Live Demonstration: Autoencoder-Based Predictive Maintenance for IoT

Published: May 1, 2019
Abstract
This live demo aims to show the performance of a two-layer neural network applied to predictive maintenance. The first layer encodes features based on prior knowledge, while the second layer is trained online to detect anomalies. The system is implemented on an FPGA, acquiring real-time data from sensors attached to a motor. Faults can be triggered artificially in real-time to demonstrate anomaly...
Paper Details
Title
Live Demonstration: Autoencoder-Based Predictive Maintenance for IoT
Published Date
May 1, 2019
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