低惯量电网中柔性负荷的快速频率响应约束随机调度

Ashish Mathur, Sumit Nema, Vivek Prakash, Jyotsna Singh
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引用次数: 0

摘要

本文提出了一种在随机调度框架下解决快速频率响应(FFR)要求的建模方法。这项工作集成了柔性负载的FFR响应,并提出了表征可再生能源发电不确定性的先进建模技术。该研究采用基于场景的不确定性建模来捕捉可再生能源(RES)固有的不可预测性,提高了低惯性电网调度的准确性。所提出方法的核心是集成灵活的负载,如可中断负载(ILs)、可延迟负载(dl)和电动汽车(ev),通过战略建模来促进FFR能力。通过在随机调度框架中嵌入不确定性模型,为有效应对可再生能源发电波动带来的挑战和减少可再生能源弃风提供了一种综合策略。本文强调了FFR在维持电网平衡方面的重要性,特别是在res存在的情况下。柔性负载的包含进一步有助于通过对频率干扰的快速调整来增强电网的弹性。拟议的框架不仅可以适应可再生能源发电的不确定性,还可以利用智能灵活负载来增强FFR能力,为可靠和可持续的电力系统铺平道路。
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Fast frequency response constrained stochastic scheduling of flexible loads in low inertia grids
This paper presents a modeling approach to address fast frequency response (FFR) requirements within a stochastic scheduling framework. The work integrates FFR response from flexible loads and propose advance modeling techniques to characterize renewable generation uncertainty. The study incorporates scenario-based uncertainty modeling to capture the inherent unpredictability of renewable energy resources (RES), enhancing the accuracy of scheduling in low inertia grids. Central to the proposed methodology is the integration of flexible loads such as interruptible loads (ILs), deferrable loads (DLs), and electric vehicles (EVs) strategically modeled to contribute to FFR capabilities. By embedding uncertainty modeling within the proposed stochastic scheduling framework, the research offers a comprehensive strategy to effectively handle the challenges posed by renewable generation fluctuations and reduces the RES curtailment. The paper underscores the significance of FFR in maintaining grid balancing, particularly in the presence of RES. The inclusion of flexible loads further contributes to enhancement of grid resilience by enabling rapid adjustments in response to frequency disturbances. The proposed framework not only accommodates renewable generation uncertainties but also leverages smart flexible loads to bolster FFR capabilities paving the way for a reliable and sustainable power systems.
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