상세검색
최근 검색어 전체 삭제
다국어입력
즐겨찾기0
국가지식-학술정보

휴리스틱 및 기계 학습을 응용한 엔진 모델의 보정

ICALIB: A Heuristic and Machine Learning Approach to Engine Model Calibration

  • 0
커버이미지 없음

Calibration of Engine models is a painstaking process but very important for successful application to automotive industry problems. A combined heuristic and machine learning approach has therefore been adopted to improve the efficiency of model calibration. We developed an intelligent calibration program called ICALIB. It has been used on a daily basis for engine model applications, and has reduced the time required for model calibrations from many hours to a few minutes on average. In this paper, we describe the heuristic control strategies employed in ICALIB such as a hill-climbing search based on a state distance estimation function, incremental problem solution refinement by using a dynamic tolerance window, and calibration target parameter ordering for guiding the search. In addition, we present the application of amachine learning program called GID3*for automatic acquisition of heuristic rules for ordering target parameters.

(0)

(0)

로딩중