The Optimum Quality Review Rule for Production Environment.

碩士 === 國立交通大學 === 管理學院管理科學學程 === 99 === Clean room environment control items include temperature, humidity, particle, vacuum pressure, pure-water conductivity and so on. For more aggressive and stable environment control, the operation specs should be tightened and reasonable rules are necessary to...

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Main Author: 賈儒慶
Other Authors: Chiang, Chi
Format: Others
Language:zh-TW
Published: 2011
Online Access:http://ndltd.ncl.edu.tw/handle/00854409717465314810
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spelling ndltd-TW-099NCTU54571362015-10-13T20:37:10Z http://ndltd.ncl.edu.tw/handle/00854409717465314810 The Optimum Quality Review Rule for Production Environment. 生產環境管控機制最佳化 賈儒慶 碩士 國立交通大學 管理學院管理科學學程 99 Clean room environment control items include temperature, humidity, particle, vacuum pressure, pure-water conductivity and so on. For more aggressive and stable environment control, the operation specs should be tightened and reasonable rules are necessary to review system stability. The basic environment operation quality control should meet control limit values. The reasonable set points for high and low control depend on the operation data type. With normal distribution operation data type we can use the SPC rule to set up the high and low limit values. With non-normal distribution operation data type we develop new sigma parameters to set up the high and low limit values. Concerning the operation stability, for the normal distribution operation data type we can use the Cpk rule to examine the stability. For the non-normal distribution operation data, we derive the new sigma ratio to meet the environment operation stable review requirement. Regarding the target control management, the median shift review rule can be used to check the system operation items including miss operation and system operation capacity. Chiang, Chi 姜齊 2011 學位論文 ; thesis 45 zh-TW
collection NDLTD
language zh-TW
format Others
sources NDLTD
description 碩士 === 國立交通大學 === 管理學院管理科學學程 === 99 === Clean room environment control items include temperature, humidity, particle, vacuum pressure, pure-water conductivity and so on. For more aggressive and stable environment control, the operation specs should be tightened and reasonable rules are necessary to review system stability. The basic environment operation quality control should meet control limit values. The reasonable set points for high and low control depend on the operation data type. With normal distribution operation data type we can use the SPC rule to set up the high and low limit values. With non-normal distribution operation data type we develop new sigma parameters to set up the high and low limit values. Concerning the operation stability, for the normal distribution operation data type we can use the Cpk rule to examine the stability. For the non-normal distribution operation data, we derive the new sigma ratio to meet the environment operation stable review requirement. Regarding the target control management, the median shift review rule can be used to check the system operation items including miss operation and system operation capacity.
author2 Chiang, Chi
author_facet Chiang, Chi
賈儒慶
author 賈儒慶
spellingShingle 賈儒慶
The Optimum Quality Review Rule for Production Environment.
author_sort 賈儒慶
title The Optimum Quality Review Rule for Production Environment.
title_short The Optimum Quality Review Rule for Production Environment.
title_full The Optimum Quality Review Rule for Production Environment.
title_fullStr The Optimum Quality Review Rule for Production Environment.
title_full_unstemmed The Optimum Quality Review Rule for Production Environment.
title_sort optimum quality review rule for production environment.
publishDate 2011
url http://ndltd.ncl.edu.tw/handle/00854409717465314810
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