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基于灰色关联分析与Transformer-GCAN模型的县域分布式光伏日前功率预测

County-Level Distributed PV Day-Ahead Power Prediction Based on Grey Correlation Analysis and Transformer-GCAN Model

作者 Pei Zhang · Bin Zhang · Jinliang Yin · Jie Shi
期刊 IEEE Transactions on Sustainable Energy
出版日期 2025年7月
卷/期 第 17 卷 第 1 期
技术分类 智能化与AI应用
技术标签 机器学习 深度学习 光伏逆变器 智能化与AI应用
相关度评分 ★★★★★ 5.0 / 5.0
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中文摘要

针对县域内分布式光伏电站存在的时空相关性,本文提出融合灰色关联分析与Transformer-GCAN模型的日前功率预测方法:利用灰色关联度构建光伏站图结构,结合Transformer提取时序特征、GAT增强空间注意力建模,最终实现高精度县域级预测。实测显示RMSE在晴/阴/雨天分别降低11.90%/15.72%/19.61%。

English Abstract

The distributed photovoltaic (PV) power stations within the entire county exist spatiotemporal correlation. Merely considering temporal correlation makes it challenging to meet the day-ahead scheduling demands. This paper proposes a distributed PV county-level day-ahead power prediction method based on grey relational analysis and the Transformer-Graph Convolutional Attention Network (Transformer-GCAN) model. Firstly, the grey relational degree is used to measure the relevance between each distributed PV stations, and the connection relationship of the station graph is determined based on the analysis results. Secondly, the Transformer network is utilized to extract the temporal features of each PV sequence in the graph. Based on the Graph Convolutional Network (GCN) model, a Graph Attention Mechanism (GAT) is introduced to dynamically extract spatial features between each photovoltaic station in the graph. Finally, the integration of spatiotemporal features is achieved through a fully connected neural network, enabling day-ahead power prediction at the county level. Case analysis results demonstrate that compared with the Transformer-GCN model, the Root Mean Square Error (RMSE) of the power prediction model proposed in this paper is reduced by 11.90%, 15.72% and 19.61% respectively in sunny days, cloudy days and rainy days.
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SunView 深度解读

该研究高度契合阳光电源iSolarCloud智能运维平台及组串式逆变器集群的日前调度需求。其Transformer-GCAN模型可嵌入iSolarCloud的功率预测引擎,提升县域级分布式光伏出力预测精度,支撑ST系列PCS和PowerTitan储能系统的协同充放电决策。建议将灰色关联图构建模块集成至iSolarCloud边缘侧AI推理框架,并适配SG系列组串逆变器的本地数据采集协议,强化光储联合调度能力。