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An AI-based Prediction-as-a-Service Model for Estimating Machine Bearing Health Status in Industry 4.0 5G Applications

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Autor
Batistakis D., Xenakis A., Papastergiou G., Chatzimisios P., Gerogiannis V.C.
Fecha
2021
Language
en
DOI
10.1109/IISA52424.2021.9555538
Materia
3D modeling
5G mobile communication systems
Classification (of information)
Computer aided diagnosis
Condition monitoring
Forecasting
Industry 4.0
Time domain analysis
2D images
Bearing
Common faults
Condition prediction
Faults diagnosis
Health status
Intelligent machine
Machine bearing
Machine condition monitoring
Service modeling
Deep neural networks
Institute of Electrical and Electronics Engineers Inc.
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Resumen
Intelligent Machine Condition Monitoring (MCM) and Prediction for machine bearings is very important for efficient Industrial 5G applications. Common fault diagnosis and other classification methods usually extract time domain and frequency features or try to decrease noise from raw time sensory data. Afterwards, features are sought in time domain and statistical classifiers can be applied do the diagnosis. However, these methods suffer from expertise of feature selection and robustness in real time condition monitoring. In this paper, we present a prediction-as-a-service model for estimating machine bearing health status in industry 4.0 5G applications based on Deep Neural Networks (DNN). The proposed model constructs 3D grayscale images from raw time series data and performs prediction more efficiently. The paper also presents testing and evaluation of the model's prediction and categorization capacity. © 2021 IEEE.
URI
http://hdl.handle.net/11615/71164
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