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A Comparative Study of Smart Grid Security Based on Unsupervised Learning and Load Ranking

机译:基于无监督学习和负荷排序的智能电网安全性比较研究

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Due to the increasing number of risk factors, energy sector has been experiencing interruptions (attack) in the normal operation both externally and internally. Different methods are used for the identification and evaluation of vulnerabilities due to these interruption in the complex and critical infrastructures like the smart grid. Based on the objective of the attack, the performance and effectiveness of the learning-based approaches may vary when compared with other approaches to identify critical components of the smart grid. In this work, we adopted two target selection strategies (one is an unsupervised learning algorithm and the other is a load ranking based approach) for attack and measured system performances based on two evaluation metrics. We conducted the experiments on four different standard power system test cases and compared the performances of the aforementioned target selection strategies by two evaluation metrics. We used K-means clustering as the unsupervised learning method for the target selection of contingencies. To evaluate the system damage, we used generation loss and number of transmission line outages. For different attack orders, with two different attack objectives (evaluation metrics), experiments were conducted on W&W 6 bus system, IEEE 7 bus system, IEEE 8 bus system, and IEEE 300 bus system. We showed that, a clustering based attack performs better when the system is relatively large (highly dense in terms of connection to other buses) and the objective is to achieve a high number of transmission line outages. On the other hand, load ranking based attack outperforms clustering based attack when the attack objective is to achieve higher generation loss, regardless of the size of the system.
机译:由于风险因素的数量不断增加,能源部门在内部和外部的正常运行中一直遭受中断(攻击)。由于复杂和关键基础架构(如智能电网)中的这些中断,使用了不同的方法来识别和评估漏洞。基于攻击的目标,与识别智能电网关键组件的其他方法相比,基于学习的方法的性能和有效性可能会有所不同。在这项工作中,我们基于两种评估指标采用了两种目标选择策略(一种是无监督学习算法,另一种是基于负载排序的方法)来进行攻击和测得的系统性能。我们在四个不同的标准电力系统测试用例上进行了实验,并通过两个评估指标比较了上述目标选择策略的性能。我们将K-means聚类用作意外事件目标选择的无监督学习方法。为了评估系统损坏,我们使用了发电量损失和传输线中断的次数。对于不同的攻击顺序,使用两个不同的攻击目标(评估指标),对W&W 6总线系统,IEEE 7总线系统,IEEE 8总线系统和IEEE 300总线系统进行了实验。我们表明,当系统相对较大(就与其他总线的连接而言非常密集)时,基于群集的攻击性能会更好,并且目标是实现大量传输线中断。另一方面,当攻击目标是实现更高的发电量损失时,无论系统的大小如何,基于负载排序的攻击都优于基于聚类的攻击。

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