Bayesian Autoencoders for Drift Detection in Industrial Environments

07/28/2021
by   Bang Xiang Yong, et al.
7

Autoencoders are unsupervised models which have been used for detecting anomalies in multi-sensor environments. A typical use includes training a predictive model with data from sensors operating under normal conditions and using the model to detect anomalies. Anomalies can come either from real changes in the environment (real drift) or from faulty sensory devices (virtual drift); however, the use of Autoencoders to distinguish between different anomalies has not yet been considered. To this end, we first propose the development of Bayesian Autoencoders to quantify epistemic and aleatoric uncertainties. We then test the Bayesian Autoencoder using a real-world industrial dataset for hydraulic condition monitoring. The system is injected with noise and drifts, and we have found the epistemic uncertainty to be less sensitive to sensor perturbations as compared to the reconstruction loss. By observing the reconstructed signals with the uncertainties, we gain interpretable insights, and these uncertainties offer a potential avenue for distinguishing real and virtual drifts.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/25/2022

Bayesian autoencoders with uncertainty quantification: Towards trustworthy anomaly detection

Despite numerous studies of deep autoencoders (AEs) for unsupervised ano...
research
10/08/2021

Minimal-Configuration Anomaly Detection for IIoT Sensors

The increasing deployment of low-cost IoT sensor platforms in industry b...
research
08/20/2020

Using Ensemble Classifiers to Detect Incipient Anomalies

Incipient anomalies present milder symptoms compared to severe ones, and...
research
10/19/2021

Coalitional Bayesian Autoencoders – Towards explainable unsupervised deep learning

This paper aims to improve the explainability of Autoencoder's (AE) pred...
research
07/04/2021

Leveraging Evidential Deep Learning Uncertainties with Graph-based Clustering to Detect Anomalies

Understanding and representing traffic patterns are key to detecting ano...
research
02/15/2022

Deep Convolutional Autoencoder for Assessment of Anomalies in Multi-stream Sensor Data

A fully convolutional autoencoder is developed for the detection of anom...
research
01/18/2023

Detecting and Ranking Causal Anomalies in End-to-End Complex System

With the rapid development of technology, the automated monitoring syste...

Please sign up or login with your details

Forgot password? Click here to reset