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光伏发电技术 储能系统 机器学习 ★ 5.0

级联H桥储能变流器的模块化冗余控制与容错运行策略

Integrated Spatiotemporal Hybrid Solar PV Generation Forecast Between Countries on Different Continents Using Transfer Learning Method

作者 Bowoo Kim · Kaouther Belkilani · Gerd Heilscher · Marc-Oliver Otto · Jeung-Soo Huh · Dongjun Suh
期刊 IEEE Access
出版日期 2025年1月
技术分类 光伏发电技术
技术标签 储能系统 机器学习
相关度评分 ★★★★★ 5.0 / 5.0
关键词 太阳能光伏发电 转移学习 CL - Transformer模型 容量预测 光伏电站
语言:

中文摘要

级联H桥拓扑广泛应用于大规模储能系统,但模块故障会影响系统可用性。本文提出模块化冗余控制策略,通过动态拓扑重构和功率再分配实现故障模块的热插拔和容错运行,保证系统连续性。

English Abstract

Solar photovoltaic (PV) generation is a cornerstone of sustainable energy production, but predicting its capacity across countries remains challenging due to factors like climate, terrain, and population density. To address this, a recent study proposed a novel approach using transfer learning, which is particularly valuable when historical data for newly established PV plants is limited. The study evaluated four PV plants in South Korea and Germany, selected for their diverse geographical and climatic conditions. The proposed CL-Transformer model outperformed established machine learning models such as LSTM, CNN-LSTM, and Transformer, consistently demonstrating superior predictive capabilities. Notably, when trained on Korean data and applied to both South Korea and Germany, the model achieved an average R ^2_ adj improvement of 23.5 %. When trained on German data, the improvement was even more pronounced at 67.3 %. Additionally, transfer learning experiments revealed up to a 50.6 % enhancement in R ^2_ adj across different plant scales. By integrating external weather variables and satellite data, this hybrid model provides valuable insights for accurate capacity prediction and strategic planning in deploying new PV plants, contributing to greater stability and efficiency in the power industry.
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SunView 深度解读

该容错控制技术可应用于阳光电源ST系列大规模储能系统。通过模块化冗余设计提升系统可靠性,实现故障模块的在线维护,降低非计划停机损失,为电网侧储能和工商业储能提供高可用性保障。