DocumentCode
294228
Title
Towards automated knowledge acquisition for process plant diagnosis
Author
King, B. ; Steward, A.P. ; Tait, J.I.
Author_Institution
Sch. of Comput. & Inf. Syst., Sunderland Univ., UK
fYear
1995
fDate
34732
Firstpage
42430
Lastpage
42433
Abstract
There exists a need for diagnostic monitoring systems to ensure safer operation of process plants. Although acquisition of plant knowledge for such systems would prove expensive and time-consuming using traditional techniques, we feel this could be significantly reduced by extracting the information directly from the data held in the CAD models used in plant design. Any additional knowledge requirement could be obtained using conventional expert/knowledge engineering techniques. Not only could this information be utilised for diagnosis, but, by use of object-oriented techniques, the same knowledge could be used to perform functions including the provision of an intelligent CAI system for operator training. The goal of our project is to investigate the link between the design model and the knowledge base, proving that the technique is feasible, and evaluating its worth. We have constructed a simple demonstration system to illustrate the automated knowledge acquisition technique, and this is able to build the plant-specific portion of a frame-based knowledge base from computer-aided process design (CAPD) files, for use in a diagnostic fault-finding system
Keywords
chemical engineering computing; diagnostic expert systems; industrial plants; intelligent design assistants; intelligent tutoring systems; knowledge acquisition; object-oriented methods; production engineering computing; CAD models; automated knowledge acquisition; computer-aided process design; data mining; design model; diagnostic fault-finding system; diagnostic monitoring systems; frame-based knowledge base; information extraction; intelligent CAI system; object-oriented techniques; operator training; process plant diagnosis; safe operation;
fLanguage
English
Publisher
iet
Conference_Titel
Knowledge Discovery in Databases, [IEE Colloquium on]
Conference_Location
London
Type
conf
DOI
10.1049/ic:19950123
Filename
478347
Link To Document