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터보프롭 엔진의 역모델링과 인공지능 기법을 사용한 진단에 관한 연구

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Author(s)
임세명
Issued Date
2011
Abstract
Recently, the health monitoring system of major gas path components of gas turbine uses mostly the model based method like the Gas Path Analysis (GPA). This method is to find quantity changes of component performance characteristic parameters such as isentropic efficiency and mass flow parameter by comparing between measured engine performance parameters such as temperatures, pressures, rotational speeds, fuel consumption, etc. and clean engine performance parameters without any engine faults which are calculated by the base engine performance model.
Recently, the expert engine diagnostic systems using the artificial intelligent methods such as Neural Networks (NNs), Fuzzy Logic and Genetic Algorithms (GAs) have been studied to improve the model based method. Among them the NNs are mostly used to the engine fault diagnostic system due to its good learning performance, but it has a drawback due to low accuracy and long learning time to build learning data base if there are large amount of learning data. In addition, it has a very complex structure for finding effectively single type faults or multiple type faults of gas path components.
This work builds inversely a base performance model of a turboprop engine to be used for a high altitude operation UAV using measured performance data, and proposes a fault diagnostic system using the base engine performance model and the artificial intelligent methods such as Fuzzy logic and Neural Network.
The proposed diagnostic system isolates firstly the faulted components using Fuzzy Logic, then quantifies faults of the identified components using the NN leaned by fault learning data base, which are obtained from the developed base performance model. In leaning the NN, the Feed Forward Back Propagation (FFBP) method is used.
Finally, it is verified through several test examples that the component faults implanted arbitrarily in the engine are well isolated and quantified by the proposed diagnostic system.
Alternative Title
Study on Fault Diagnostics of a Turboprop Engine Using Inverse Performance Model and Artificial Intelligent Methods
Alternative Author(s)
Lim, Semyeong
Affiliation
조선대학교 일반대학원
Department
일반대학원 항공우주공학과
Advisor
공창덕
Awarded Date
2011-08
Table Of Contents
목 차

ABSTRACT

제 1 장 서 론 .............................................................................................................. 1
제1절 개 요 .......................................................................................................... 1
제2절 기술 현황 분석 .......................................................................................... 4
1. 가스터빈 엔진 역 모델링 연구............................................................................ 4
2. 추진시스템 성능 모사 연구 ............................................................................... 5
3. 추진시스템 상태 진단 연구 ............................................................................... 8
제3절 연구 내용 및 범위 ............................................................................................ 13

제 2 장 엔진 시험 장치를 이용한 역 모델링 연구 ................................................... 15
제1절 시험장치 구성 ...................................................................................... 15
1. 대상 엔진 ................................................................................................... 15
2. 엔진 센싱 홀 ................................................................................................... 16
3. Test cell ................................................................................................... 16
제2절 데이터 계측 및 획득 시스템 .......................................................................... 17
1. Real-Time Monitoring System ....................................................................... 17
2. 데이터 획득 시스템 ............................................................................................. 18
제3절 실험 데이터를 이용한 성능선도 역생성 ..................................................... 19
1. 성능선도 역생성 .......................................................................................... 19
제4절 성능해석 결과 ...................................................................................... 22

제 3 장 터보프롭엔진의 역 모델링 연구 ..................................................................... 26
제1절 대상 엔진 .......................................................................................................... 26
제2절 성능덱 데이터 분석 ...................................................................................... 27
1. 입력조건 ............................................................................................................. 27
2. 성능덱 데이터 분석 ............................................................................................. 28
제3절 구성품 성능선도 역생성 .................................................................................. 29
1. 압축기 ............................................................................................................. 29
2. 가스제너레이터 터빈 ........................................................................................... 31
3. 동력 터빈 ............................................................................................................. 32
제4절 엔진 성능 모델링 및 생성된 구성품 성능선도 검증 ............................... 33
1. RC-1 ............................................................................................................. 35
2. RC-3 ............................................................................................................. 36
3. RC-4 ............................................................................................................. 37
4. RC-5 ............................................................................................................. 38
5. RC-6 ............................................................................................................. 39
6. RC-7 ............................................................................................................. 40

제 4 장 터보프롭엔진의 인공지능 진단 연구 ............................................................. 41
제1절 주요 구성품 손상에 따른 엔진 성능저하 특성 연구 ............................... 41
1. 성능저하 원인에 따른 계측변수 분석 ................................................... 41
제2절 퍼지 및 신경회로망을 이용한 다중 손상 진단 ......................................... 46
1. 퍼지로직을 이용한 손상된 구성품 식별 ............................................... 46
2. 구성품 손상의 정량적 진단을 위한 신경회로망 설계 및 훈련 ............... 49
3. 제작된 인공지능 진단 프로그램의 검증 ............................................... 51
제3절 실제 엔진 시험데이터의 진단 ............................................................... 56
1. 엔진 시험 데이터 분석 ......................................................................... 56
2. 인공지능 진단 프로그램을 이용한 엔진 시험 데이터의 진단 .................. 49

제 8 장 결 론 .............................................................................................................. 59

참 고 문 헌 ........................................................................................................................... 60

부 록 ........................................................................................................................... 67
Degree
Master
Publisher
조선대학교
Citation
임세명. (2011). 터보프롭 엔진의 역모델링과 인공지능 기법을 사용한 진단에 관한 연구.
Type
Dissertation
URI
https://oak.chosun.ac.kr/handle/2020.oak/9232
http://chosun.dcollection.net/common/orgView/200000242092
Appears in Collections:
General Graduate School > 3. Theses(Master)
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