← 返回

基于深度平衡层与神经ODE代理模型的电力系统动态仿真加速

Acceleration of Power System Dynamic Simulations Using a Deep Equilibrium Layer and Neural ODE Surrogate

作者 Matthew Bossart · Jose Daniel Lara · Ciaran Roberts · Rodrigo Henriquez-Auba · Duncan S. Callaway · Bri-Mathias Hodge
期刊 IEEE Transactions on Energy Conversion
出版日期 2025年5月
卷/期 第 40 卷 第 4 期
技术分类 智能化与AI应用
技术标签 深度学习 机器学习 系统并网技术 模型预测控制MPC
相关度评分 ★★★★ 4.0 / 5.0
关键词
语言:

中文摘要

本文提出一种融合深度平衡层与神经ODE的数据驱动代理模型,用于构建电力系统部分环节的降阶动态模型。该模型无需精确物理模型即可实现高精度、高速度仿真,且可初始化至匹配潮流解的稳态运行点,便于嵌入现有仿真流程。

English Abstract

The dominant paradigm for power system dynamic simulation is to build system-level simulations by combining physics-based models of individual components. The sheer size of the system along with the rapid integration of inverter-based resources exacerbates the computational burden of running time domain simulations. In this paper, we propose a data-driven surrogate model based on implicit machine learning—specifically deep equilibrium layers and neural ordinary differential equations—to learn a reduced order model of a portion of the full underlying system. The data-driven surrogate achieves similar accuracy and reduction in simulation time compared to a physics-based surrogate, without the constraint of requiring detailed knowledge of the underlying dynamic models. This work also establishes key requirements needed to integrate the surrogate into existing simulation workflows; the proposed surrogate is initialized to a steady state operating point that matches the power flow solution by design.
S

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PCS在构网型储能系统动态响应建模、黑启动过程仿真、弱电网暂态交互分析等场景具有直接价值。通过神经ODE surrogate替代传统电磁暂态仿真,可显著提升电站级数字孪生实时性与故障预演效率。建议在iSolarCloud V3.0中集成轻量化神经ODE模块,支撑构网型光储系统宽频振荡预警与VSG参数在线优化。