基于联邦学习方法的智能电表Modbus RS-485入侵检测

Md. Delwar Hossain, H. Ochiai, L. Khan, Y. Kadobayashi
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引用次数: 0

摘要

为了加速数字化转型,实现“连接世界”,物联网应运而生。为了使我们的日常生活活动更加方便,到目前为止,已经有数十亿台设备连接在一起。最近,我们注意到它们是如何帮助网络物理系统(cps)达到更高的进化水平的。在各种cps实体中,智能电网,高级计量基础设施(AMI),是其快速转型以来最重要的实体之一。其中Modbus RS-485协议通常用于智能电表的物理层通信。关键的问题在于攻击者可能很容易破坏智能电表系统,因为它缺乏身份验证和加密机制。作为对策,通过应用联邦学习(FL)方法,入侵检测系统(IDS)可以成为检测RS-485通信网络恶意活动的有效解决方案,确保数据免受入侵者的攻击。由于其内置的数据保护机制和模型可以在不共享敏感私人数据的情况下进行训练。因此,本研究提出了一种基于联邦学习的IDS,用于检测针对智能电表的关键攻击。我们用Modbus攻击数据集对AMI (MAMI)数据集进行了实验,实验结果表明,FL方法在检测关键智能电表攻击方面相当有效,并且保护了数据隐私问题。多层感知器(Multilayer Perceptron, MLP)分类器表现较好,检测准确率和检测率分别达到99.98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart Meter Modbus RS-485 Intrusion Detection by Federated Learning Approach
To accelerate digital transformation and assemble "connecting the world," the IoT has been invented. To make and made more convenient in our daily life activities, billions of devices have been connected so far. Recently, we have noticed how they are helping cyber-physical systems (CPSs) to reach more elevated levels of evolution. Amidst diverse CPSs entities, the smart grid, Advanced Metering Infrastructure (AMI), is among the foremost essential entities since its rapid transformations. Wherein the Modbus RS-485 protocol is typically used in smart meters for physical layer communication. The key concern resides in fact that an attacker may easily compromise the smart meter systems since it lacks authentication and encryption mechanisms. As a countermeasure, an intrusion detection system (IDS), by applying a Federated Learning (FL) approach, could be an effective solution to detect the malicious activities of the RS-485 communication network, ensuring data protection from intruders. Since its built-in data protection mechanism and model could train without sharing sensitive private data. Henceforth, this research proposes a Federated Learning-based IDS for detecting critical attacks against the smart meter. We experiment with Modbus Attack DataSet for AMI (MAMI) datasets, and experiment results depict that the FL approach is reasonably effective in detecting critical smart meter attacks, moreover, protects the data privacy concern. The Multilayer Perceptron (MLP) classifier outperforms, which achieves a detection accuracy and detection rate of 99.98%, respectively.
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