Ensemble neuroevolution based approach for multivariate time series anomaly detection
Kamil Faber, Dominik \.Zurek, Marcin Pietro\'n, Kamil Pi\k{e}tak

TL;DR
This paper introduces a novel neuroevolution-based framework that automatically optimizes ensemble deep learning models for multivariate time series anomaly detection, improving detection performance efficiently.
Contribution
It presents the first fully automated neuroevolution approach to optimize ensemble deep learning models for multivariate time series anomaly detection.
Findings
Boosts anomaly detection scores across models
Operates in reasonable time and fully automated
Effective on SWAT and WADI datasets
Abstract
Multivariate time series anomaly detection is a very common problem in the field of failure prevention. Fast prevention means lower repair costs and losses. The amount of sensors in novel industry systems makes the anomaly detection process quite difficult for humans. Algorithms which automates the process of detecting anomalies are crucial in modern failure-prevention systems. Therefore, many machine and deep learning models have been designed to address this problem. Mostly, they are autoencoder-based architectures with some generative adversarial elements. In this work, a framework is shown which incorporates neuroevolution methods to boost the anomaly-detection scores of new and already known models. The presented approach adapts evolution strategies for evolving ensemble model, in which every single model works on a subgroup of data sensors. The next goal of neuroevolution is to…
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Taxonomy
MethodsRepair
