Supply Chain Management (SCM) is an important activity in all producing facilities and in many organizations to enable vendors, manufacturers and suppliers to interact gainfully and plan optimally their flow of goods and services. A simulation optimization approach has been widely used in research nowadays on finding the best solution for decision-making process in Supply Chain Management (SCM) that generally faced a complexity with large sources of uncertainty and various decision factors. Metahueristic method is the most popular simulation optimization approach. However, very few researches have applied this approach in optimizing the simulation model for supply chains. Thus, this paper interested in evaluating the performance of metahueristic method for stochastic supply chains in determining the best flexible inventory replenishment parameters that minimize the total operating cost. The simulation optimization model is proposed based on the Bees algorithm (BA) which has been widely applied in engineering application such as training neural networks for pattern recognition. BA is a new member of meta-heuristics. BA tries to model natural behavior of honey bees in food foraging. Honey bees use several mechanisms like waggle dance to optimally locate food sources and to search new ones. This makes them a good candidate for developing new algorithms for solving optimization problems. This model considers an outbound centralised distribution system consisting of one supplier and 3 identical retailers and is assumed to be independent and identically distributed with unlimited supply capacity at supplier.
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22 April 2013
PROCEEDINGS OF THE 20TH NATIONAL SYMPOSIUM ON MATHEMATICAL SCIENCES: Research in Mathematical Sciences: A Catalyst for Creativity and Innovation
18–20 December 2012
Palm Garden Hotel, Putrajaya, Malaysia
Research Article|
April 22 2013
Metaheuristic simulation optimisation for the stochastic multi-retailer supply chain
Marina Omar;
Marina Omar
Department of Modelling and Industrial Computing, Faculty of Science and Information System, Universiti Teknologi Malaysia, 81310 Skudai, Johor DT,
Malaysia
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Noorfa Haszlinna H. Mustaffa;
Noorfa Haszlinna H. Mustaffa
Department of Modelling and Industrial Computing, Faculty of Science and Information System, Universiti Teknologi Malaysia, 81310 Skudai, Johor DT,
Malaysia
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Siti Norsyahida Othman
Siti Norsyahida Othman
Department of Modelling and Industrial Computing, Faculty of Science and Information System, Universiti Teknologi Malaysia, 81310 Skudai, Johor DT,
Malaysia
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AIP Conf. Proc. 1522, 1373–1377 (2013)
Citation
Marina Omar, Noorfa Haszlinna H. Mustaffa, Siti Norsyahida Othman; Metaheuristic simulation optimisation for the stochastic multi-retailer supply chain. AIP Conf. Proc. 22 April 2013; 1522 (1): 1373–1377. https://doi.org/10.1063/1.4801289
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