Online short-term voltage stability monitoring based on wide-area trajectory data analytics

Lipeng Zhu, Chao Lu
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Abstract

In this chapter, a TS data analytics-based imbalance learning machine for power system online SVS monitoring is systematically developed. It is dedicated to addressing the challenging class imbalance problem in practice, which is induced by the assumption that learning samples are mainly collected from historical and/or online PMU records. To deal with class skewness from both data-preprocessing and algorithm perspectives, the proposed learning machine tactfully integrates two critical techniques, that is, FN-SMOTE and cost-sensitive learning. Based on this learning machine, an online SVS assessment scheme is designed by further introducing an incremental learning strategy, which enhances the scheme's adaptability and reliability during online monitoring. Numerical test results on the Nordic test system and the real-word CSG illustrate that the proposed learning machine achieves excellent performances even if it is exposed to severe class imbalance. In addition to its reliability and adaptability during online monitoring, the learning machine exhibits desirable interpretability for SVS pattern discovery and comprehension in practical power grids. In relevant future work, an array of aspects, e.g., spatial-temporal correlation learning, advanced deep learning, and model/data mixed learning, can be explored and investigated to further enhance the data-driven SVS assessment solution's applicability in practice.
基于广域轨迹数据分析的在线短期电压稳定监测
本章系统开发了一种基于TS数据分析的电力系统SVS在线监测不平衡学习机。它致力于解决实践中具有挑战性的班级不平衡问题,这是由于假设学习样本主要来自历史和/或在线PMU记录而引起的。为了从数据预处理和算法两方面处理类偏性,本文提出的学习机巧妙地集成了两种关键技术,即FN-SMOTE和代价敏感学习。在该学习机的基础上,进一步引入增量学习策略,设计了SVS在线评估方案,提高了方案在线监测时的适应性和可靠性。在北欧测试系统和现实CSG上的数值测试结果表明,所提出的学习机即使在班级严重不平衡的情况下也能取得优异的性能。除了在线监测的可靠性和适应性外,学习机在实际电网中对SVS模式的发现和理解具有良好的可解释性。在未来的相关工作中,可以从时空相关学习、高级深度学习、模型/数据混合学习等方面进行探索和研究,进一步增强数据驱动的SVS评估方案在实践中的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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