  • In order to verify whether the proposed models can effectively solve the CMLLS-time-varying environment (TVE) problem of a medium-size, we tested them with 40 medium-sized problem instances from Dellaert and Jeunet [12,13], which were generated based on the product structures in Afentakis et al [1] and Afentakis and Gavish [2]

  • This study investigated the capacitated multi-level lot-sizing problem under a time-varying environment (CMLLS-TVE) and extended the traditional MLLS model by considering time-varying production factors

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Summary

Introduction

The multi-level lot-sizing (MLLS) problem [1,2] plays an important role in the efficient operation of a modern manufacturing and assembly system It involves determining the optimal production quantities and periods for a production system in order to balance the trade-off cost between the production setup and inventory-holding. Almeder et al [29] studied the capacitated MLLS problem with lead time consideration They developed two models considering batch production and allowing lot-streaming. We considered the time-varying setup cost and dynamic capacity constraints as new constraints based on the traditional capacitated MLLS framework. We present a new mixed-integer linear programming (MILP) model for the capacitated MLLS problem under a time-varying environment (CMLLS-TVE) and provide theoretical analysis on the model’s properties.

Problem Description and Formulation
Entropy in Production Systems
A Mathematical Programming Model for the CMLLS-TVE
A Mixed-Integer Programming Model for the CMLLS-TVE
Property Analysis of the CMLLS-TVE Model
Computational Experiments
Optimality Test with Small-Sized Problems
Efficiency Test with Medium-Sized Problems
A Fix-and-Optimize Heuristic Approach for Large-Sized Problems
Computational Experiment with the Fix-and-Optimize Heuristics
Conclusions
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