基于ai的配电网络虚假数据注入攻击异常检测框架

IF 13.9 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Hasnain Ahmad, Ghulam Mustafa, Muhammad Majid Gulzar, Ijaz Ahmed, Muhammad Khalid
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引用次数: 0

摘要

由于增加了更先进的计量基础设施(AMI),现代配电网络正在成为网络物理系统。这给网络威胁带来了新的漏洞,尤其是虚假数据注入(FDI)攻击。这些攻击破坏了电力消耗数据的完整性,导致财务损失、运营效率低下和电网不稳定。基于规则的技术和传统的机器学习模型是传统异常检测方法中经常存在问题的两个例子。通常,这些方法会产生过多的假警报,难以适应新的攻击模式,并且在大规模部署中表现不佳。本研究提出了一种鲁棒异常识别框架(AIF),该框架使用自编码器(AE)进行特征转换,并使用多层感知器(MLP)识别AMI与智能电网集成的异常。该方法首先应用了受现实世界智能电表功能启发的合成特征提取,并使用去噪的AE对数据集进行了转换。MLP有助于分类检测多种FDI攻击类型,提高了准确性和可靠性。已经进行了大量的实验,结果表明,所提出的方法比流行的方法,如相关分析、基于聚类的技术和标准离群值识别算法更好。与基线方法相比,所提出的技术将检测精度提高了约25%,减少了误报,并增强了系统跨不同网络攻击策略的泛化能力。本文计算了七种不同类型的准则矩阵,以验证发现异常的有效性。总体平均结果包括均方误差(0.0793)、准确度(92%)、F1-Score(92%)、召回率(91%)、特异性(94%)、曲线下面积(97%)和平均精密度(96%)。这些发现强调了拟议的AIF性能在加强智能电网网络安全方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ai-enabled framework for anomaly detection in power distribution networks under false data injection attacks

Modern power distribution networks are becoming cyber physical systems due to the addition of more advanced metering infrastructure (AMI). This has introduced new vulnerabilities to cyber threats, particularly false data injection (FDI) attacks. These attacks compromise the integrity of power consumption data, leading to financial losses, operational inefficiencies, and grid instability. Rule-based techniques and traditional machine learning models are two examples of traditional anomaly detection methods that often have problems. Often, these methods generate an excessive number of false alarms, struggle to adapt to new attack patterns, and perform poorly in large-scale deployments. This research suggests a robust anomaly identification framework (AIF) that uses an autoencoder (AE) for feature transformation and a multi-layer perceptron (MLP) to identify anomalies in AMI integrated with smart grids. The proposed approach first applies synthetic features extraction inspired by real-world smart meter capabilities and transforms the dataset using a denoising AE. MLP assisted in the classification to detect multiple FDI attack types with improved accuracy and reliability. Numerous experiments have been performed, and the results indicate that the suggested method works better than popular methods like correlation analysis, techniques based on clustering, and standard outlier identification algorithms. Compared to baseline methods, the proposed technique improves detection accuracy by up to approximately 25%, reduces false positives, and enhances the system’s ability to generalize across different cyberattack strategies. The proposed work computes seven different types of criterion matrices to verify the effectiveness of finding anomalies. The overall average results include mean squared error (0.0793), accuracy (92%), F1-Score (92%), recall (91%), specificity (94%), area under the curve (97%), and mean average precision (96%). These findings accentuate the potential of the proposed AIF performance in fortifying smart grid cybersecurity.

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来源期刊
Artificial Intelligence Review
Artificial Intelligence Review 工程技术-计算机:人工智能
CiteScore
22.00
自引率
3.30%
发文量
194
审稿时长
5.3 months
期刊介绍: Artificial Intelligence Review, a fully open access journal, publishes cutting-edge research in artificial intelligence and cognitive science. It features critical evaluations of applications, techniques, and algorithms, providing a platform for both researchers and application developers. The journal includes refereed survey and tutorial articles, along with reviews and commentary on significant developments in the field.
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