A Study on Optimal Ordering Strategy for Supply Chain Systems within Retailers
碩士 === 國立屏東科技大學 === 工業管理系 === 92 === Three inventory models are constructed to determine optimal ordering strategy for specific retailers within supply chain systems setting discrete demand as inventory patterns in this work. By using goodness-of-fit approach to test historical demand data, the meth...
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ndltd-TW-092NPUST0410202016-12-22T04:11:29Z http://ndltd.ncl.edu.tw/handle/39458896952226460010 A Study on Optimal Ordering Strategy for Supply Chain Systems within Retailers 產銷鏈中零售商最適訂購策略之研究 Chih-Kai Yu 游智凱 碩士 國立屏東科技大學 工業管理系 92 Three inventory models are constructed to determine optimal ordering strategy for specific retailers within supply chain systems setting discrete demand as inventory patterns in this work. By using goodness-of-fit approach to test historical demand data, the method of Maximum Likelihood Estimate is introduced to estimate unknown parameters and then forecast the future demands. Optimal decision variables that maximize the total expected profit are also found through the numerical analysis algorithm. In addition, 50 times of simulations are generated to compare the total expected profit with these three models to conduct suitable statistical experiments on the aspects of mean-variance dominance and stochastic dominance rules. Numerical examples are given to validate the results of the inventory variations in the proposed model. Yun-Cheng Huang 黃允成 2004 學位論文 ; thesis 69 zh-TW |
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碩士 === 國立屏東科技大學 === 工業管理系 === 92 === Three inventory models are constructed to determine optimal ordering strategy for specific retailers within supply chain systems setting discrete demand as inventory patterns in this work. By using goodness-of-fit approach to test historical demand data, the method of Maximum Likelihood Estimate is introduced to estimate unknown parameters and then forecast the future demands. Optimal decision variables that maximize the total expected profit are also found through the numerical analysis algorithm. In addition, 50 times of simulations are generated to compare the total expected profit with these three models to conduct suitable statistical experiments on the aspects of mean-variance dominance and stochastic dominance rules. Numerical examples are given to validate the results of the inventory variations in the proposed model.
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Yun-Cheng Huang |
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Yun-Cheng Huang Chih-Kai Yu 游智凱 |
author |
Chih-Kai Yu 游智凱 |
spellingShingle |
Chih-Kai Yu 游智凱 A Study on Optimal Ordering Strategy for Supply Chain Systems within Retailers |
author_sort |
Chih-Kai Yu |
title |
A Study on Optimal Ordering Strategy for Supply Chain Systems within Retailers |
title_short |
A Study on Optimal Ordering Strategy for Supply Chain Systems within Retailers |
title_full |
A Study on Optimal Ordering Strategy for Supply Chain Systems within Retailers |
title_fullStr |
A Study on Optimal Ordering Strategy for Supply Chain Systems within Retailers |
title_full_unstemmed |
A Study on Optimal Ordering Strategy for Supply Chain Systems within Retailers |
title_sort |
study on optimal ordering strategy for supply chain systems within retailers |
publishDate |
2004 |
url |
http://ndltd.ncl.edu.tw/handle/39458896952226460010 |
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