Online Detection of Vibration Anomalies Using Balanced Spiking Neural Networks
Metadata only
Date
2021-06-06Type
- Conference Paper
Abstract
Vibration patterns yield valuable information about the health state of a running machine, which is commonly exploited in predictive maintenance tasks for large industrial systems. However, the overhead, in terms of size, complexity and power budget, required by classical methods to exploit this information is often prohibitive for smaller-scale applications such as autonomous cars, drones or robotics. Here we propose a neuromorphic approach to perform vibration analysis using spiking neural networks that can be applied to a wide range of scenarios. We present a spike-based end-To-end pipeline able to detect system anomalies from vibration data, using building blocks that are compatible with analog-digital neuromorphic circuits. This pipeline operates in an online unsupervised fashion, and relies on a cochlea model, on feedback adaptation and on a balanced spiking neural network. We show that the proposed method achieves state-of-The-Art performance or better against two publicly available data sets. Further, we demonstrate a working proof-of-concept implemented on an asynchronous neuromorphic processor device. This work represents a significant step towards the design and implementation of autonomous lowpower edge-computing devices for online vibration monitoring. Show more
Publication status
publishedExternal links
Book title
2021 IEEE 3rd International Conference on Artificial Intelligence Circuits and Systems, AICAS 2021Pages / Article No.
Publisher
IEEEEvent
Subject
predictive maintenance; spiking neural networks; cochlea; E-I balance; neuromorphic processorOrganisational unit
09699 - Indiveri, Giacomo / Indiveri, Giacomo
Notes
Conference lecture held on June 6, 2021More
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