Deep Learning Based Multi-Label Attack Detection for Distributed Control of AC Microgrids

S. Mohiuddin, Junjian Qi, Sasha Fung, Yu Huang, Yufei Tang
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引用次数: 1

Abstract

This paper presents a deep learning based multi-label attack detection approach for the distributed control in AC microgrids. The secondary control of AC microgrids is formulated as a constrained optimization problem with voltage and frequency as control variables which is then solved using a distributed primal-dual gradient algorithm. The normally distributed false data injection (FDI) attacks against the proposed distributed control are then designed for the distributed gener-ator's output voltage and active/reactive power measurements. In order to detect the presence of false measurements, a deep learning based attack detection strategy is further developed. The proposed attack detection is formulated as a multi-label classification problem to capture the inconsistency and co-occurrence dependencies in the power flow measurements due to the presence of FDI attacks. With this multi-label classification scheme, a single model is able to identify the presence of different attacks and load change simultaneously. Two different deep learning techniques are compared to design the attack detector, and the performance of the proposed distributed control and the attack detector is demonstrated through simulations on the modified IEEE 34-bus distribution test system.
基于深度学习的交流微电网分布式控制多标签攻击检测
提出了一种基于深度学习的交流微电网分布式控制多标签攻击检测方法。将交流微电网的二次控制问题表述为一个以电压和频率为控制变量的约束优化问题,然后使用分布式原对偶梯度算法求解。然后针对分布式发电机的输出电压和有功/无功测量,设计了针对所提出的分布式控制的正态分布假数据注入(FDI)攻击。为了检测错误测量的存在,进一步开发了一种基于深度学习的攻击检测策略。所提出的攻击检测被制定为一个多标签分类问题,以捕获由于存在FDI攻击而导致的潮流测量中的不一致和共现依赖关系。使用这种多标签分类方案,单个模型能够同时识别不同攻击的存在和负载变化。比较了两种不同的深度学习技术来设计攻击检测器,并在改进的IEEE 34总线分布式测试系统上进行了仿真,验证了所提出的分布式控制和攻击检测器的性能。
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