Abstract: The purpose of the study is to resolve the problem on making production planning of the multi-product, multi-stage and small-batch products when information is uncertain. In this paper, the linear programming model of grey parameters is constructed. Compared with the traditional production planning optimization method, the effectiveness of the production planning is proved. The results will give a range of decision variables, and help decision makers arranging production planning to deal with unavoidable information uncertainty.
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In-Text Citation: (Yanfeng & Huali, 2109)
To Cite this Article: Yanfeng, C., & Huali, L. (2109). Research on Multi-stage and Multi-objective Production Planning Considering Decision Makers’ Preference. International Journal of Academic Research in Business and Social Sciences, 9(5), 39–51.
Copyright: © 2019 The Author(s)
Published by Human Resource Management Academic Research Society (www.hrmars.com)
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