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An Anomaly Detection and Scenario Classification Scheme Based on Fuzzy C-means Clustering

机译:基于模糊C型群体的异常检测和场景分类方案

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In this paper, problems of anomaly detection and scenario classification in industrial control systems(ICSs) are investigated. Anomalies caused by attacks can have impacts on product quality, production stability and device security in ICSs to varying degrees, where different countermeasures are needed. To distinguish anomalies with different damage, the rationale of ICSs is analyzed in detail and four security scenarios are defined with typical characteristics, taking Tennessee Eastman process as an example. A set of attributes are extracted from typical data of scenarios and fuzzy c-means algorithm is adopted to classify sample cases into these security scenarios. At last, an anomaly detection and scenario classification scheme is proposed with a data-driven security scenario model. Experiments are provided to verify the validity and generality of the proposed method.
机译:本文研究了工业控制系统(ICSS)中异常检测和情景分类的问题。由攻击引起的异常可能会对ICS的产品质量,生产稳定性和设备安全性产生影响不同程度的影响,其中需要不同的对策。为了区分不同损伤的异常,详细分析了ICS的基本原理,并以典型的特征定义了四种安全情景,以田纳西州伊士曼流程为例。从典型的方案数据中提取一组属性,采用模糊C-Means算法将示例案例分类为这些安全方案。最后,提出了一种具有数据驱动的安全方案模型的异常检测和场景分类方案。提供实验以验证所提出的方法的有效性和一般性。

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