A Novel Methodology for Classifying Electrical Disturbances Using Deep Neural Networks

A. E. Guerrero-Sanchez, E. Rivas-Araiza, Mariano Garduño-Aparicio, S. Tovar-Arriaga, J. Rodríguez-Reséndiz, M. Toledano-Ayala
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Abstract

Electrical power quality is one of the main elements in power generation systems. At the same time, it is one of the most significant challenges regarding stability and reliability. Due to different switching devices in this type of architecture, different kinds of power generators as well as non-linear loads are used for different industrial processes. A result of this is the need to classify and analyze Power Quality Disturbance (PQD) to prevent and analyze the degradation of the system reliability affected by the non-linear and non-stationary oscillatory nature. This paper presents a novel Multitasking Deep Neural Network (MDL) for the classification and analysis of multiple electrical disturbances. The characteristics are extracted using a specialized and adaptive methodology for non-stationary signals, namely, Empirical Mode Decomposition (EMD). The methodology’s design, development, and various performance tests are carried out with 28 different difficulties levels, such as severity, disturbance duration time, and noise in the 20 dB to 60 dB signal range. MDL was developed with a diverse data set in difficulty and noise, with a quantity of 4500 records of different samples of multiple electrical disturbances. The analysis and classification methodology has an average accuracy percentage of 95% with multiple disturbances. In addition, it has an average accuracy percentage of 90% in analyzing important signal aspects for studying electrical power quality such as the crest factor, per unit voltage analysis, Short-term Flicker Perceptibility (Pst), and Total Harmonic Distortion (THD), among others.
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一种基于深度神经网络的电干扰分类新方法
电能质量是发电系统的重要组成部分之一。与此同时,它也是稳定性和可靠性方面最重大的挑战之一。由于这种类型的架构中不同的开关器件,不同类型的发电机以及非线性负载被用于不同的工业过程。因此,需要对电能质量扰动进行分类和分析,以防止和分析非线性和非平稳振荡特性对系统可靠性的影响。本文提出了一种新的多任务深度神经网络(MDL),用于多种电干扰的分类和分析。特征提取使用非平稳信号的专门和自适应方法,即经验模式分解(EMD)。该方法的设计、开发和各种性能测试在28个不同的难度等级下进行,例如严重程度、干扰持续时间和20 dB至60 dB信号范围内的噪声。MDL在难度和噪声方面具有多样化的数据集,具有多种电气干扰的不同样本的4500条记录。该分析和分类方法在多重干扰下的平均准确率为95%。此外,对于研究电能质量的重要信号方面,如波峰因数、单位电压分析、短期闪变感知(Pst)和总谐波失真(THD)等,其平均准确率可达90%。
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