LGAug 1, 2024

Low-Power Vibration-Based Predictive Maintenance for Industry 4.0 using Neural Networks: A Survey

arXiv:2408.00516v15 citationsh-index: 6
Originality Synthesis-oriented
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It addresses energy and storage costs in Industry 4.0 predictive maintenance, but is incremental as a review paper.

This survey investigates neural networks for low-power on-device predictive maintenance using vibration sensor data, finding no satisfactory standard benchmark dataset and noting common use of frequency domain preprocessing.

The advancements in smart sensors for Industry 4.0 offer ample opportunities for low-powered predictive maintenance and condition monitoring. However, traditional approaches in this field rely on processing in the cloud, which incurs high costs in energy and storage. This paper investigates the potential of neural networks for low-power on-device computation of vibration sensor data for predictive maintenance. We review the literature on Spiking Neural Networks (SNNs) and Artificial Neuronal Networks (ANNs) for vibration-based predictive maintenance by analyzing datasets, data preprocessing, network architectures, and hardware implementations. Our findings suggest that no satisfactory standard benchmark dataset exists for evaluating neural networks in predictive maintenance tasks. Furthermore frequency domain transformations are commonly employed for preprocessing. SNNs mainly use shallow feed forward architectures, whereas ANNs explore a wider range of models and deeper networks. Finally, we highlight the need for future research on hardware implementations of neural networks for low-power predictive maintenance applications and the development of a standardized benchmark dataset.

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