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설명 가능한 AI를 적용한 기계 예지 정비 방법

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영문명
Explainable AI Application for Machine Predictive Maintenance
발행기관
한국산업경영시스템학회
저자명
천강민(Kang Min Cheon) 양재경(Jaekyung Yang)
간행물 정보
『산업경영시스템학회지』제44권 제4호, 227~233쪽, 전체 7쪽
주제분류
공학 > 산업공학
파일형태
PDF
발행일자
2021.12.31
4,000

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국문 초록

영문 초록

Predictive maintenance has been one of important applications of data science technology that creates a predictive model by collecting numerous data related to management targeted equipment. It does not predict equipment failure with just one or two signs, but quantifies and models numerous symptoms and historical data of actual failure. Statistical methods were used a lot in the past as this predictive maintenance method, but recently, many machine learning-based methods have been proposed. Such proposed machine learning-based methods are preferable in that they show more accurate prediction performance. However, with the exception of some learning models such as decision tree-based models, it is very difficult to explicitly know the structure of learning models (Black-Box Model) and to explain to what extent certain attributes (features or variables) of the learning model affected the prediction results. To overcome this problem, a recently proposed study is an explainable artificial intelligence (AI). It is a methodology that makes it easy for users to understand and trust the results of machine learning-based learning models. In this paper, we propose an explainable AI method to further enhance the explanatory power of the existing learning model by targeting the previously proposedpredictive model [5] that learned data from a core facility (Hyper Compressor) of a domestic chemical plant that produces polyethylene. The ensemble prediction model, which is a black box model, wasconverted to a white box model using the Explainable AI. The proposed methodology explains the direction of control for the major features in the failure prediction results through the Explainable AI. Through this methodology, it is possible to flexibly replace the timing of maintenance of the machine and supply and demand of parts, and to improve the efficiency of the facility operation through proper pre-control.

목차

Ⅰ. 서론
Ⅱ. 기존 연구
Ⅲ. 연구 방법
Ⅳ. 실험 결과
Ⅴ. 결 론
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APA

천강민(Kang Min Cheon),양재경(Jaekyung Yang). (2021).설명 가능한 AI를 적용한 기계 예지 정비 방법. 산업경영시스템학회지, 44 (4), 227-233

MLA

천강민(Kang Min Cheon),양재경(Jaekyung Yang). "설명 가능한 AI를 적용한 기계 예지 정비 방법." 산업경영시스템학회지, 44.4(2021): 227-233

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