IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Using Knowledge-Based Intelligent Reasoning to Support Dynamic Equipment Diagnosis and Maintenance

Using Knowledge-Based Intelligent Reasoning to Support Dynamic Equipment Diagnosis and Maintenance
View Sample PDF
Author(s): Yin-Ho Yao (Ta Hwa Institute of Technology, Taiwan ROC), Gilbert Y.P. Lin Lin (Natinal Tsing Hua University, Taiwan ROC)and Amy J.C. Trappey (Natinal Tsing Hua University, Taiwan ROC)
Copyright: 2006
Volume: 2
Issue: 1
Pages: 13
Source title: International Journal of Enterprise Information Systems (IJEIS)
Editor(s)-in-Chief: Gianluigi Viscusi (Linköping University, Sweden)
DOI: 10.4018/jeis.2006010102

Purchase

View Using Knowledge-Based Intelligent Reasoning to Support Dynamic Equipment Diagnosis and Maintenance on the publisher's website for pricing and purchasing information.

Abstract

This research focuses on the development of a rule-based intelligent equipment trouble-shooting and maintenance platform using JAVA Expert System Shell (JESS) technology. A prototype system is designed and developed combining rule-based knowledge system and inference engine to support real-time collaborative equipment maintenance across geographical boundary. The main modules of the system include diagnosis knowledge management, project (or case) management and system administration. The knowledge management module consists of key functions such as knowledge type definition, knowledge component definition, document definition, mathematical model definition, rule and rule-set management. The project management module has key functions such as project definition, project’s role management, project’s function management and project’s rule-set execution. Further, a Thin-Film Transistor Liquid-Crystal Display (TFT-LCD) production equipment diagnosis and maintenance system is designed and implemented to demonstrate the intelligent maintenance capability. The prototype system enhances agility of TFT-LCD collaborative manufacturing processes with real-time equipment diagnosis and maintenance.

Related Content

Yujong Hwang, Hui Lin, Donghee Shin. © 2023. 17 pages.
Mohamed Abdalla Nour. © 2023. 29 pages.
Yin Xu, Sam Dzever, Guoqin Zhao. © 2023. 23 pages.
Yigal David, Elad Harison. © 2022. 20 pages.
Godwin Banafo Akrong, Yunfei Shao, Ebenezer Owusu. © 2022. 41 pages.
Mohmed Y. Mohmed Al-Sabaawi, Bassam A. Alyouzbaky. © 2022. 22 pages.
Normalini Md Kassim, Wan Normila Mohamad, Nor Hazlina Hashim. © 2022. 21 pages.
Body Bottom