Spiking Neural Networks for Low-Power Vibration-Based Predictive Maintenance
Alexandru Vasilache, Sven Nitzsche, Christian Kneidl, Mikael Tekneyan, Moritz Neher, Juergen Becker

TL;DR
This paper demonstrates that Spiking Neural Networks can effectively perform vibration-based predictive maintenance tasks with high accuracy and significantly lower energy consumption on edge hardware, advancing industrial IoT applications.
Contribution
It introduces a recurrent SNN model for simultaneous regression and classification in industrial vibration monitoring, with energy efficiency analysis on neuromorphic hardware.
Findings
Classification accuracy >97% with zero false negatives.
Regression errors below 1% for flow and pump speed.
Energy consumption on Loihi up to 3 orders of magnitude lower than traditional CPUs.
Abstract
Advancements in Industrial Internet of Things (IIoT) sensors enable sophisticated Predictive Maintenance (PM) with high temporal resolution. For cost-efficient solutions, vibration-based condition monitoring is especially of interest. However, analyzing high-resolution vibration data via traditional cloud approaches incurs significant energy and communication costs, hindering battery-powered edge deployments. This necessitates shifting intelligence to the sensor edge. Due to their event-driven nature, Spiking Neural Networks (SNNs) offer a promising pathway toward energy-efficient on-device processing. This paper investigates a recurrent SNN for simultaneous regression (flow, pressure, pump speed) and multi-label classification (normal, overpressure, cavitation) for an industrial progressing cavity pump (PCP) using 3-axis vibration data. Furthermore, we provide energy consumption…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Infrastructure Maintenance and Monitoring · Machine Fault Diagnosis Techniques
