Please use this identifier to cite or link to this item: https://ah.lib.nccu.edu.tw/handle/140.119/35199
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dc.contributor.advisor林我聰zh_TW
dc.contributor.advisorLin,Woo-Tsongen_US
dc.contributor.author黃蘭禎zh_TW
dc.contributor.authorHuang,Lan Chenen_US
dc.creator黃蘭禎zh_TW
dc.creatorHuang,Lan Chenen_US
dc.date2003en_US
dc.date.accessioned2009-09-18T06:25:25Z-
dc.date.available2009-09-18T06:25:25Z-
dc.date.issued2009-09-18T06:25:25Z-
dc.identifierG0091356005en_US
dc.identifier.urihttps://nccur.lib.nccu.edu.tw/handle/140.119/35199-
dc.description碩士zh_TW
dc.description國立政治大學zh_TW
dc.description資訊管理研究所zh_TW
dc.description91356005zh_TW
dc.description92zh_TW
dc.description.abstract協同規劃、預測與補貨(Collaborative Planning, Forecasting and Replenishment,CPFR),在歐美經過一些企業的採用後已經有顯著的成效,目前國內已經有一些企業相繼採用或即將採用CPFR,期望能因此降低供應鏈作業成本及提升供應鏈作業績效,以提升企業競爭力。在CPFR流程與供應鏈協同作業環境下,一個供需雙方協同,且績效良好的的銷售預測具有關鍵的重要性,是管理決策與協同合作時的的重要依據;但是多數的企業並沒有一個結構化、系統化的預測流程及方法,而是各部門透過簡單時間序列方法、天真預測法或人為經驗法則估算需求,進行多點且不同方法之預測,這樣的銷售預測較無穩定的品質,亦較難提供管理者合理的數據解釋。本研究結合時間序列、多元回歸模型與基因演算法發展出一個CPFR流程下之三階段混合預測方法,以買賣方直接之銷售資料、銷售計畫等資訊進行以「週」為單位之個別商品銷售預測。同時本研究中,亦以國內某製造業公司與其顧客(一國際大型零售連鎖店通路商)之產品銷售資料進行方法的驗證;實驗顯示,本研究所提出之預測方法之預測結果較Jeong等人(2002)所提結合多元回歸模型與基因演算法之二階段預測系統之預測結果佳;亦較傳統使用普通最小平方法求解之一般統計回歸方法預測結果佳。zh_TW
dc.description.abstractIt has been verified in pilot projects by many European and American Corporations that Collaborative Planning, Forecasting and Replenishment (CPFR) can improve supply chain performance. Enterprises nowadays in Taiwan are implementing or going to implement CPFR, with hopes to reduce their supply chain operation cost, enhance logistic performance and increase their competition capability consequently. Under CPFR process and supply chain collaboration environment, a supply and demand both sides promised identical sales forecast with well forecasting performance for order decision making and cooperation is very important. Due to the dynamic complexities of both internal and external co-operate environment, many firms resort to qualitative, navie forecasting or other simple quantitative forecasting techniques and have many forecasts in their organization. However, these forecasting techniques lack the structure and extrapolation capability of quantitative forecasting models or without stable performance, while multi-forecasts providing different views of demand. Forecasting inaccuracies exist and typically lead to dramatic disturbances in sales order and production planning.