检测电网中频率波动的前兆模式

Md. Shahidul Islam, R. Pears, B. Bačić
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引用次数: 0

摘要

前兆模式识别解决了在数据中检测警告信号的问题,这些警告信号预示着即将发生的异常事件。就电力系统而言,提前确定发电波动的前兆将使工程师能够采取措施,减轻这种波动的影响。在本研究中,我们使用Morlet小波变换一个以发电频率为定义的时间序列,该序列每隔30秒采样一次,以识别潜在的前兆模式。所得的功率谱然后用于选择高系数区域,以捕获光谱中的大部分能量。然后,我们将高系数区域与对比低系数区域一起进行非参数方差分析检验,我们的结果表明,一个高系数区域通过预测在随后的波动事件中发生的绝大部分变化而占主导地位。这些结果表明,小波是一种有效的机制来识别前驱活动的电时间序列数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting precursor patterns for frequency fluctuation in an electrical grid
Precursor pattern identification addresses the problem of detecting warning signals in data that herald an impending event of extraordinary interest. In the context of electrical power systems, identifying precursors to fluctuations in power generation in advance would enable engineers to put in place measures that mitigate against the effects of such fluctuations. In this research we use the Morlet wavelet to transform a time series defined on electrical power generation frequency which was sampled at intervals of 30 seconds to identify potential precursor patterns. The power spectrum that results is then used to select high coefficient regions that capture a large faction of the energy in the spectrum. We then subjected the high coefficient regions together with a contrasting low coefficient region to a non-parametric ANOVA test and our results indicate that one high coefficient region dominates by predicting an overwhelming percentage of the variation that occurs during the subsequent fluctuation event. These results suggest that the wavelet is an effective mechanism to identify precursor activity in electricity time series data.
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