Aggregated planning to solve multi-product multi-period disassembly line balancing problem by considering multi-manned stations: A generic optimization model and solution algorithms

•An integrated multi-product multi-period disassembly line balancing and lot-sizing problem is handled.•A generic optimization model that considers the multi-manned station concept is presented.•Total cost minimization is considered to be the objective function.•The genetic algorithm-based solution...

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Bibliographic Details
Published inComputers & industrial engineering Vol. 196; p. 110464
Main Authors Yeni, Fatma Betul, Cevikcan, Emre, Yazici, Busra, Yilmaz, Omer Faruk
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.10.2024
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ISSN0360-8352
DOI10.1016/j.cie.2024.110464

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Summary:•An integrated multi-product multi-period disassembly line balancing and lot-sizing problem is handled.•A generic optimization model that considers the multi-manned station concept is presented.•Total cost minimization is considered to be the objective function.•The genetic algorithm-based solution approaches are developed due to the complexity of the problem.•A simulated annealing based local search algorithm is employed to achieve high-quality solutions. Disassembly lines are crucial in the recovery process of end-of-life (EOL) products, facilitating the systematic extraction of parts to meet predetermined objectives. While previous studies have made significant advancements, they have not addressed the disassembly line planning and balancing problem by focusing on the real-life significance of combining long-term decision-making and short-term operational missions. This study fills this gap by combining multi-product, multi-period, and multi-manned disassembly line concepts into a novel integrated approach. Initially, a generic optimization model is formulated, incorporating the concept of multi-manned stations. Subsequently, genetic algorithm (GA)-based solution approaches are developed to address the problem’s complexity. Three tactical-level policies, including economic disassembly quantity (EDQ), just-in-time (JIT), and random (R) based lot size policies, are explored within the algorithms. Additionally, simulated annealing-based local search algorithms and two crossover operators, CR1 and CR2, are incorporated to enhance solution quality. Through computational analysis, six algorithms are evaluated, with the GACR1-JIT algorithm demonstrating significant cost reductions compared to alternatives. The findings underscore the growing importance of JIT-based lot size policies, particularly with an increasing number of periods. This research bridges theoretical and practical considerations by highlighting the strategic importance of combining long-term disassembly line planning and short-term lot sizing decisions to improve system performance.
ISSN:0360-8352
DOI:10.1016/j.cie.2024.110464