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FARIMA model-based communication traffic anomaly detection in intelligent electric power substations

机译:智能电站中基于FARIMA模型的通信流量异常检测

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摘要

The technological advances of intelligent electric substations have significantly improved the operational performance of power utilities by incorporating advanced monitoring and control functionalities. The data traffic patterns in substation communication network (SCN) need to be better understood to improve the SCN performance against different forms of cyber-attacks. To this end, this study presents a fractional auto-regressive integrated moving average (FARIMA)-based threshold model to characterise the SCN traffic flow based on the IEC 61850 protocol and carry out anomaly detection. The performance of the proposed anomaly detection solution is assessed and validated through numerical analysis under the condition of the cyber storm based on the collected SCN data traffic from a real 110 kV substation, and the numerical results clearly confirmed its effectiveness.
机译:智能变电站的技术进步通过结合先进的监视和控制功能,大大提高了电力公司的运营性能。需要更好地理解变电站通信网络(SCN)中的数据流量模式,以针对不同形式的网络攻击提高SCN性能。为此,本研究提出了一种基于分数自回归综合移动平均(FARIMA)的阈值模型,以基于IEC 61850协议表征SCN流量并进行异常检测。在网络风暴条件下,基于从真实的110 kV变电站收集的SCN数据流量,通过数值分析对提出的异常检测解决方案的性能进行了评估和验证,数值结果清楚地证明了其有效性。

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