Adversarial Classification of the Attacks on Smart Grids Using Game Theory and Deep Learning

K. Hamedani, Lingjia Liu, Jithin Jagannath, Y. Yi
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Abstract

Smart grids are vulnerable to cyber-attacks. This paper proposes a game-theoretic approach to evaluate the variations caused by an attacker on the power measurements. Adversaries can gain financial benefits through the manipulation of the meters of smart grids. On the other hand, there is a defender that tries to maintain the accuracy of the meters. A zero-sum game is used to model the interactions between the attacker and defender. In this paper, two different defenders are used and the effectiveness of each defender in different scenarios is evaluated. Multi-layer perceptrons (MLPs) and traditional state estimators are the two defenders that are studied in this paper. The utility of the defender is also investigated in adversary-aware and adversary-unaware situations. Our simulations suggest that the utility which is gained by the adversary drops significantly when the MLP is used as the defender. It will be shown that the utility of the defender is variant in different scenarios, based on the defender that is being used. In the end, we will show that this zero-sum game does not yield a pure strategy, and the mixed strategy of the game is calculated.
基于博弈论和深度学习的智能电网攻击的对抗性分类
智能电网容易受到网络攻击。本文提出了一种博弈论方法来评估攻击者对功率测量造成的变化。对手可以通过操纵智能电网的电表获得经济利益。另一方面,有一个防守者试图保持米的准确性。零和游戏用于模拟攻击者和防御者之间的交互。本文使用了两种不同的防御器,并对每种防御器在不同场景下的有效性进行了评估。多层感知器和传统状态估计器是本文研究的两种防御器。防御者的效用也会在对手意识到和对手不意识到的情况下进行研究。我们的模拟表明,当MLP被用作防御者时,对手获得的效用显著下降。它将显示,基于正在使用的防御器,防御器的效用在不同的场景中是不同的。最后,我们将证明这种零和博弈不会产生纯粹的策略,并计算出博弈的混合策略。
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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