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A Comprehensive Analysis of Supervised Learning Techniques for Electricity Theft Detection

机译:电力检测监督学习技术综合分析

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There are many methods or algorithms applicable for detecting electricity theft. However, comparative studies on supervised learning methods for electricity theft detection are still insufficient. In this paper, comparisons based on predictive accuracy, recall, precision, AUC, and F1-score of several supervised learning methods such as decision tree (DT), artificial neural network (ANN), deep artificial neural network (DANN), and AdaBoost are presented and their performances are analyzed. A public dataset from the State Grid Corporation of China (SGCC) was used for this study. The dataset consisted of power consumption in kWh unit. Based on the analysis results, the DANN outperforms compared to other supervised learning classifiers such as ANN, AdaBoost, and DT in recall, F1-Score, and AUC. A future research direction is the experiments can be performed on other supervised learning algorithms with different types of datasets and suitable preprocessing methods can be applied to produce better performance.
机译:有许多方法或算法适用于检测电力盗窃。然而,对电力检测的监督学习方法的比较研究仍然不足。在本文中,基于预测准确性,召回,精确,AUC和F1分数的比较,例如决策树(DT),人工神经网络(DANN),深层人工神经网络(DANN)和Adaboost提出并分析了他们的表演。来自中国国家网格公司(SGCC)的公共数据集被用于本研究。 DataSet由KWH单元的功耗组成。基于分析结果,与其他监督学习分类器(如ANN,ADABOOST和DT等其他监督,F1分数和AUC)相比,DANN优于。未来的研究方向是实验可以对其他具有不同类型的数据集进行的监督学习算法,并且可以应用合适的预处理方法来产生更好的性能。

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