Ensemble Neuroevolution-Based Approach for Multivariate Time Series Anomaly Detection

被引:18
作者
Faber, Kamil [1 ]
Pietron, Marcin [1 ]
Zurek, Dominik [1 ]
机构
[1] AGH Univ Sci & Technol, Dept Comp Sci, Adama Mickiewicza 30, PL-30059 Krakow, Poland
关键词
neuroevolution; anomaly detection; ensemble model; CNN; time series; deep learning;
D O I
10.3390/e23111466
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Multivariate time series anomaly detection is a widespread 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 that automate the process of detecting anomalies are crucial in modern failure prevention systems. Therefore, many machine learning models have been designed to address this problem. Mostly, they are autoencoder-based architectures with some generative adversarial elements. This work shows a framework that incorporates neuroevolution methods to boost the anomaly detection scores of new and already known models. The presented approach adapts evolution strategies for evolving an ensemble model, in which every single model works on a subgroup of data sensors. The next goal of neuroevolution is to optimize the architecture and hyperparameters such as the window size, the number of layers, and the layer depths. The proposed framework shows that it is possible to boost most anomaly detection deep learning models in a reasonable time and a fully automated mode. We ran tests on the SWAT and WADI datasets. To the best of our knowledge, this is the first approach in which an ensemble deep learning anomaly detection model is built in a fully automatic way using a neuroevolution strategy.
引用
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页数:13
相关论文
共 21 条
[1]  
Ahmed C. M., 2017, P 3 INT WORKSH CYB P, P25, DOI 10.1145/3055366.3055375
[2]  
Angiulli F., 2002, Principles of Data Mining and Knowledge Discovery. 6th European Conference, PKDD 2002. Proceedings (Lecture Notes in Artificial Intelligence Vol.2431), P15
[3]   USAD : UnSupervised Anomaly Detection on Multivariate Time Series [J].
Audibert, Julien ;
Michiardi, Pietro ;
Guyard, Frederic ;
Marti, Sebastien ;
Zuluaga, Maria A. .
KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, :3395-3404
[4]   LOF: Identifying density-based local outliers [J].
Breunig, MM ;
Kriegel, HP ;
Ng, RT ;
Sander, J .
SIGMOD RECORD, 2000, 29 (02) :93-104
[5]   A Multimodal Anomaly Detector for Robot-Assisted Feeding Using an LSTM-Based Variational Autoencoder [J].
Park D. ;
Hoshi Y. ;
Kemp C.C. .
IEEE Robotics and Automation Letters, 2018, 3 (03) :1544-1551
[6]   Threaded ensembles of autoencoders for stream learning [J].
Dong, Yue ;
Japkowicz, Nathalie .
COMPUTATIONAL INTELLIGENCE, 2018, 34 (01) :261-281
[7]  
Galvan P.M.E., 2020, ARXIV200605415
[8]  
Hooi B., ARXIVCSLG210606947
[9]  
Isermann R, 2004, IFAC P, V37, P49, DOI [10.1016/S1474-6670(17)32149-3, DOI 10.1016/S1474-6670(17)32149-3]
[10]   A Malware Detection Approach Using Malware Images and Autoencoders [J].
Jin, Xiang ;
Xing, Xiaofei ;
Elahi, Haroon ;
Wang, Guojun ;
Jiang, Hai .
2020 IEEE 17TH INTERNATIONAL CONFERENCE ON MOBILE AD HOC AND SMART SYSTEMS (MASS 2020), 2020, :1-6