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Detection and Classification of Power Quality Disturbances Using Variational Mode Decomposition and Convolutional Neural Networks

机译:使用变分模分解和卷积神经网络检测和分类功率质量扰动

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Power quality gains more and more attentions because disturbances in power quality may damage equipment security, power availability and system reliability in power system. Detection and classification of the power quality disturbances is the first step before taking measures to lessen their harmful effects. Common methods to classify power quality disturbances includes signal processing methods, machine learning methods and deep learning methods. Signal processing methods are good at feature extraction, while machine learning methods and deep learning methods are expert in multi-classification tasks. Via combing their respective advantages, this paper proposes a combined method based on variational mode decomposition and convolutional neural networks, which needs a small quantity of samples but achieves high classification precision. The proposed method is proved to be a qualified and competitive scheme for the detection and classification of power quality disturbances.
机译:电力质量提高越来越多的注意,因为电力质量的扰动可能会损坏设备安全性,功率可用性和系统可靠性。在采取措施以减少其有害影响之前,电能质量扰动的检测和分类是第一步。分类电能质量扰动的常用方法包括信号处理方法,机器学习方法和深度学习方法。信号处理方法擅长特征提取,而机器学习方法和深度学习方法是多分类任务的专家。通过梳理其各自的优点,本文提出了一种基于变分模式分解和卷积神经网络的组合方法,需要少量的样品,但实现高分类精度。被证明,该方法被证明是检测和分类电能质量障碍的合格和竞争方案。

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