Assessment of the Applicability of Autoencoders in the Problem of Detecting Anomalies in the Work of Industrial Control Systems.
Title | Assessment of the Applicability of Autoencoders in the Problem of Detecting Anomalies in the Work of Industrial Control Systems. |
Publication Type | Conference Paper |
Year of Publication | 2020 |
Authors | Pyatnisky, I. A., Sokolov, A. N. |
Conference Name | 2020 Global Smart Industry Conference (GloSIC) |
Date Published | Nov. 2020 |
Publisher | IEEE |
ISBN Number | 978-1-7281-8075-5 |
Keywords | anomalies detection, auto-encoders, autoencoders, classification problems, complex problems, control engineering computing, convolutional neural nets, convolutional neural networks, Decoding, Deep Learning, ICS Anomaly Detection, industrial control, industrial control system, industrial control systems (ICS), industrial facilities, Industries, Information security, integrated circuits, learning (artificial intelligence), machine learning, Neurons, process control, process control systems, pubcrawl, resilience, Resiliency, Scalability, Task Analysis |
Abstract | Deep learning methods are increasingly becoming solutions to complex problems, including the search for anomalies. While fully-connected and convolutional neural networks have already found their application in classification problems, their applicability to the problem of detecting anomalies is limited. In this regard, it is proposed to use autoencoders, previously used only in problems of reducing the dimension and removing noise, as a method for detecting anomalies in the industrial control system. A new method based on autoencoders is proposed for detecting anomalies in the operation of industrial control systems (ICS). Several neural networks based on auto-encoders with different architectures were trained, and the effectiveness of each of them in the problem of detecting anomalies in the work of process control systems was evaluated. Auto-encoders can detect the most complex and non-linear dependencies in the data, and as a result, can show the best quality for detecting anomalies. In some cases, auto-encoders require fewer machine resources. |
URL | https://ieeexplore.ieee.org/document/9267864 |
DOI | 10.1109/GloSIC50886.2020.9267864 |
Citation Key | pyatnisky_assessment_2020 |
- industrial facilities
- Task Analysis
- Scalability
- Resiliency
- resilience
- pubcrawl
- process control systems
- process control
- Neurons
- machine learning
- learning (artificial intelligence)
- integrated circuits
- information security
- Industries
- anomalies detection
- industrial control systems (ICS)
- industrial control system
- industrial control
- ICS Anomaly Detection
- deep learning
- Decoding
- convolutional neural networks
- convolutional neural nets
- control engineering computing
- complex problems
- classification problems
- autoencoders
- auto-encoders