Multigranularity Feature Automatic Marking-Based Deep Learning for Anomaly Detection of Industrial Control Systems

Xinyi Du;Chi Xu;Lin Li;Xinchun Li
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Abstract

Industrial control systems are facing ever-increasing security challenges due to the large-scale access of heterogeneous devices in the open Internet environment. Existing anomaly detection methods are mainly based on the priori knowledge of industrial control protocols (ICPs) whose protocol specifications, communication mechanism, and data format are already known. However, when these knowledge are blank, namely, unknown ICPs, existing methods become powerless to detect the anomaly data. To tackle this challenge, we propose a multigranularity feature automatic marking-based deep learning method to classify unknown ICPs for anomaly detection. First, to obtain the feature sequences without priori knowledge assisting, we propose a multigranularity feature extraction algorithm to extract both byte and half-byte information by fully utilizing the intensive key information in the header field of the application layer. Then, to label the feature sequences for deep learning, we propose a feature automatic marking algorithm that utilizes the inconsistency feature sequences to dynamically update the feature sequence set. With the labeled feature sequences, we employ deep learning with 1-D convolutional neural network and gated recurrent unit to classify the unknown ICPs and realize anomaly detection. Extensive experiments on two public datasets show that both the accuracy and precision of the proposed method reach above 98.4%, which is better than the three benchmark methods.
基于多粒度特征自动标记的深度学习用于工业控制系统异常检测
由于开放互联网环境中异构设备的大规模接入,工业控制系统正面临着日益严峻的安全挑战。现有的异常检测方法主要基于工业控制协议(ICP)的先验知识,这些协议的协议规范、通信机制和数据格式都是已知的。然而,当这些知识都是空白时,即未知的 ICP 时,现有方法就无法检测到异常数据。针对这一难题,我们提出了一种基于多粒度特征自动标记的深度学习方法,对未知 ICP 进行异常检测分类。首先,为了在没有先验知识辅助的情况下获取特征序列,我们提出了一种多粒度特征提取算法,充分利用应用层头部字段的密集关键信息,提取字节和半字节信息。然后,为了标记深度学习的特征序列,我们提出了一种特征自动标记算法,利用不一致的特征序列动态更新特征序列集。有了标注的特征序列,我们就可以利用一维卷积神经网络和门控递归单元进行深度学习,对未知的 ICP 进行分类,实现异常检测。在两个公共数据集上的广泛实验表明,所提方法的准确率和精确度均达到 98.4% 以上,优于三种基准方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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