EOR screening with an expert system

Research output: Chapter in Book/Report/Conference proceedingConference contribution

5 Citations (Scopus)

Abstract

The application of an Artificial Intelligence (AI) technique to assist in the selection of an Enhanced Oil Recovery process (EOR) is described. The aim of this Expert System (ES) is to provide reasoned comments on the applicability of such processes on the basis of reservoir characteristics. The knowledge base has been developed using a professional inference engine. To be closer to the type of reasoning used by experts, fuzzy logic concepts have been introduced in the knowledge representation. This approach leads to a methodology for selecting EOR processes and for improving know-how by checking the criteria used by comparison with practical experience, and it helps to transfer the expert's knowledge to the users of the system. Moreover, estimations of additional field cases makes it possible to continuously refine the screening procedure.

Original languageEnglish
Title of host publicationProc Pet Ind Appl Microcomput
PublisherPubl by Soc of Petroleum Engineers of AIME
Pages137-14717791
Number of pages14717655
Publication statusPublished - 1988
Externally publishedYes
EventProceedings: Petroleum Industry Applications of Microcomputers - San Jose, CA, USA
Duration: 27 Jun 198829 Jun 1988

Other

OtherProceedings: Petroleum Industry Applications of Microcomputers
CitySan Jose, CA, USA
Period27/6/8829/6/88

Fingerprint

Expert systems
Screening
Recovery
Inference engines
Knowledge representation
Fuzzy logic
Artificial intelligence
Oils

ASJC Scopus subject areas

  • Engineering(all)

Cite this

Guerillot, D. (1988). EOR screening with an expert system. In Proc Pet Ind Appl Microcomput (pp. 137-14717791). Publ by Soc of Petroleum Engineers of AIME.

EOR screening with an expert system. / Guerillot, Dominique.

Proc Pet Ind Appl Microcomput. Publ by Soc of Petroleum Engineers of AIME, 1988. p. 137-14717791.

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Guerillot, D 1988, EOR screening with an expert system. in Proc Pet Ind Appl Microcomput. Publ by Soc of Petroleum Engineers of AIME, pp. 137-14717791, Proceedings: Petroleum Industry Applications of Microcomputers, San Jose, CA, USA, 27/6/88.
Guerillot D. EOR screening with an expert system. In Proc Pet Ind Appl Microcomput. Publ by Soc of Petroleum Engineers of AIME. 1988. p. 137-14717791
Guerillot, Dominique. / EOR screening with an expert system. Proc Pet Ind Appl Microcomput. Publ by Soc of Petroleum Engineers of AIME, 1988. pp. 137-14717791
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