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A novel hybrid architecture for classification of power quality disturbances

机译:一种用于电能质量扰动分类的新型混合架构

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Power quality disturbances are introduced in the signals due to the increasing use of power electronic devices. To ensure reliability, security and adequate quality of power for consumption, the power quality disturbances need to be detected and classified accurately. This paper proposes an efficient algorithm for detecting and classifying the various power quality disturbances using a convolutional neural network (CNN) to extract various features from the input power signal which are then fed to the multi-class support vector classifier (MCSVC) to detect and classify the power quality disturbance events. It is observed from the simulation results and verified using an industrial dataset that the proposed model performs better than a normal convolutional neural network by approximately 10%. This work contributes to improving the quality of power delivered for industrial applications, making the operation of power systems economic, efficient and safe.
机译:由于越来越多地使用电力电子设备,信号中引入了电能质量扰动。为了确保可靠性,安全性和足够的电能消耗质量,需要对电能质量扰动进行准确检测和分类。本文提出了一种有效的算法,该算法使用卷积神经网络(CNN)从输入功率信号中提取各种特征,然后将这些特征输入到多类支持向量分类器(MCSVC)中,以进行检测和分类,从而对各种电能质量扰动进行检测和分类。对电能质量扰动事件进行分类。从仿真结果可以观察到,并使用工业数据集进行了验证,所提出的模型比常规卷积神经网络的性能要好大约10%。这项工作有助于提高为工业应用输送的电能质量,使电力系统的运行经济,高效和安全。

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