WECC系统中PMU信号的时空模式识别

Z. Hou, H. Ren, Heng Wang, P. Etingov
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引用次数: 1

摘要

相量测量单元(PMU)数据已被多种电力系统应用所使用,包括状态估计、事后分析、振荡检测、模型验证等。然而,由于大数据的性质和一般研究机构的可用性,对PMU信号的时空模式及其潜在机制的全面理解尚不完整。本研究采用了一套信号处理和机器学习方法,旨在解读多个PMU属性(如电压、频率、频率变化率、相位角)的特征行为,包括它们在单位和时间尺度上的自相关性、相互依赖性、相似性和差异性、异常分布及其与潜在外部因素(如天气事件)的联系。数据分析应用于美国西部电力协调委员会(WECC)系统的pmu。PMU测量、记录的事件和极端天气都来自真实世界的数据集。研究结果和PMU动力学的机制理解有助于为系统控制或防止停电提供指导。派生的度量可以直接用于调整或过滤用于高级算法开发的模拟PMU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。
Spatiotemporal Pattern Recognition in the PMU Signals in the WECC system
Phasor measurement unit (PMU) data has been used by multiple power system applications, including state estimation, post event analysis, oscillation detection, model validation, and many others. Still, due to the big data nature and availability to general research institutions, comprehensive understanding of the spatiotemporal patterns in PMU signals and underlying mechanisms are incomplete. This study applies a set of signal processing and machine learning approaches aiming at deciphering the characteristic behaviors of multiple PMU attributes (e.g., voltage, frequency, rate of change of frequency, phase angle), including their auto-correlation, cross-dependence, similarities and discrepancies across units and temporal scales, and distributions of anomalies and their linkages to potential external factors such as weather events. Data analytics are applied to PMUs from the U.S. Western Electricity Coordinating Council (WECC) system. The PMU measurements, recorded events, and weather extremes are all from real-world datasets. The findings from the study and mechanistic understanding of the PMU dynamics help provide guidance on system control or preventing blackouts. The derived metrics can be directly used for adjusting or filtering simulated PMU data used for advanced algorithm development.
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