Extracting Function-Driven Tracing Characteristics for Optimized SVM Classification

M. Wan, Xinlu Xu, Yan Song, Quanliang Li, Jiawei Li
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Abstract

Due to its openness and simplicity, Modbus TCP has wide applications to facilitate the actual management and control in industrial wireless fields. However, its potential security vulnerabilities can also create lots of complicated information security challenges, which are increasingly threatening the availability of industrial real-time traffic delivery. Although anomaly detection has been recognized as a workable security measure to identify attacks, the critical step to successfully extract data characteristics is an extremely difficult task. In this paper, we focus on the continuous control mode in industrial processes and propose a control tracing feature algorithm to extract the function-driven tracing characteristics from Modbus TCP data traffic. Furthermore, this algorithm can flexibly integrate the time factor with critical functional operations and adequately describe the dynamic control change of technological processes. To closely cooperate with this algorithm, one optimized SVM (support vector machine) classifier is introduced as the practicable decision engine. By designing one applicable attack mode, we develop an in-depth and meticulous analysis on the decision accuracy, and all experimental results clearly explain that the extracted features can strongly reflect the changing pattern of continuous functional operations, and the proposed algorithm can effectively cooperate with the optimized SVM classifier to distinguish abnormal Modbus TCP data traffic.
基于优化SVM分类的函数驱动跟踪特征提取
由于其开放性和简单性,Modbus TCP在工业无线领域有着广泛的应用,方便了实际的管理和控制。然而,其潜在的安全漏洞也会带来许多复杂的信息安全挑战,这些挑战日益威胁着工业实时流量传输的可用性。尽管异常检测已被公认为是识别攻击的一种可行的安全措施,但成功提取数据特征的关键步骤是一项极其困难的任务。本文针对工业过程中的连续控制模式,提出了一种控制跟踪特征算法,从Modbus TCP数据流量中提取功能驱动的跟踪特征。该算法能够灵活地将时间因素与关键功能操作相结合,充分描述工艺过程的动态控制变化。为了与该算法紧密配合,引入了一种优化的支持向量机分类器作为实用的决策引擎。通过设计一种适用的攻击模式,我们对决策精度进行了深入细致的分析,所有实验结果都清楚地说明了提取的特征能较强地反映连续功能操作的变化模式,所提出的算法能有效地配合优化后的SVM分类器对Modbus TCP异常数据流量进行识别。
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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