Mutation-Based Multivariate Time-Series Anomaly Generation on Latent Space with an Attention-Based Variational Recurrent Neural Network for Robust Anomaly Detection in an Industrial Control System

Author:

Jeon Seungho1ORCID,Koo Kijong2ORCID,Moon Daesung2ORCID,Seo Jung Taek1ORCID

Affiliation:

1. Department of Computer Engineering (Smart Security), Gachon University, Seongnam-daero 1342, Seongnam-si 13119, Republic of Korea

2. Electronics and Telecommunications Research Institute (ETRI), Daejeon 34129, Republic of Korea

Abstract

Anomaly detection involves identifying data that deviates from normal patterns. Two primary strategies are used: one-class classification and binary classification. In Industrial Control Systems (ICS), where anomalies can cause significant damage, timely and accurate detection is essential, often requiring analysis of time-series data. One-class classification is commonly used but tends to have a high false alarm rate. To address this, binary classification is explored, which can better differentiate between normal and anomalous data, though it struggles with class imbalance in ICS datasets. This paper proposes a mutation-based technique for generating ICS time-series anomalies. The method maps ICS time-series data into a latent space using a variational recurrent autoencoder, applies mutation operations, and reconstructs the time-series, introducing plausible anomalies that reflect multivariate correlations. Evaluations of ICS datasets show that these synthetic anomalies are visually and statistically credible. Training a binary classifier on data augmented with these anomalies effectively mitigates the class imbalance problem.

Funder

Korea Government

Publisher

MDPI AG

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