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超越单调下垂控制:扩展最优频率调节的可行控制区域

Beyond Monotonic Droop: Expanding Feasible Control Regions for Optimal Frequency Regulation

作者 Hamad Alduaij · Yang Weng · Haoran Li
期刊 IEEE Transactions on Power Systems
出版日期 2025年8月
卷/期 第 41 卷 第 1 期
技术分类 控制与算法
技术标签 下垂控制 构网型GFM 调峰调频 模型预测控制MPC
相关度评分 ★★★★★ 5.0 / 5.0
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中文摘要

针对高比例逆变器型电源(IBRs)接入导致的电网频率调节优化与稳定性矛盾,本文提出一种基于阻尼状态感知的条件式非单调下垂控制策略,在保障Lyapunov稳定前提下扩大最优控制可行域,并通过庞特里亚金极值原理证明其可涵盖全局最优解。

English Abstract

With the growing integration of Inverter-Based Resources (IBRs) for renewable energy, power grids are shifting towards hybrid generations. As the system becomes more complex, it is challenging to ensure optimal and safe control. Recent work shows how to achieve a conditional optimal control with stability ensured by pre-selecting one subclass of activation functions for control. However, we demonstrate that the subclass leads to a sub-optimal control policy for IBRs. To address this issue, we propose a method to enlarge the feasibility space for true optimality while preserving the Lyapunov stability. The key idea is to implement a conditional control strategy based on the damping. When IBRs observe that synchronous generators are on the way to stabilize the grid sufficiently, IBRs do not necessarily need to conduct droop control with monotonic function. In some cases, IBRs can conduct actions that more closely align with non-monotonic control to encourage renewable generations. This extends from monotonic to non-monotonic functional space. Moreover, based on Pontryagin’s maximum principle, we prove that the extended region is sufficiently large to contain a globally optimal solution. By leveraging our activation function, which can be both monotonic and non-monotonic, our numerical results on various test cases show significant improvement compared to existing solutions.
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SunView 深度解读

该研究直接支撑阳光电源构网型(GFM)储能变流器(如ST系列PCS、PowerTitan)在新型电力系统中承担主动调频、惯量响应和暂态支撑的能力。非单调下垂策略可提升IBR在弱电网/高渗透率场景下的动态协同性能,建议在iSolarCloud平台中集成该算法模块,赋能PowerStack光储系统实现更优AGC/AVC闭环控制,并为组串式逆变器升级GFL/GFM双模运行提供核心控制IP储备。