Abdulrahaman Okino Otuoze, M. W. Mustafa, U. Sultana, E. A. Abiodun, B. Jimada-Ojuolape, O. Ibrahim, I. O. Avazi-Omeiza, A. I. Abdullateef
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引用次数: 0
摘要
智能电网的成功实施在很大程度上依赖于能源效率,特别是通过先进计量基础设施(AMI)和智能电表(SEM)。然而,网络攻击对 SEM 构成了威胁,偷电是其主要动机。尽管智能电表为分析目的提供了宝贵的数据,但现有的窃电识别方法涉及繁琐而昂贵的现场检查。本研究提出了一种使用长短期记忆(LSTM)网络的窃电检测模型。该模型采用集体异常方法,通过阈值和预测范围来定义预测误差。对可疑的消耗曲线进行了分析,并使用在 MATLAB 2021b 中实施的模糊推理系统 (FIS) 对基于这些曲线的安全风险进行建模。该研究利用四种不同消费者(消费者 1、2、3 和 4)的能源消耗数据,开发了用于检测的特定消费者 LSTM 模型和用于确认的 FIS 模型。根据选定的 AMI 参数识别和确认被篡改的用户数据。虽然所有消费者有时都表现出可疑特征,但只有消费者 2 和 3 被证实参与了窃电行为。这项研究提供了一种在 AMI 背景下检测和验证欺诈性消费特征的可靠方法,为窃电检测和确认提供了一个更可靠的维度。
Detection and confirmation of electricity thefts in Advanced Metering Infrastructure by Long Short-Term Memory and fuzzy inference system models
The successful implementation of Smart Grids heavily relies on energy efficiency, particularly through the Advanced Metering Infrastructure (AMI) and Smart Electricity Meters (SEM). However, cyber-attacks pose a threat to SEM, with electricity theft being a primary motivation. Despite the valuable data provided by SEM for analytical purposes, existing methods to identify theft involve cumbersome and costly on-site inspections. This research proposes an electricity theft detection model using the Long Short-Term Memory (LSTM) network. The model employs a collective anomaly approach, defining prediction errors through a threshold and forecast horizon. Suspicious consumption profiles are analysed, and a fuzzy inference system (FIS) implemented in MATLAB 2021b is used to model security risks based on these profiles. The study utilizes energy consumption data from four diverse consumer profiles (consumers 1, 2, 3, and 4) to develop consumer-specific LSTM models for detection and an FIS model for confirmation. Tampered consumer data is identified and confirmed based on selected AMI parameters. While all consumers exhibit suspicious profiles at times, only consumers 2 and 3 are confirmed as engaging in electricity theft. This research provides a robust approach to detecting and verifying fraudulent consumption profiles within the context of AMI, offering a more reliable dimension to theft detection and confirmation.