Two-stage assembly scheduling with batch setup times, time-dependent deterioration, and preventive maintenance activities using meta-heuristic algorithms (Q1721321)
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scientific article; zbMATH DE number 7019379
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Two-stage assembly scheduling with batch setup times, time-dependent deterioration, and preventive maintenance activities using meta-heuristic algorithms |
scientific article; zbMATH DE number 7019379 |
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Two-stage assembly scheduling with batch setup times, time-dependent deterioration, and preventive maintenance activities using meta-heuristic algorithms (English)
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8 February 2019
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Summary: This article considers a two-stage assembly scheduling problem (TSASP) with batch setup times, time-dependent deterioration, and preventive maintenance activities (PMAs). The objective of this problem is to simultaneously determine the optimal component-manufacturing sequence (CMS), product-assembly sequence (PAS), number of setups, and number and position of PMAs (PPMA). First, to determine the optimal solution, a novel mixed integer linear programming model (MILP) for the proposed problem is derived. Then, a standard genetic algorithm (SGA), hybrid genetic algorithm (HGA), standard harmony search (SHS), hybrid harmony search (HHS), and harmony-search-based evolutionary algorithm (HSEA) were proposed owing to the intractability of the optimal solution for large-scale problems. SGA and SHS provide a chromosome to represent a complete solution including three decisions (CMS, PAS, and PPMA). HGA, HHS, and HSEA provide a chromosome to represent a partial solution including PAS. CMS and PPMA are found by an effective local search heuristic based on the partial solution. A computational experiment is then conducted to evaluate the impacts of the factors on the performance of the proposed algorithms.
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