Noise-robust Machine Learning Models for Predictive Maintenance Applications

Suawa P, Halbinger A, Jongmanns M, Reichenbach M (2023)


Publication Type: Journal article

Publication year: 2023

Journal

Pages Range: 1-1

DOI: 10.1109/JSEN.2023.3273458

Abstract

Predictive maintenance of equipment requires a set of data collected through sensors, from which models will learn behaviors that will allow the automatic detection or prediction of these behaviors. The objective is to anticipate unexpected situations such as sudden equipment stoppages. Industries are noisy environments due to production lines that involve a series of components. As a result, the data will always be obstructed by noise. Noise-robust predictive maintenance models, which include ensemble and deep learning models with and without data fusion, are proposed to enhance the monitoring of industrial equipment. The work reported in this paper is based on two components, a milling tool, and a motor, with sound, vibration, and ultrasound data collected in real experiments. Four main tasks were performed, namely the construction of the datasets, the training of the monitoring models without adding artificial noise to the data, the evaluation of the robustness of the previously trained models by injecting several levels of noise into the test data, and the optimization of the models by a proposed noisy training approach. The results show that the models maintain their performances at over 95% accuracy despite adding noise in the test phase. These performances decrease by only 2% at a considerable noise level of 15dB signal-to-noise ratio (SNR). The noisy training method proved to be an optimal solution for improving the noise robustness and accuracy of convolutional deep learning models, whose performance regression of 2% went from a noise level of 28dB to 15dB like the other models.

Involved external institutions

How to cite

APA:

Suawa, P., Halbinger, A., Jongmanns, M., & Reichenbach, M. (2023). Noise-robust Machine Learning Models for Predictive Maintenance Applications. IEEE Sensors Journal, 1-1. https://dx.doi.org/10.1109/JSEN.2023.3273458

MLA:

Suawa, Priscile, et al. "Noise-robust Machine Learning Models for Predictive Maintenance Applications." IEEE Sensors Journal (2023): 1-1.

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