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基于V2G提升网络化微电网韧性的分布式模型预测控制方法:采用非侵入式电池代理模型

Enhancing Resilience of Networked Microgrids Using V2G: A Distributed Model Predictive Control Approach With Non-Intrusive Battery Surrogate Model

作者 Song Ke · Ruohan Guo · Weijie Mai · Shangyang He · Ziqiang Wang · Kui Zhang · Jinpeng Tian · Chi Yung Chung
期刊 IEEE Transactions on Industry Applications
出版日期 2025年10月
卷/期 第 62 卷 第 2 期
技术分类 控制与算法
技术标签 模型预测控制MPC 微电网 调峰调频 储能变流器PCS
相关度评分 ★★★★ 4.0 / 5.0
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中文摘要

本文提出一种非侵入式电池代理模型(NBSM),结合分布式模型预测控制(DMPC),实现对电动汽车电池状态的实时估计与V2G响应精准调控,显著提升网络化微电网频率韧性,降低功率跟踪误差至10%以内,并在仿真中改善频率最低点11.2%。

English Abstract

Enhancing the resilience of networked microgrids (NMGs) through model predictive control-based vehicle-to-grid (V2G) strategies faces a key challenge due to the lack of real-time perception of electric vehicle (EV) batteries’ states, making it difficult for the model predictive control (MPC) to accurately predict and utilize V2G responses. To address this gap, this paper proposes a non-intrusive battery surrogate model (NBSM) based on a resistor-capacitor (RC) equivalent circuit. The NBSM effectively emulates an EV battery dynamics and enables the distributed model predictive control (DMPC) approach to predict states of EV batteries. It enables real-time V2G control informed by the EV response modeled by the NBSM, maintaining power tracking errors below 10%. Moreover, it provides a physical interpretation of the commonly used first-order inertia element in V2G response modeling. Building on this model, two resilience-oriented metrics—capturing frequency recovery and EV support sustainability—are formulated to quantify V2G contributions. These metrics are then embedded into a DMPC framework, yielding a frequency control strategy with tunable resilience objectives. Simulation results demonstrate that the proposed strategy led to an 11.2% improvement in frequency nadir (from –0.4071 Hz to –0.3615 Hz) and a 36.2% promotion in the resilience metric $\mathcal {R}_{f}$. The proposed controller maintains robust performance across varying prediction horizons, weight settings, parameter uncertainties, communication disturbances, and tie-line topology changes, ensuring stable frequency regulation and reliable EV participation. This scalable V2G framework effectively bridges the EV physical layer and grid dispatch layer, supporting resilience of NMGs.
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SunView 深度解读

该研究提出的NBSM+DMPC框架可直接赋能阳光电源ST系列储能变流器及PowerTitan系统在微电网场景下的V2G协同调控能力,增强其在黑启动、故障恢复及动态调频中的响应精度与鲁棒性。建议将NBSM嵌入iSolarCloud平台V2G调度模块,与组串式逆变器+户用储能系统联动,构建光储充一体化韧性微网解决方案。