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基于改进物理信息神经网络的微电网分布式能源资源自适应参数估计

Adaptable Parameters Estimation for Microgrid Distributed Energy Resources Using Modified Physics-Informed Neural Network

作者 Likun Chen · Yifan Wang · Wei Sun · Xuzhu Dong · Bo Wang
期刊 IEEE Transactions on Sustainable Energy
出版日期 2025年6月
卷/期 第 17 卷 第 1 期
技术分类 智能化与AI应用
技术标签 微电网 深度学习 机器学习 模型预测控制MPC
相关度评分 ★★★★ 4.0 / 5.0
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中文摘要

针对微电网中分布式能源动态模糊、数据稀缺导致的参数估计难题,本文提出一种改进物理信息神经网络(PINN)方法,融合小信号分析与ODE建模,支持多类DER自适应参数辨识;引入新型数据变换,训练速度提升达82.87%;实测验证误差<5%,具备强鲁棒性与泛化能力。

English Abstract

Parameters estimation in microgrids remains challenging due to ambiguous system dynamics brought by distributed energy resources (DERs) and scarcity of data. This study presents a modified physics-informed neural network (PINN) paradigmdesigned for parameters estimation under such constraints. This paper introduces two main innovations: First, by combining small-signal analysis with the PINN framework for ordinary differential equations, we introduce an adaptable parameter estimation paradigm applicable to different types of DERs in microgrid. Second, we introduce a modified data transformation that reduces training time by up to 82.87% compared to traditional PINN approaches at best. To validate our approach, we conducted simulation on two typical system setups based on open-source real-world microgrid using real-time digital simulation to generate data. We evaluate the proposed method by using an error margin below 5% as a key metric to confirm its robustness and accuracy for different types of DERs. The experimental results demonstrate the effectiveness and adaptability of the proposed method across varying ordinary differential equations to diverse mathematical models. Additionally, suboptimal and failed cases are analyzed and discussed to provide a comprehensive evaluation of the method’s limitations.
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SunView 深度解读

该研究对阳光电源iSolarCloud智能运维平台及PowerTitan/ST系列储能变流器的模型自校准与数字孪生功能具直接支撑价值:可提升微网级光储协同控制中PCS、逆变器等设备的实时参数在线辨识精度,增强构网型(GFM)模式下的暂态响应可靠性。建议在iSolarCloud 3.0中集成轻量化PINN模块,用于ST50KTL-H组串式逆变器与PowerTitan系统的边缘侧参数自适应更新,降低现场调试成本。