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    政大機構典藏 > 商學院 > 統計學系 > 學位論文 >  Item 140.119/60431
    Please use this identifier to cite or link to this item: https://nccur.lib.nccu.edu.tw/handle/140.119/60431


    Title: 適應性加權損失管制圖之研究
    The Study of Adaptive Weighted Loss Control Charts for Dependent Process Steps
    Authors: 林亮妤
    Lin,Liang Yu
    Contributors: 楊素芬
    Yang,Su Fen
    林亮妤
    Lin,Liang Yu
    Keywords: 管制圖
    變動參數
    相依製程
    損失函數
    最佳化技術
    馬可夫鏈
    Control charts
    Variable parameters
    Dependent process steps
    Loss function
    Optimization technique
    Markov chain
    Date: 2009
    Issue Date: 2013-09-05 15:10:33 (UTC+8)
    Abstract: 近年來有許多研究發現,適應性管制圖在偵測製程或產品幅度偏移時的速度比傳統的舒華特管制圖來的快,許多文獻也討論到利用適應性管制技術同時監控製程的平均數和變異數。隨著科技的發達,許多產品在製造上更加精密,現今普遍使用的固定參數管制圖並無法有效率的偵測出製程失控,導致巨大的成本損失。為了改善現有管制圖的偵測效率與有效控制製程失控下的損失,我們提出了三種適應性加權損失管制圖,包括變動抽樣間隔(VSI)、變動樣本數與抽樣間隔(VSI)、變動管制參數(VP)來偵測單一製程與兩相依製程的平均數和變異數。採用製程發生變動後到管制圖偵測出異常訊息所需的平均時間(AATS)與所需的總觀測數(ANOS)來衡量管制圖的偵測績效,並利用馬可夫鏈推導計算得之。從數值分析中發現,適應性加權損失管制圖在「偵測小偏移幅度時的偵測效率」與「成本的控制」明顯比傳統管制圖表現的更好,再加上每一個製程僅需採用單一管制圖,對使用者也較為簡便並且容易理解,因此適應性加權損失管制圖在實務上是值得被推薦使用的。
    Recent research has shown that control charts with adaptive features detect process shifts faster than traditional Shewhart charts. In this article, we propose three kinds of adaptive weighted loss (WL) control charts, variable sampling intervals (VSI) WL control charts , variable sample sizes and sampling intervals (VSSI) WL control charts and variable parameters (VP) WL control charts, to monitor the target and variance on a single process step and two dependent process steps simultaneously. These adaptive WL control charts may effectively distinguish which process step is out-of-control. We use the Markov chain approach to calculate the adjusted average time to signal (AATS) and average number of observations to signal (ANOS) in order to measure the performance of the proposed control charts. From the numerical examples and data analyses, we find the adaptive WL control charts have better detection abilities and performance than fixed parameters (FP) WL control charts and FP Z(X-bar)-Z(Sx^2) and Z(e-bar)-Z(Se^2) control charts. We also proposed the optimal adaptive WL control charts using an optimization technique to minimize AATS when users cannot specify the values of the variable parameters. In addition, we discuss the impact of misusing weighted loss of outgoing quality control chart. In conclusion, using a single chart to monitor a process is inherently easier than using two charts. The WL control charts are easy to understand for the users, and have better performance and detection abilities than the other charts, thus, we recommend the use of WL control charts in the real industrial process.
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    Description: 碩士
    國立政治大學
    統計研究所
    97354008
    98
    Source URI: http://thesis.lib.nccu.edu.tw/record/#G0097354008
    Data Type: thesis
    Appears in Collections:[統計學系] 學位論文

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