On the Estimation of Power System Inertia accounting for Renewable Generation Penetration

G. Donnini, E. Carlini, G. Giannuzzi, R. Zaottini, C. Pisani, E. Chiodo, D. Lauria, F. Mottola
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引用次数: 5

Abstract

Large-scale penetration of renewable energy sources in power systems is essentially related to the need of reducing the environmental impact caused by the fossil-fuel. As well known, the interface between the power grid and this kind of energy resource is achieved by power converters, with a consequent dynamic behavior quite different from the synchronous generators. This matter involves negative impacts on the operating conditions of power systems. In this context, it is crucial to individuate estimation techniques able to predict promptly critical conditions which could, in extreme cases, compromise the stability of whole system. In this paper the authors employ an auto-regressive model which can describe the dynamic evolution of the power system inertia. The core of the procedure relies on an inertia model conceived as the sum of a periodic component and a noise stochastic process distributed according a Logistic model. The robustness of a novel estimation procedure, able to capture the dynamic evolution of the inertia, is investigated by testing two scenarios of Italian Transmission Network. The assumptions in terms of the obtained numerical results show the validity of the estimation technique and of the probabilistic characterization of the noise.
考虑可再生能源发电渗透的电力系统惯性估计
可再生能源在电力系统中的大规模渗透本质上与减少化石燃料对环境造成的影响的需要有关。众所周知,电网与这种能源之间的接口是通过电源变换器实现的,因此其动态行为与同步发电机截然不同。这个问题涉及到对电力系统运行状况的负面影响。在这种情况下,能够及时预测在极端情况下可能危及整个系统稳定性的关键条件的个性化估计技术至关重要。本文采用一种能描述电力系统惯性动态演化的自回归模型。该过程的核心依赖于一个惯性模型,该模型被认为是一个周期分量和一个根据Logistic模型分布的噪声随机过程的总和。通过对意大利输电网两种情况的测试,研究了一种能够捕捉惯性动态演变的新型估计方法的鲁棒性。根据得到的数值结果所作的假设表明了估计技术和噪声的概率表征的有效性。
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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