Title :
Creating service expertise from raw data with expert system software
Author :
Ben-Bassat, Moshe
Author_Institution :
IET-Intelligent Electron., Anaheim, CA, USA
Abstract :
Putting expertise into software requires us to first understand how humans become experts and how they process information into the “knowledge bases” in their minds. From this point of view, it becomes readily apparent why field service personnel who are expert in servicing several equipment types will perform much better than novices when learning a new equipment type. They use their general service and troubleshooting competencies to structure the new information around their proven knowledge retrieval and problem-solving methods. In this article we will explore how we can endow service support software with these competencies in order to drastically shorten the software´s “learning period”, the time it takes to make the knowledge base ready for deployment. This software can process raw design data, and raw service data, into ready-to-use knowledge-all with minimal demands on the time of human experts. The concepts presented have been field proven in problem resolution software for supporting equipment maintenance, service and repair. Based on our experience and findings reported by users of other approaches, we have determined that the combination of case-based and model-based reasoning, and relying on automated import into the knowledge model, leads to both fast deployment and high diagnostics performance
Keywords :
case-based reasoning; diagnostic expert systems; knowledge acquisition; maintenance engineering; model-based reasoning; problem solving; case-based reasoning; equipment maintenance; expert system software; fast deployment; high diagnostics performance; knowledge acquisition; knowledge model; model-based reasoning; problem resolution; raw data; ready-to-use knowledge; service expertise; service support software; troubleshooting; Documentation; Expert systems; Fabrication; Humans; Information retrieval; Knowledge engineering; Laboratories; Marketing and sales; Optical fiber theory; Optical polymers; Optical refraction; Optical variables control; Optical waveguides; Personnel; Planarization; Problem-solving; Process design; Semiconductor waveguides; Software maintenance;
Conference_Titel :
AUTOTESTCON '99. IEEE Systems Readiness Technology Conference, 1999. IEEE
Conference_Location :
San Antonio, TX
Print_ISBN :
0-7803-5432-X
DOI :
10.1109/AUTEST.1999.800373