基于稳定裕度回归分析的暂态稳定感知

Tingjian Liu, You-bo Liu, Junyong Liu, Jing Gou, G. Taylor, Maozhen Li
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引用次数: 1

摘要

为了实现对电力系统暂态稳定性的在线感知,选取10个可直接获得或间接利用WAMS测量数据计算的不同暂态指标作为原始协变量,对稳定裕度进行回归分析。此外,通过一种称为非参数独立筛选(NIS)的方法选择特征协变量,从而降低了多元回归的维度。最后,采用Group-Lasso算法进行多元非参数回归,形成暂态稳定感知的预测函数。通过对IEEE-39母线的实例研究表明,通过相关学习训练的预测函数不仅能准确地评估受干扰电力系统的稳定性,还能提供故障事故的稳定裕度评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transient stability awareness based on regression analysis of stability margins
In order to achieve online awareness of the transient stability of power systems, 10 different transient indicators that can be directly obtained or indirectly calculated using WAMS measurement data were chosen as original covariates for regression analysis of stability margins. Furthermore, feature covariates were consequently selected via a method called Nonparametric Independence Screening (NIS) so that the dimension of multivariate regression was reduced. Finally, a Group-Lasso algorithm was adopted to perform multivariate nonparametric regression in order to form a prediction function for transient stability awareness. An IEEE-39 bus case study demonstrated that the prediction function trained by correlation learning not only assessed the stability of the disturbed power system accurately, but also provided the evaluation of stability margin of the fault contingencies.
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