Mining Knowledge Support for the Maintenance of Semiconductor Equipments
碩士 === 國立交通大學 === 管理學院碩士在職專班資訊管理組 === 93 === Semiconductor equipment is important asset in the semiconductor industry. Semiconductor equipment with high precision added value requires a more complete level of maintenance and management to satisfy organizations’ manufacturing operation needs. The c...
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ndltd-TW-093NCTU53960262016-06-06T04:10:40Z http://ndltd.ncl.edu.tw/handle/54291648744182099209 Mining Knowledge Support for the Maintenance of Semiconductor Equipments 運用資料探勘於半導體機台維修管理之知識支援 Shu-Chen Liao 廖淑珍 碩士 國立交通大學 管理學院碩士在職專班資訊管理組 93 Semiconductor equipment is important asset in the semiconductor industry. Semiconductor equipment with high precision added value requires a more complete level of maintenance and management to satisfy organizations’ manufacturing operation needs. The condition of Semiconductor equipment affects the productivity and products’ pass rate of the manufacturing production system. Therefore, sound semiconductor equipment maintenance and management are key factors affecting enterprises’ viability in the increasingly fierce competitive market environment. Nowadays, though aggressive competitions and human resource mining prevailing in the high-tech industry, the job-change rate in general is very high. Once an employee leaves a job position, his/her maintenance knowledge and relevant skills will also soon disappear in the organization, and the reuse effect of the knowledge and skills is usually unsound. Data Mining is a more common approach these days, which is often adopted for data analysis. This can be achieved by employing Association Rule mining to discover the correlation among some items in databases. This research applies the Association Rule mining techniques to discover the correlation between error codes and maintenance codes. By storing the correlation as a word document, this work can then develop a fault diagnosis system for semiconductor equipment maintenance. This system can provide relevant repair suggestions to engineers performing repair functions. The proposed system can reduce the engineer’s repair time on the faulty machine, to increase maintenance efficiency and machine utilization rate; the system can also store the relevant knowledge in the organization, thus minimize potential damages to the company caused by employees’ resignation Duen-Ren Liu 劉敦仁 2005 學位論文 ; thesis 75 zh-TW |
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碩士 === 國立交通大學 === 管理學院碩士在職專班資訊管理組 === 93 === Semiconductor equipment is important asset in the semiconductor industry. Semiconductor equipment with high precision added value requires a more complete level of maintenance and management to satisfy organizations’ manufacturing operation needs. The condition of Semiconductor equipment affects the productivity and products’ pass rate of the manufacturing production system. Therefore, sound semiconductor equipment maintenance and management are key factors affecting enterprises’ viability in the increasingly fierce competitive market environment. Nowadays, though aggressive competitions and human resource mining prevailing in the high-tech industry, the job-change rate in general is very high. Once an employee leaves a job position, his/her maintenance knowledge and relevant skills will also soon disappear in the organization, and the reuse effect of the knowledge and skills is usually unsound.
Data Mining is a more common approach these days, which is often adopted for data analysis. This can be achieved by employing Association Rule mining to discover the correlation among some items in databases. This research applies the Association Rule mining techniques to discover the correlation between error codes and maintenance codes. By storing the correlation as a word document, this work can then develop a fault diagnosis system for semiconductor equipment maintenance. This system can provide relevant repair suggestions to engineers performing repair functions. The proposed system can reduce the engineer’s repair time on the faulty machine, to increase maintenance efficiency and machine utilization rate; the system can also store the relevant knowledge in the organization, thus minimize potential damages to the company caused by employees’ resignation
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Duen-Ren Liu |
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Duen-Ren Liu Shu-Chen Liao 廖淑珍 |
author |
Shu-Chen Liao 廖淑珍 |
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Shu-Chen Liao 廖淑珍 Mining Knowledge Support for the Maintenance of Semiconductor Equipments |
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Shu-Chen Liao |
title |
Mining Knowledge Support for the Maintenance of Semiconductor Equipments |
title_short |
Mining Knowledge Support for the Maintenance of Semiconductor Equipments |
title_full |
Mining Knowledge Support for the Maintenance of Semiconductor Equipments |
title_fullStr |
Mining Knowledge Support for the Maintenance of Semiconductor Equipments |
title_full_unstemmed |
Mining Knowledge Support for the Maintenance of Semiconductor Equipments |
title_sort |
mining knowledge support for the maintenance of semiconductor equipments |
publishDate |
2005 |
url |
http://ndltd.ncl.edu.tw/handle/54291648744182099209 |
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