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智能化与AI应用 深度学习 机器学习 光伏逆变器 智能运维 ★ 5.0

基于改进时间卷积网络与特征建模的超短期光伏发电功率预测

Ultra-short-term Photovoltaic Power Prediction Based on Improved Temporal Convolutional Network and Feature Modeling

作者
期刊 中国电机工程学会热电联产
出版日期 2025年9月
卷/期 第 2025 卷 第 5 期
技术分类 智能化与AI应用
技术标签 深度学习 机器学习 光伏逆变器 智能运维
相关度评分 ★★★★★ 5.0 / 5.0
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中文摘要

本文提出一种融合Spearman气象特征筛选、天文特征建模与改进时间卷积网络(TCN)的超短期光伏功率预测方法。通过引入投影头层和滚动时序机制,显著提升多步预测精度,在无气象数据下4小时预测误差降低20.5%,加入短波辐射后进一步提升8.8%–11.1%。

English Abstract

Accurate ultra-short-term photovoltaic(PV)power forecasting is crucial for mitigating variations caused by PV power generation and ensuring the stable and efficient operation of power grids.To capture intricate temporal relationships and enhance the precision of multi-step time forecast,this paper introduces an innovative approach for ultra-short-term photovoltaic(PV)power prediction,leveraging an enhanced Temporal Convolutional Neural Network(TCN)architecture and feature modeling.First,this study introduces a method employing the Spearman coefficient for meteorological feature filtration.Integrated with three-dimensional PV panel modeling,key factors influencing PV power generation are identified and prioritized.Second,the analysis of the correlation coefficient between as-tronomical features and PV power prediction demonstrates the theoretical substantiation for the practicality and essentiality of incorporating astronomical features.Third,an enhanced TCN model is introduced,augmenting the original TCN structure with a projection head layer to enhance its capacity for learning and expressing nonlinear features.Meanwhile,a new rolling timing network mechanism is constructed to guarantee the segmentation prediction of future long-time output sequences.Multiple experiments demonstrate the superior performance of the proposed forecasting method compared to existing models.The accuracy of PV power prediction in the next 4 hours,devoid of meteorological conditions,increases by 20.5%.Furthermore,incorporating shortwave radiation for predictions over 4 hours,2 hours,and 1 hour enhances accuracy by 11.1%,9.1%,and 8.8%,respectively.
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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的功率预测需求。其改进TCN模型可嵌入iSolarCloud边缘-云协同架构,提升ST系列PCS和PowerTitan储能系统在光储联合调度中的出力预判精度;建议将该算法集成至逆变器本地AI模块,支撑户用/工商业场景下分钟级功率自适应调节,并为构网型光储系统提供高置信度超短期预测输入。