A fog-edge-enabled intrusion detection system for smart grids

Noshina Tariq, Amjad Alsirhani, Mamoona Humayun, Faeiz Alserhani, Momina Shaheen
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Abstract

The Smart Grid (SG) heavily depends on the Advanced Metering Infrastructure (AMI) technology, which has shown its vulnerability to intrusions. To effectively monitor and raise alarms in response to anomalous activities, the Intrusion Detection System (IDS) plays a crucial role. However, existing intrusion detection models are typically trained on cloud servers, which exposes user data to significant privacy risks and extends the time required for intrusion detection. Training a high-quality IDS using Artificial Intelligence (AI) technologies on a single entity becomes particularly challenging when dealing with vast amounts of distributed data across the network. To address these concerns, this paper presents a novel approach: a fog-edge-enabled Support Vector Machine (SVM)-based federated learning (FL) IDS for SGs. FL is an AI technique for training Edge devices. In this system, only learning parameters are shared with the global model, ensuring the utmost data privacy while enabling collaborative learning to develop a high-quality IDS model. The test and validation results obtained from this proposed model demonstrate its superiority over existing methods, achieving an impressive percentage improvement of 4.17% accuracy, 13.19% recall, 9.63% precision, 13.19% F1 score when evaluated using the NSL-KDD dataset. Furthermore, the model performed exceptionally well on the CICIDS2017 dataset, with improved accuracy, precision, recall, and F1 scores reaching 6.03%, 6.03%, 7.57%, and 7.08%, respectively. This novel approach enhances intrusion detection accuracy and safeguards user data and privacy in SG systems, making it a significant advancement in the field.
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用于智能电网的雾边缘入侵检测系统
智能电网(SG)在很大程度上依赖于高级计量基础设施(AMI)技术,而该技术已显示出其易受入侵的弱点。为了有效监控异常活动并发出警报,入侵检测系统(IDS)发挥着至关重要的作用。然而,现有的入侵检测模型通常是在云服务器上训练的,这会使用户数据面临巨大的隐私风险,并延长入侵检测所需的时间。使用人工智能(AI)技术在单个实体上训练高质量的 IDS,在处理网络上的大量分布式数据时尤其具有挑战性。为了解决这些问题,本文提出了一种新颖的方法:基于雾边缘支持向量机(SVM)的联合学习(FL)IDS。FL 是一种用于训练边缘设备的人工智能技术。在该系统中,只有学习参数与全局模型共享,从而确保最大程度的数据隐私,同时实现协作学习,以开发高质量的 IDS 模型。在使用 NSL-KDD 数据集进行评估时,该模型的准确率提高了 4.17%,召回率提高了 13.19%,精确率提高了 9.63%,F1 分数提高了 13.19%。此外,该模型在 CICIDS2017 数据集上的表现也非常出色,准确率、精确率、召回率和 F1 分数分别提高了 6.03%、6.03%、7.57% 和 7.08%。这种新方法既提高了入侵检测的准确性,又保护了 SG 系统中的用户数据和隐私,是该领域的一大进步。
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