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Optimisation of mixed-model assembly line balancing problem under uncertain demand
Affiliation:1. Graduate Program in Electrical and Computer Engineering (CPGEI), Federal University of Technology – Paraná (UTFPR), Curitiba, Brazil;2. Institute for Operations Research, Hamburg Business School, University of Hamburg, Hamburg, Germany;1. TED University, Faculty of Economics and Administrative Sciences, Ziya Gökalp Caddesi No.48, 06420 Kolej, Çankaya, Ankara, Turkey;2. École Nationale Supérieure des Mines, CNRS UMR6158 LIMOS, F-42023 Saint-Étienne, France;1. Department of Industrial Management, National Formosa University, Yunlin County 63201, Taiwan, ROC;2. Department of Industrial Engineering and Management, National Taipei University of Technology, Taipei 10608, Taiwan, ROC
Abstract:Assembly lines play a crucial role in determining the profitability of a company. Market conditions have increased the importance of mixed-model assembly lines. Variations in the demand are frequent in real industrial environments and often leads to failure of the mixed-model assembly line balancing scheme. Decision makers have to take into account this uncertainty. In an assembly line balancing problem, there is a massive amount of research in the literature assuming deterministic environment, and many other works consider uncertain task times. This research utilises the uncertainty theory to model uncertain demand and introduces complexity theory to measure the uncertainty of assembly lines. Scenario probability and triangular fuzzy number are used to describe the uncertain demand. The station complexity was measured based on information entropy and fuzzy entropy to assist in balancing systems with robust performances, considering the influence of multi-model products in the station on the assembly line. Taking minimum station complexity, minimum workload difference within station, maximum productivity as objective functions, a new optimization model for mixed-model assembly line balancing under uncertain demand was established. Then an improved genetic algorithm was applied to solve the model. Finally, the effectiveness of the model was verified by several instances of mixed-model assembly line for automobile engine.
Keywords:Mixed-model assembly line  Line balancing  Uncertain demand  Assembly station complexity
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