人工智能驱动的解决方案,防止对移动车对微电网服务的恶意攻击

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Ahmed Omara, Burak Kantarci
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引用次数: 0

摘要

随着人工智能(AI)越来越多地融入微电网控制系统,恶意行为者有可能利用机器学习算法中的漏洞破坏发电和配电。在这项工作中,我们研究了对抗性攻击对车对微电网(V2M)的潜在影响,并讨论了防止这些风险的潜在防御对策。我们的分析表明,微电网的分散性和自适应性使其特别容易受到恶意攻击,并强调了采取强有力的安全措施防范此类威胁的必要性。我们提出了一个框架,利用生成式对抗网络(GAN)模型和机器学习(ML)分类器来检测和预防针对 V2M 服务的对抗性攻击。我们重点关注两种对抗性攻击,即推理攻击和规避攻击。我们在三种攻击场景下测试了我们提出的框架,以确保我们的解决方案的鲁棒性。由于对手对系统的了解程度决定了所实施攻击的成功与否,因此我们研究了四种灰盒情况,即对手可以访问受害者训练数据集的不同百分比。此外,我们还将我们提出的检测方法与四种基准检测器进行了比较。此外,我们还评估了我们提出的方法在检测三种基准规避攻击方面的有效性。通过模拟,我们发现所有基准检测器都无法成功检测出对抗性攻击,尤其是当攻击被智能增强时,对抗性检测率(ADR)高达 60.4%。另一方面,我们提出的框架优于其他检测器,ADR 高达 92.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An AI-driven solution to prevent adversarial attacks on mobile Vehicle-to-Microgrid services

With the increasing integration of Artificial Intelligence (AI) in microgrid control systems, there is a risk that malicious actors may exploit vulnerabilities in machine learning algorithms to disrupt power generation and distribution. In this work, we study the potential impacts of adversarial attacks on Vehicle-to-Microgrid (V2M), and discuss potential defensive countermeasures to prevent these risks. Our analysis shows that the decentralized and adaptive nature of microgrids makes them particularly vulnerable to adversarial attacks, and highlights the need for robust security measures to protect against such threats. We propose a framework to detect and prevent adversarial attacks on V2M services using Generative Adversarial Network (GAN) model and a Machine Learning (ML) classifier. We focus on two adversarial attacks, namely inference and evasion attacks. We test our proposed framework under three attack scenarios to ensure the robustness of our solution. As the adversary’s knowledge of a system determines the success of the executed attacks, we study four gray-box cases where the adversary has access to different percentages of the victim’s training dataset. Moreover, we compare our proposed detection method against four benchmark detectors. Furthermore, we evaluate the effectiveness of our proposed method to detect three benchmark evasion attack. Through simulations, we show that all benchmark detectors fail to successfully detect adversarial attacks, particularly when the attacks are intelligently augmented, obtaining an Adversarial Detection Rate (ADR) of up to 60.4%. On the other hand, our proposed framework outperforms the other detectors and achieves an ADR of 92.5%.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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