Production Rules Based on the Rule-Based Model for Grinding Trouble-shooting

연삭가공 트러블슈팅을 위한 룰베이스 룰의 구성

  • 이재경 (한국기계연구원 자동화연구부) ;
  • 김건회 (전주대학교 기계·산업공학부) ;
  • 송지복 (부산대학교 기계공학부)
  • Published : 2000.08.01

Abstract

Cognition and control of grinding trouble occurring during the grinding process are classified into a quantitative knowledge which depends on experimental data and qualitative knowledge which relies on skiful engineers. grinding operations include a large number of functional parameters since there are several ways of coping with ginding trouble. One is the qualitative method which depends on empirical knowledge utilizing the skilful experts from the workshop the other is the quantitative method which utilizes the experimental data obtained by sensor. But they are all difficult to accomplish from the grinding trouble-shooting system The reason is that grinding troubles are not accomplish from the grinding trouble-shooting system,. The rason is that grinding troubles are not easily controlled in the quantitative method and therefore trouble-shooting has mainly relied on the knoledge of skiful engineers. Thus there is an important issue of how a grinding touble-shooting system can be designed and what knowledge is utilized among the large amount of grinding trouble information. In this paper basic strategy to develop the grinding database by taking rule-based model which is strongly depended upon experience and intuition is described.

Keywords

References

  1. M.Brich and K.Whiteley: 'An Object-Oriented Expert System Based on Pattern Recognition,' Institute of Electrical and Electronics Engineers(IEEE), Transaction on System, Man, and Cybernetics, Jan. pp. 33-38, 1990 https://doi.org/10.1109/21.47807
  2. R. Reiter; 'A Logic for Default Reasoning, Artificial Intelligence,' 13, pp. 81-87, 1980 https://doi.org/10.1016/0004-3702(80)90014-4
  3. KBMS, Knowledge-base Management System(Software Tool for Developing Expert Systems), NTT co. in Japan, 1988
  4. Umeshwar Dayal, Hai-Yann Hwang; 'View Definition and Generalization for Database Integration in a Multidatabase System,' IEEE Transactions on Software Engineering, Vol. SE-10, No. 6, pp. 628-704, 1984
  5. P. Harker; 'The Art and Science of Decision Making, The Analytic Hierarchy Process,' pp. 3-8, 1989