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A Novel Combined Data-Driven Approach for Electricity Theft Detection

机译:一种新型的数据驱动的组合数据窃电检测方法

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摘要

The two-way flow of information and energy is an important feature of the Energy Internet. Data analytics is a powerful tool in the information flow that aims to solve practical problems using data mining techniques. As the problem of electricity thefts via tampering with smart meters continues to increase, the abnormal behaviors of thefts become more diversified and more difficult to detect. Thus, a data analytics method for detecting various types of electricity thefts is required. However, the existing methods either require a labeled dataset or additional system information, which is difficult to obtain in reality or have poor detection accuracy. In this paper, we combine two novel data mining techniques to solve the problem. One technique is the maximum information coefficient (MIC), which can find the correlations between the nontechnical loss and a certain electricity behavior of the consumer. MIC can be used to precisely detect thefts that appear normal in shapes. The other technique is the clustering technique by fast search and find of density peaks (CFSFDP). CFSFDP finds the abnormal users among thousands of load profiles, making it quite suitable for detecting electricity thefts with arbitrary shapes. Next, a framework for combining the advantages of the two techniques is proposed. Numerical experiments on the Irish smart meter dataset are conducted to show the good performance of the combined method.
机译:信息和能源的双向流动是能源互联网的重要特征。数据分析是信息流中的强大工具,旨在使用数据挖掘技术解决实际问题。随着通过篡改智能电表盗窃电的问题继续增加,盗窃的异常行为变得更加多样化并且更难以检测。因此,需要用于检测各种类型的电盗窃的数据分析方法。但是,现有方法要么需要标记的数据集,要么需要额外的系统信息,这在现实中很难获得或检测精度较差。在本文中,我们结合了两种新颖的数据挖掘技术来解决该问题。一种技术是最大信息系数(MIC),它可以找到非技术性损耗与用户的特定用电行为之间的相关性。 MIC可用于精确检测形状正常的盗窃案。另一种技术是通过快速搜索和找到密度峰(CFSFDP)的聚类技术。 CFSFDP可在数千种负载情况中找到异常用户,使其非常适合检测任意形状的电窃案。接下来,提出了结合两种技术的优点的框架。对爱尔兰智能电表数据集进行了数值实验,证明了该组合方法的良好性能。

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