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A method of bad data identification based on wavelet analysis in power system

机译:一种基于电力系统小波分析的错误数据识别方法

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Historic load data are so distorted by kind of influential factors that results in the false analyzed results of the EMS and DMS advanced application software. In fact, bad data are regarded as singularity points or anomalous sharp parts in load data curve. Discrete dyadic wavelet transform can be used to detect positions and characters of the local singularity points in the noisy surroundings. In this paper a method based on the wavelet singularity detection and the wavelet de-noising scheme is presented for bad data identification in power system. It uses modulus maxima value to identify the local singularity of signal, and its process is simpler than complicated bad data identification of state estimation. The validity of the algorithm is proved by real data analysis.
机译:历史负荷数据如此扭曲,这些因素都存在导致EMS和DMS高级应用软件的错误分析结果。 实际上,不良数据被视为负载数据曲线中的奇点点或异常尖锐部分。 离散的二元小波变换可用于检测嘈杂周围环境中局部奇点点的位置和特征。 本文在电力系统中提供了一种基于小波奇异性检测的方法和小波去噪方案。 它使用模数最大值来识别信号的本地奇点,其过程比“状态估计的复杂不良数据识别更简单。 通过实际数据分析证明了算法的有效性。

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