\nThis paper presents a hybrid forecasting model for sales forecasting requirements in CPFR. A three stage model is proposed that integrate the time series model, regression model and use genetic algorithm to determine its coefficients efficiently. Direct sales information and related planned events in both collaborated sides is used for individual product’s “week” sales forecasting. To verify this model, we experiment on two different products and produce forecasts with datum from one manufacturer in Taiwan and its international retailer. The results shows that the hybrid sales forecasting model has better forecasting performance than not only the causal-genetic forecasting model proposed by Jeong et al. (2002), but also ordinary regression model with no genetic training process.en_US
dc.description.tableofcontents目錄\n\n致謝 I\n中文摘要 II\nENGLISH ABSTRACT III\n第一章、緒論 1\n1.1研究背景 1\n1.2研究動機 2\n1.3研究目的 3\n1.4 研究方法 4\n1.5研究架構與步驟 4\n1.6研究範圍 5\n1.7章節架構 5\n第二章、文獻探討 7\n2.1供應鏈管理與CPFR 7\n2.1.1供應鏈管理的定義 7\n2.1.2供應鏈管理發展與趨勢 7\n2.1.3協同規劃預測與補貨(CPFR) 8\n2.1.4需求管理 12\n2.2銷售預測與預測方法 12\n2.2.1傳統預測技術相關理論 13\n2.2.2協同預測 15\n2.2.3企業預測技術之採用趨勢 16\n2.2.4時間序列方法 17\n2.2.5因果銷售預測函數型態 19\n2.2.6銷售量影響因素 20\n2.3 基因演算法 22\n2.3.1 基因演算法運作流程 23\n2.3.2 基因演算法之特性與優、缺點與相關改善方法之文獻 29\n2.3.3供應鏈中使用基因演算法的因果預測系統文獻 30\n第三章、預測模型建構與實驗設計 32\n3.1混合預測模型整體架構 33\n3.2資料蒐集整理與應用 35\n3.4多元回歸模型 36\n3.5基因演算求最佳化之混合預測模型 39\n3.5.1基因演算法之染色體編碼與適應函數 39\n3.5.2基因演算法之染色體體產生與複製 41\n3.5.3基因演算法之交配與突變、子代選擇方式 42\n3.6驗證方法、工具與績效衡量指標 45\n第四章、實驗分析與模型績效驗證 47\n4.1資料敘述與分析 47\n4.2產品A預測實驗與績效 47\n4.2.1階段一:時間序列子模型 47\n4.2.2階段二:多元回歸模型 48\n4.2.3階段三:基因演算求最佳化之混合預測模型 51\n4.2.4小結 53\n4.3產品B預測實驗與績效 54\n4.3.1實驗與結果 54\n4.3.2小結 56\n第五章、結論與建議 58\n5.1結論 58\n5.2後續研究方向與建議 59\n中文參考文獻 60\n英文參考文獻 61\n附錄 64\n\n表目錄\n表1、協同預測或CPFR流程相關文獻—著重於管理面者 2\n表2、協同預測或CPFR流程相關文獻—著重於預測技術者 3\n表3、CPFR與VMI、JMI之比較 8\n表4、CPFR的三階段與九流程步驟 10\n表5、CPFR流程模型中的銷售預測與訂單預測之差異 11\n表6、預測模型特性整理 13\n表7、因果銷售預測函數型態 20\n表8、產品生命週期特徵 21\n表9、模糊運算子交配相關公式與示意圖 27\n表10、本研究模型與欲比較之模型特性對照表 46\n表11、產品A時間序列模型參數敏感度訓練分析(賀特指數平滑法參數分析) 47\n表12、產品A第二階段回歸模型分析與模型參數表 50\n表13、產品A 基因演化模型第一期初始值 51\n表14、基因演算流程交配率與突變率組合績效測試前10名 51\n表15、產品A之10次實驗平均績效 52\n表16、產品B第二階段回歸模型分析與模型參數表 54\n表17、產品B 基因演化模型第一期初始值 55\n表18、產品B之10次實驗平均績效 55\n\n圖目錄\n圖1、本研究架構與步驟示意圖 5\n圖2、第二代ECR 10\n圖3、企業預測模型採用狀況 16\n圖4、基因演算法之演化流程圖 23\n圖5、單點交配 25\n圖6、雙點交配 25\n圖7、字罩交配 25\n圖8、實數編碼之簡單交配 26\n圖9、模糊運算子交配相關公式與示意圖 27\n圖10、群體差異指數之概念式意圖 30\n圖11、混合預測模型架構圖 34\n圖12、本研究各階段劃分與資料應用示意圖 35\n圖13、週銷售量曲線舉例 35\n圖14、本研究基因預測模型流程圖 45\n圖15、產品A時間序列實際銷售量與預測曲線圖 48\n圖16、產品A所屬類別T月銷售量峰度指數 49\n圖17、產品A PDLC階段指數與週銷售曲線圖 50\n圖18、產品B 時間序列實際銷售量與預測曲線圖 54zh_TW
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dc.source.urihttp://thesis.lib.nccu.edu.tw/record/#G0091356005en_US
dc.subject協同規劃、預測與補貨zh_TW
dc.subject銷售預測zh_TW
dc.subject混合預測模型zh_TW
dc.subject基因演算法zh_TW
dc.subjectCollaborative Planning, Forecasting and Replenishmenten_US
dc.subjectCPFRen_US
dc.subjectSales forecastsen_US
dc.subjectHybrid forecasting modelen_US
dc.subjectGenetic Algorithmen_US
dc.titleCPFR流程下之銷售預測方法~混合預測模型zh_TW
dc.titleA Hybrid Modeling Approach for Sales Forecasting in CPFR Processen_US
dc.typethesisen
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