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ARIMA-Based Modeling and Validation of Consumption Readings in Power Grids

机译:基于ARIMA的电网能耗读数建模与验证

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Smart meters are increasingly being deployed to measure electricity consumption of residential as well as non-residential consumers. The readings reported by these meters form a time series, which is stored at electric utility servers for billing purposes. Invalid readings may be reported because of malicious compromise of the smart meters themselves, or of the network infrastructure that supports their communications. Although many of these meters come equipped with encrypted communications, they may potentially be vulnerable to cyber intrusions. Therefore, there is a need for an additional layer of validation to detect these intrusion attempts. In this paper, we make three contributions. First, we show that the ARMA model proposed in the anomaly detection literature is unsuitable for electricity consumption as most consumers exhibit non-stationary consumption behavior. We use automated model fitting methods from the literature to show that first-order differencing of these non-stationary readings makes them weakly stationary. Thus, we propose the use of ARIMA forecasting methods for validating consumption readings. Second, we evaluate the effectiveness of ARIMA forecasting in the context of a specific attack model, where smart meter readings are modified to steal electricity. Third, we propose additional checks on mean and variance that can mitigate the total amount of electricity that can be stolen by an attacker by 77.46%. Our evaluation is based on a real, open dataset of readings obtained from 450 consumer meters.
机译:智能电表正越来越多地用于测量住宅和非住宅用户的用电量。这些电表报告的读数形成一个时间序列,该时间序列存储在电力公用事业服务器中以进行计费。由于智能电表本身或支持其通信的网络基础架构的恶意破坏,可能会报告无效的读数。尽管这些仪表中的许多仪表都配备了加密通信,但它们可能很容易受到网络入侵的影响。因此,需要附加的验证层来检测这些入侵尝试。在本文中,我们做出了三点贡献。首先,我们表明异常检测文献中提出的ARMA模型不适用于电力消耗,因为大多数消费者表现出非平稳的消耗行为。我们使用文献中的自动模型拟合方法来证明这些非平稳读数的一阶差分使其微弱地静止。因此,我们建议使用ARIMA预测方法来验证消费读数。其次,我们在特定的攻击模型下评估ARIMA预测的有效性,在该模型中,修改了智能电表读数以窃电。第三,我们建议对均值和方差进行额外检查,以减少攻击者可以窃取的总电量77.46%。我们的评估基于从450个用户仪表获得的真实,开放的读数数据集。

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