A risk-based machine learning approach for probabilistic transient stability enhancement incorporating wind generation

Q3 Engineering
U. Shahzad
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引用次数: 0

Abstract

ABSTRACT Power systems are becoming more complex than ever and are consequently operating close to their limit of stability. Considering its significance in power system security, it is important to propose a novel approach for enhancing the transient stability, considering uncertainties. Current deterministic industry practices of transient stability assessment ignore the probabilistic nature of variables. Moreover, the time-domain simulation approach for transient stability evaluation can be very computationally intensive, especially for a large-scale system. The impact of wind penetration on transient stability is critical to investigate, as it does not possess the inherent inertia of synchronous generators. Thus, this paper proposes a risk-based, machine learning decision-making approach, for probabilistic transient stability enhancement, by replacing circuit breakers, including the impact of wind generation. The IEEE 14-bus test system was used to test and validate the effectiveness of the proposed approach. DIgSILENT PowerFactory and MATLAB were utilised for transient stability simulations (for obtaining training data for machine learning), and applying machine learning algorithms, respectively.
一种基于风险的机器学习方法用于风力发电的概率暂态稳定增强
电力系统正变得比以往任何时候都更加复杂,因此其运行接近其稳定极限。考虑到暂态稳定性对电力系统安全的重要意义,提出一种考虑不确定性的新方法来提高暂态稳定性是很重要的。目前暂态稳定性评估的确定性工业实践忽略了变量的概率性质。此外,暂态稳定评估的时域模拟方法计算量非常大,特别是对于大型系统。风穿透对暂态稳定性的影响是研究的关键,因为它不具有同步发电机固有的惯性。因此,本文提出了一种基于风险的机器学习决策方法,通过更换断路器来提高概率暂态稳定性,包括风力发电的影响。采用IEEE 14总线测试系统对所提方法的有效性进行了测试和验证。分别利用DIgSILENT PowerFactory和MATLAB进行暂态稳定性模拟(获取机器学习的训练数据),并应用机器学习算法。
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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来源期刊
Australian Journal of Electrical and Electronics Engineering
Australian Journal of Electrical and Electronics Engineering Engineering-Electrical and Electronic Engineering
CiteScore
2.30
自引率
0.00%
发文量
46
期刊介绍: Engineers Australia journal and conference papers.
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