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研究生: 林書全
Shu-Chuan Lin
論文名稱: 應用組合模型於面板廠之需求預測研究
Using Combining Forecasts in Demand Planning for TFT-LCD Manufacture
指導教授: 王福琨
Fu-Kwun Wang
口試委員: 李文義
none
歐陽超
none
學位類別: 碩士
Master
系所名稱: 管理學院 - 工業管理系
Department of Industrial Management
論文出版年: 2007
畢業學年度: 95
語文別: 中文
論文頁數: 66
中文關鍵詞: 組合預測層級式預測液晶監視器面板時間序列模型
外文關鍵詞: Combining forecasts, Hierarchical forecasting, Monitor LCD panels, Time series models
相關次數: 點閱:217下載:3
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需求規劃能幫助減少存貨並帶來利益,然而需求規劃最大問題為不確定性,目前台灣為LCD面板的製造大國,對於今天如TFT-LCD這般的高科技產業,市場需求不確定性大、產品生命週期短的特性,準確的需求預測顯得格外重要。所以我們希望可以透過預測方法來幫助進行需求規劃時的決策。我們可以在供應鏈中收集到許多有用的資訊,而結合預測可以透過組合不同的預測方法來充分運用這些資訊於需求規劃上。許多的專家也指出,結合預測的效果比任何單一的預測方法要來的好。在本研究中,我們透過結合全球需求量乘上市場佔有率的預測以及公司出貨預測,藉由組合預測來達到對面板產業進行需求規劃時的穩定性及精確度。在結合預測的參數估計上,我們透過基因演算法的利用,和其他傳統的方法如調適權重法或是線性組合法做比較,期望可以找出最適合的權重來進行結合預測。


The attributes of the high-tech industries are high degree of uncertainty and short product life cycle. TFT-LCD industry is growing in Taiwan. LCD-monitor is a major component for a desktop computer. Demand planning can effectively reduce inventories and bring benefits. The difficulty of demand planning is uncertainty. We can use forecasting methods to improve the accuracy of demand planning. For example, we can use combining forecasts method which is associated with different forecasting methods. Many experts point out that combining forecast is more useful than any single forecasting method. There are many different ways to estimate the parameters of combining forecasts. In this study, we use genetic algorithm (GA) to find combining weights and compare with other traditional methods such as k method, adaptive set of weights and linear composite. The results show that GA approach out performs other method. We combine the global demand forecasts which is multiply by market share and the supply forecasts of company. Using combining forecasts, we can increase the stability and accuracy of the demand planning.

摘要 .......................................I Abstract .......................................II 誌謝 .......................................III 目錄 .......................................IV 圖目錄 .......................................VI 表目錄 .......................................VIII 第一章 緒論 ..............................1 1.1 研究動機 ..............................1 1.2 研究目的 ..............................2 1.3 研究範圍與限制 ..............................2 1.4 研究流程 ..............................3 第二章 文獻探討 ..............................5 2.1 液晶顯示器產業結構及市場概況 ............5 2.2 液晶監視器市場之現況 .....................7 2.3 預測的基本定義 ..............................9 2.4 組合預測方法 ..............................11 2.5 層級式預測 ..............................14 第三章 方法論 ..............................16 3.1 預測模式的選擇 ..............................16 3.1.1 時間序列 ..............................17 3.1.2 時間數列分解法 .....................19 3.1.3 Holt Winters模型 .....................20 3.1.4 導入價格因子之Bass模型 ............22 3.2 市場佔有率預測 ..............................24 3.3 評估指標 ..............................25 3.4 應用基因演算法於組合預測 ............27 3.5 層級式預測比例配置方法 .....................27 第四章 案例分析 ..............................30 4.1 預測2006年第一季需求量 .....................30 4.1.1 預測模型的選擇 .....................30 4.1.2 市佔率預測 ..............................40 4.1.3 結合預測之比較 .....................41 4.1.4 層級式預測 ..............................42 4.2 預測2006第二季需求量 .....................45 4.2.1 預測模型的選擇 .....................46 4.2.2 市佔率預測 ..............................53 4.2.3 結合預測之比較 .....................54 4.2.4 層級式預測 ..............................55 4.3 驗證期預測結果之比較 .....................57 第五章 結論與建議 ..............................59 5.1 結論 .......................................59 5.2 後續研究建議 ..............................60 參考文獻 .......................................61

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