Predictive Maintenance Algorithm Based on Machine Learning for Industrial Asset

Angel J. Alfaro-Nango,Elias N. Escobar-Gomez,Eduardo Chandomi-Castellanos,Sabino Velazquez-Trujillo, Hector R. Hernandez-de-Leon, Lidya M. Blanco-Gonzalez

2022 8TH INTERNATIONAL CONFERENCE ON CONTROL, DECISION AND INFORMATION TECHNOLOGIES (CODIT'22)(2022)

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摘要
This article proposes a predictive maintenance algorithm based on machine learning to predict the remaining useful life of industrial assets. The synthetic dataset NCMAPSS was used, which contains a performance degradation dataset until the presence of failure of an aircraft fleet under real flight conditions is detected. The principal element of maintenance focuses on the predictability of the remaining useful life; predictive models need performance information of an asset from the beginning to failure. [1]. The approach considers the data analysis to understand the data behavior. Monotonicity and principal component analysis are applied in the variable selection. Furthermore, convolutional neural networks are integrated to predict the remaining useful life, resulting in a 10.91 mean of RSME. The "DS01" dataset was used for training; six engines were used for the training dataset and the remaining four for the test dataset.
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关键词
performance degradation dataset,performance information,principal component analysis,DS01 dataset,training dataset,test dataset,predictive maintenance algorithm,machine learning,industrial asset,synthetic dataset,N-CMAPSS,aircraft fleet,flight conditions,convolutional neural networks,engines
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