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Detection of power quality disturbances using wavelet transform and artificial neural network

机译:使用小波变换和人工神经网络检测电能质量扰动

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Detection of Power Quality (PQ) is an essential service which many utilities perform for their industrial and large commercial customers. Poor PQ affect the load connected to the supply. It shortens the life of load and can damage the load. It is a difficult task to detect and classify electrical problems which can cause PQ problems. Various types of PQ disturbances are defined in IEEE standards 1159-2009 in terms of their frequency, magnitude and duration. In this paper, a new approach has been shown to detect, localize, and investigate the feasibility of classifying various types of power quality disturbances. Voltage sag, swell, transient and harmonics are the main PQ problems shown in the paper. The approach is based on wavelet transform analysis, particularly the discrete wavelet transform. The key idea is to decompose a given disturbance signal using DWT which represent a smoothed version and a detailed version of the original signal. These decomposed signals are used to extract features using many mathematical operations like peak, variance, mean deviation and skewness. These features are used as classifier which is fed to ANN to classify the PQ disturbances.
机译:检测功率质量(PQ)是许多公用事业对其工业和大型商业客户的重要服务。 PQ PQ会影响连接到电源的负载。它缩短了负载寿命,可以损坏负荷。检测和分类电气问题是一种困难的任务,这可能导致PQ问题。在其频率,幅度和持续时间方面,在IEEE标准1159-2009中定义了各种类型的PQ扰动。在本文中,已经显示了一种新方法来检测,本地化,并调查分类各种电能质量扰动的可行性。电压凹槽,膨胀,瞬态和谐波是本文中所示的主要PQ问题。该方法基于小波变换分析,特别是离散小波变换。关键思想是使用DWT分解给定的干扰信号,该DWT表示平滑版本和原始信号的详细版本。这些分解信号用于利用峰值,方差,平均偏差和偏斜等许多数学操作提取特征。这些功能用作分类器,该分类器被馈送到ANN以分类PQ干扰。

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