基于不平衡数据的工业控制系统入侵检测系统

Xinrui Dong, Y. Lai
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引用次数: 0

摘要

工业化和信息化的融合使工业控制系统面临着日益严峻的安全挑战。目前,主流的ics安全防护方法是基于深度学习的入侵检测系统(IDS)。然而,这些方法依赖于大量的高质量数据。由于自身的特点和协议的限制,IDS数据通常存在低质量和数据不平衡的问题,这严重影响了IDS的准确性。本研究提出了一种将数据扩展算法与CNN相结合的ICS IDS。设计了一种新的归一化邻域加权凸组合随机样本(NNW-CCRS)过采样算法,该算法可自动衰减噪声和扩展不平衡数据的影响,生成平衡的ICS数据集。通过减少ICS数据不平衡对ids的影响,我们的系统有效地保护了ICS的安全性。使用安全水处理数据集(SWaT)进行实验验证。实验结果证实,与没有数据扩展的ICS相比,该系统的精度提高了约20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion Detection System for Industrial Control Systems Based on Imbalanced Data
The integration of industrialization and informatization has exposed industrial control systems (ICSs) to increasingly serious security challenges. Currently, the mainstream method to protect the security of ICSs is intrusion detection system (IDS) based on deep-learning. However, these methods depend on a massive amount of high-quality data. Owing to the characteristics and protocol limitations, ICSs data usually experience low-quality and data imbalance problems, which significantly affects the accuracy of IDS.In this study, an IDS for ICS that combines data expansion algorithm and CNN was proposed. A novel normalized neighborhood weighted convex combined random sample (NNW-CCRS) oversampling algorithm was designed, which automatically attenuates the effects of noise and expanding imbalanced data to produce balanced ICS datasets. By reducing the impact of imbalanced ICS data on IDSs, our system effectively protects the security of ICS. Secure Water Treatment dataset (SWaT) was used for experimental validation. The experimental results confirmed that the accuracy of the proposed system improved by approximately 20%, compared to the ICS without data expansion.
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