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控制与算法 DAB 双向DC-DC 强化学习 深度学习 ★ 5.0

面向三相双有源桥变换器效率优化的无模型深度强化学习框架

A Model-Free Deep Reinforcement Learning Framework for Efficiency Optimization of Three-Phase Dual-Active-Bridge Converters

作者 Zhihao Chen · Zhen Li · Sijia Huang · Haoyu Chen · Zhenbin Zhang
期刊 IEEE Journal of Emerging and Selected Topics in Power Electronics
出版日期 2025年9月
卷/期 第 14 卷 第 1 期
技术分类 控制与算法
技术标签 DAB 双向DC-DC 强化学习 深度学习
相关度评分 ★★★★★ 5.0 / 5.0
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中文摘要

本文提出一种基于深度强化学习的无模型优化框架,直接通过系统交互学习高效控制策略,无需电气参数建模;开发了适配三相DAB单步决策的改进DDPG算法及AI驱动占空比控制策略,并通过参数敏感性分析验证其强泛化能力。

English Abstract

The three-phase dual-active-bridge (DAB) converter is widely used in high-power applications due to its high power density, bidirectional power flow, and soft-switching capability. However, improving efficiency remains a major challenge. Existing strategies including mathematically derived methods and artificial intelligence (AI) approaches still rely on complex and time-consuming analytical modeling or data-driven (DD) modeling, consequently increasing development complexity. To address these issues, this work proposes a model-free optimization framework based on deep reinforcement learning (RL), enabling direct policy learning through system interaction without explicit modeling of electrical parameters, significantly reducing development time while ensuring optimization performance. To verify the generalization, a parameter sensitivity analysis is conducted, confirming strong generalization under different conditions of the converter. Furthermore, a degenerate variant of the deep deterministic policy gradient algorithm is developed for single-step decision optimization in 3p-DAB converters, along with an AI-driven duty cycle control strategy for efficiency enhancement. Finally, comprehensive comparisons with the state-of-the-art mathematical analytical method and DD approach validate the effectiveness of the proposed approach.
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SunView 深度解读

该研究高度契合阳光电源ST系列PCS、PowerTitan及光储一体化系统中双向DC-DC环节的效率优化需求。三相DAB拓扑广泛应用于储能变流器的直流侧隔离与电压匹配,其动态效率直接影响系统LCOE。所提无模型RL方法可嵌入iSolarCloud智能运维平台,实现PCS在宽工况下的自适应效率寻优,建议优先在PowerTitan新一代液冷储能系统中开展实机验证,并与现有MPC控制策略融合形成混合智能控制方案。