一种新的事件检测、定位和分类混合算法

Arup Anshuman, B. K. Panigrahi, M. K. Jena
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引用次数: 2

摘要

如何有效地管理现代电力系统中的多个实时暂态事件和不稳定低频振荡,已成为输电系统运营商关注的问题。本文将瞬态事件检测和定位的思想与伴随这些脉冲事件的振荡模式的分析相结合。本文采用离散小波变换(DWT)将瞬态事件与这些事件之后的振荡行为分离开来。本文还提出了一种新的暂态事件分类指标,该指标基于事件发生时受影响最大的信号。利用经验模态分解(EMD)和希尔伯特谱分析(HSA)对受事件影响严重的PMU信号进行分析,进一步研究了实时事件后的振荡模态。根据电力系统控制应用,将上述自适应变换推导出的振荡模式进一步划分为三个频段,从而帮助操作员提供有效的控制动作。本文讨论的新方法已应用于IEEE 39总线系统,并使用RTDS电源系统模拟器和基于GTNETx2的pmu生成数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Hybrid Algorithm for Event Detection, Localisation and Classification
Effective management of multiple real-time transient events and unstable low-frequency oscillations in the modern power system has been a matter of concern to the Transmission system operators. This manuscript unifies the idea of transient event detection and localization with the analysis of the oscillation mode that accompanies these impulsive events. The paper employs Discrete wavelet transform (DWT) to segregate transient events from oscillatory behavior that follows these events. The paper also proposes a novel indicator for the classification of transient events based on the most affected signals in due course of the event. Empirical Mode decomposition (EMD) and Hilbert spectral analysis (HSA) are utilized on the PMU signals severely affected by the event and further examine the oscillatory modes succeeding the real-time events. Oscillatory modes deduced from the above adaptive transformations are further categorized into three frequency bands based on power system control applications, thus helping operators provide efficient control actions. The novel methodology discussed in the paper has been applied to the IEEE 39 bus system with a dataset generated using the RTDS power system simulator and GTNETx2 based PMUs.
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