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Use of ARMA block processing for estimating stationary low-frequency electromechanical modes of power systems

机译:使用ARMA块处理来估计电力系统的固定低频机电模式

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摘要

Accurate knowledge of low-frequency electromechanical modes in power systems gives vital information about the stability of the system. Current techniques for estimating electromechanical modes are computationally intensive and rely on complex system models. This research complements model-based approaches and uses measurement-based techniques. This paper discusses the development of an autoregressive moving average (ARMA) block-processing technique to estimate these low-frequency electromechanical modes from measured ambient power system data without requiring a disturbance. This technique is applied to simulated data containing a stationary low-frequency mode generated from a 19-machine test model. The frequency and damping factor of the estimated modes are compared with the actual modes for various block sizes. This technique is also applied to 35-min blocks of actual ambient power system data before and after a disturbance and compared to results from Prony analysis on the ringdown from the disturbance.
机译:准确了解电力系统中的低频机电模式可提供有关系统稳定性的重要信息。用于估计机电模式的当前技术是计算密集型的,并且依赖于复杂的系统模型。这项研究补充了基于模型的方法,并使用了基于度量的技术。本文讨论了自回归移动平均(ARMA)块处理技术的发展,该技术可从测量的环境电力系统数据中估计这些低频机电模式而无需干扰。将此技术应用于包含从19台机器测试模型生成的固定低频模式的模拟数据。将估计模式的频率和阻尼因子与各种块大小的实际模式进行比较。该技术还适用于干扰前后35分钟的实际环境电力系统数据块,并将其与Prony分析的结果进行比较,以分析干扰造成的振铃。

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