Abstract

The security of industrial control systems (ICSs) has received a lot of attention in recent years. ICSs were once closed networks. But with the development of IT technologies, ICSs have become connected to the Internet, increasing the potential of cyberattacks. Because ICSs are so tightly linked to human lives, any harm to them could have disastrous implications. As a technique of providing protection, many intrusion detection system (IDS) studies have been conducted. However, because of the complicated network environment and rising means of attack, it is difficult to cover all attack classes, most of the existing classification techniques are hard to deploy in a real environment since they cannot deal with the open set problem. We propose a novel artificial neural network based-methodology to solve this problem. Our suggested method can classify known classes while also detecting unknown classes. We conduct research from two points of view. On the one hand, we use the openmax layer instead of the traditional softmax layer. Openmax overcomes the limitations of softmax, allowing neural networks to detect unknown attack classes. During training, on the other hand, a new loss function termed center loss is implemented to improve detection ability. The neural network model learns better feature representations with the combined supervision of center loss and softmax loss. We evaluate the neural network on NF-BoT-IoT-v2 and Gas Pipeline datasets. The experiments show our proposed method is comparable with the state-of-the-art algorithm in terms of detecting unknown classes. But our method has a better overall classification performance.

Highlights

  • Academic Editor: Chi-Hua Chen e security of industrial control systems (ICSs) has received a lot of attention in recent years

  • We evaluate the neural network on NF-BoT-IoT-v2 and Gas Pipeline datasets. e experiments show our proposed method is comparable with the state-of-the-art algorithm in terms of detecting unknown classes

  • We introduce a novel intrusion detection method based on an open set artificial neural network (ANN), with the help of openmax and center loss function

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Summary

Introduction

Academic Editor: Chi-Hua Chen e security of industrial control systems (ICSs) has received a lot of attention in recent years. Openmax overcomes the limitations of softmax, allowing neural networks to detect unknown attack classes. ICSs (to improve the readability, we list in Table 1 all the acronyms involved in our paper) have been isolated by the physical gap in the early years. These systems have been connected to the Internet. As the attack against ICSs will lead to catastrophic consequences, including economic losses, physical equipment damage, and potential consequences that may cause casualties, it is important to develop security protection technologies. E intrusion detection system (IDS) is one of the techniques for ICSs security that has been extensively studied in recent years [4]. Industrial control systems Intrusion detection system Host intrusion detection system Network intrusion detection system Artificial neural network Convolutional neural network Recurrent neural network Long short-term memory

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