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NTL Detection in Electric Distribution Systems Using the Maximal Overlap Discrete Wavelet-Packet Transform and Random Undersampling Boosting

机译:利用最大重叠离散小波包变换和随机欠采样增强的配电系统中的NTL检测

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摘要

The illegal use of electricity, defective meters, and a malfunctioning infrastructure are major causes of Non-technical losses (NTLs) in electric distribution systems. Although the use of supervised machine learning techniques to detect NTLs has been widely studied, further research is needed in order to address some significant challenges. (i) Given that fraudulent consumers remarkably outnumber non-fraudulent ones, the imbalanced nature of the dataset can have a major negative impact on the performance of supervised machine learning methods. (ii) Given the large number of dimensions present in the time series data used for training and testing classifiers, advanced signal processing techniques are required in order to extract the most relevant information. (iii) The effectiveness of classifiers must be evaluated using meaningful performance measures for imbalanced data. This paper proposes a framework that addresses the three previous challenges. The core of the proposed framework is the application of the maximal overlap discrete wavelet-packet transform (MODWPT) for feature extraction from time series data and the random undersampling boosting (RUSBoost) algorithm for NTL detection. Moreover, our framework is evaluated using an extensive list of performance metrics. Experiments show that the MODWPT combined with the RUSBoost algorithm can significantly improve the quality of NTL predictions.
机译:非法使用电力,仪表损坏和基础设施故障是配电系统中非技术损失(NTL)的主要原因。尽管已经广泛研究了使用监督式机器学习技术检测NTL,但仍需要进一步研究以解决一些重大挑战。 (i)鉴于欺诈性消费者的数量明显多于非欺诈性消费者,数据集的不平衡性质可能会对有监督的机器学习方法的性能产生重大负面影响。 (ii)鉴于用于训练和测试分类器的时间序列数据中存在大量维,因此需要先进的信号处理技术以提取最相关的信息。 (iii)必须对不平衡数据使用有意义的性能指标来评估分类器的有效性。本文提出了一个解决先前三个挑战的框架。该框架的核心是应用最大重叠离散小波包变换(MODWPT)从时间序列数据中提取特征,以及使用随机欠采样增强(RUSBoost)算法进行NTL检测。此外,我们使用大量的性能指标来评估我们的框架。实验表明,MODWPT结合RUSBoost算法可以显着提高NTL预测的质量。

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