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Privacy Preservation Needed for Smart Meter System: A Methodology to Recognize Electric Vehicle (EV) Models

机译:智能电表系统需要保护隐私:一种识别电动汽车(EV)模型的方法

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This paper introduces a practical method to determine the EV model (Car Make A model B) from high resolution (/1min) energy consumption data. The proposed method shows the importance of privacy preservation for smart meter system. The paper demonstrate the decision making process as solving a multiclass classification problem. In particular, we focus on extracting the key features of given EV charging profiles, and using the features as attributes to set up a Decision Tree (DT). We illustrate the classification problem in a 2-dimensional space and train the decision boundaries of the DT by labeled “dataid-EV model” data sets. We show that using the trained DT is efficient to predict the model of several type-unknown EVs in a distribution grid. The results would help in developing privacy-enhanced loads metering methods.
机译:本文介绍了一种从高分辨率(/ 1min)能耗数据确定EV模型(Car Make A模型B)的实用方法。所提出的方法表明了隐私保护对于智能电表系统的重要性。本文证明了决策过程是解决多类分类问题的方法。特别是,我们专注于提取给定EV充电配置文件的关键特征,并将这些特征用作属性来建立决策树(DT)。我们说明了二维空间中的分类问题,并通过标记的“ dataid-EV模型”数据集训练了DT的决策边界。我们表明,使用训练有素的DT可以有效地预测配电网中几种类型未知的EV的模型。结果将有助于开发隐私增强的负载计量方法。

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