基于深度复杂网络的PMU不良数据检测提高电源数据质量

P. Kabra, D. S. Rani
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引用次数: 0

摘要

相量测量单元(pmu)能够在各种功率信号模式下切换设备。信号中的抖动或故障会导致坏数据,PMU数据也会由于干扰或传输数据错误而出现尖峰。由于这些困难,PMU数据遭受不同程度的数据质量问题。为了检测不良数据,已有几种方法被采用,但由于分别使用双相同系统来分析PMU的实值和虚值,因此存在一些缺点,如复杂性。同样,由于拓扑变化而产生的坏数据也没有得到最佳识别。为了克服这些问题,提出了一种鲁棒的坏数据检测技术,该技术采用深度复杂神经网络(DCNN)来处理同时具有电压幅值和相角的复数。将拓扑处理器与交流状态估计器(SE)相结合,提出了深度复杂网络。此外,由于融合了用于测量电压幅值和相位角的反复时间戳,权重归一化被改变,而不是批量归一化。与现有技术在准确率、不良数据检测能力、不良数据检测范围和运行时间等方面进行了对比分析,该技术的准确率约为99.5%,高于现有技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power Data Quality Improvement Through PMU Bad Data Detection Based on Deep Complex Network
Phasor Measurement Units (PMUs) enable the switching of devices in various power signal modes. A jitter or glitch in a signal cause bad data and also the PMU data will spike due to a disturbance or a transmitting data mistake. As a result of these difficulties, PMU data suffer from different degrees of data quality problems. To detect the bad data, several approaches have been already utilized however it provides some disadvantages such as complexity due to the utilization of dual identical systems separately for analyzing both real and imaginary values of PMU. Likewise, the bad data due to the topology variations have not been optimally identified. To overcome these issues a Robust Bad Data Detection Technique has been proposed in which a Deep complex neural network (DCNN) is incorporated to process the complex number having both voltage magnitude and phase angle. Deep complex Networks are also proposed with the conjunction of topology processor and AC state estimator (SE). Moreover, instead of Batch normalization weight normalization is altered due to the fusion of recurrent timestamps for measuring voltage magnitude and phase angle. The comparative analysis is done in terms of accuracy , Bad data detection capability , bad data detection range and running time with existing techniques The proposed technique provides accuracy of about 99.5% which is higher than the existing techniques.
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