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Feature extraction of Power Quality disturbances using Adaptive Harmonic Wavelet Transform

机译:采用自适应谐波小波变换的电能质量扰动特征提取

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Feature extraction of a disturbed power signal provides information that helps to detect the responsible fault for power quality disturbance. A precise and faster feature extraction tool helps power engineers to monitor and maintain power disturbances more efficiently. This paper uses adaptive harmonic wavelet transform as a power quality feature extraction tool which can perform better to analyze a disturbed voltage or current signal compared to present methods. Adaptive harmonic wavelet transform adopts harmonic wavelet as a basis function which provides better representation of power quality signals than the other wavelet functions that are being employed in present analysis tools. Adaptive harmonic wavelet transform is derived from generalized harmonic wavelet transform by developing its adaptiveness to analyze all kinds of disturbed signals with minimum human interaction.
机译:扰动功率信号的特征提取提供了有助于检测电能质量干扰的负责故障的信息。精确和更快的特点提取工具可帮助电力工程师更有效地监控和维持电源干扰。本文采用自适应谐波小波变换作为电能质量特征提取工具,其可以更好地执行与本方法相比分析干扰电压或电流信号。自适应谐波小波变换采用谐波小波作为基函数,其提供比在本分析工具中所采用的其他小波功能的电能质量信号的更好表示。自适应谐波小波变换通过开发其适应性来分析具有最小的人类相互作用的各种干扰信号来源于广义谐波小波变换。

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