Inventory Management of Fashion-Related Products

碩士 === 國立臺灣科技大學 === 工業管理系 === 88 === Traditional analysis for determining inventory levels assumes constant or normally distributed demand over the period of analysis, which is not suitable for products of short life-cycles as commonly found in fashion-related products. This article utilizes a logis...

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Main Authors: Lin Chun-Yen, 林君諺
Other Authors: 周碩彥
Format: Others
Language:zh-TW
Published: 2000
Online Access:http://ndltd.ncl.edu.tw/handle/63626840363079966783
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spelling ndltd-TW-088NTUST0410152016-01-29T04:18:54Z http://ndltd.ncl.edu.tw/handle/63626840363079966783 Inventory Management of Fashion-Related Products 流行性產品的存貨管理 Lin Chun-Yen 林君諺 碩士 國立臺灣科技大學 工業管理系 88 Traditional analysis for determining inventory levels assumes constant or normally distributed demand over the period of analysis, which is not suitable for products of short life-cycles as commonly found in fashion-related products. This article utilizes a logistic growth function and a logistic substitution function to model the growth, saturation, and decline of such products with varying yet dependent demands, and use Raymend Pearl’s The three point Method to get logistic model’s parameters .At the same time, the article differentiate the procedure depend on reorder time into two parts, continuous and discontinuous . In analysis of continuous, the article utilizes EOQ, Silver-Meal and Least Unit Cost Method to solve the total cost, times of reorder and the amount of each batch and to compare with each other. In discontinuous, The Wanger-Whitin Method and Silver-Meal to solve the total cost, times of reorder and the amount of each batch and to compare with each other. At last, this article can get some results and proposal to forecast the time of each reorder point and the minimum total cost of the fashion-related products. 周碩彥 楊文鐸 張振明 2000 學位論文 ; thesis 0 zh-TW
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description 碩士 === 國立臺灣科技大學 === 工業管理系 === 88 === Traditional analysis for determining inventory levels assumes constant or normally distributed demand over the period of analysis, which is not suitable for products of short life-cycles as commonly found in fashion-related products. This article utilizes a logistic growth function and a logistic substitution function to model the growth, saturation, and decline of such products with varying yet dependent demands, and use Raymend Pearl’s The three point Method to get logistic model’s parameters .At the same time, the article differentiate the procedure depend on reorder time into two parts, continuous and discontinuous . In analysis of continuous, the article utilizes EOQ, Silver-Meal and Least Unit Cost Method to solve the total cost, times of reorder and the amount of each batch and to compare with each other. In discontinuous, The Wanger-Whitin Method and Silver-Meal to solve the total cost, times of reorder and the amount of each batch and to compare with each other. At last, this article can get some results and proposal to forecast the time of each reorder point and the minimum total cost of the fashion-related products.
author2 周碩彥
author_facet 周碩彥
Lin Chun-Yen
林君諺
author Lin Chun-Yen
林君諺
spellingShingle Lin Chun-Yen
林君諺
Inventory Management of Fashion-Related Products
author_sort Lin Chun-Yen
title Inventory Management of Fashion-Related Products
title_short Inventory Management of Fashion-Related Products
title_full Inventory Management of Fashion-Related Products
title_fullStr Inventory Management of Fashion-Related Products
title_full_unstemmed Inventory Management of Fashion-Related Products
title_sort inventory management of fashion-related products
publishDate 2000
url http://ndltd.ncl.edu.tw/handle/63626840363079966783
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