[1]谢七月,钟树红,戴 杨,等.基于全天空图像关键云图特征的小时内光伏功率预测[J].机械与电子,2026,44(04):33-39.
 XIE Qiyue,ZHONG Shuhong,DAI Yang,et al.Intra-hour Photovoltaic Power Prediction Based on Key Cloud Features from All-sky Images[J].Machinery & Electronics,2026,44(04):33-39.
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基于全天空图像关键云图特征的小时内光伏功率预测()
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《机械与电子》[ISSN:1001-2257/CN:52-1052/TH]

卷:
44
期数:
2026年04期
页码:
33-39
栏目:
智能检测
出版日期:
2026-04-27

文章信息/Info

Title:
Intra-hour Photovoltaic Power Prediction Based on Key Cloud Features from All-sky Images
文章编号:
1001-2257(2026)04-0033-07
作者:
谢七月12钟树红12戴 杨12周育才1付 强12王晓丽3
(1.长沙理工大学人工智能学院,湖南 长沙 410114;
2.电网防灾减灾国家重点实验室,湖南 长沙 410114;
3.中南大学自动化学院,湖南 长沙 410083)
Author(s):
XIE Qiyue12ZHONG Shuhong12DAI Yang12ZHOU Yucai1FU Qiang12WANG Xiaoli
(1.School of Artificial Intelligence,Changsha University of Science and Technology,Changsha 410114,China;
2.State Key Laboratory of Power Disaster Prevention and Mitigation,Changsha 410114,China;
3.School of Automation,Central South University,Changsha 410083,China)
关键词:
光伏功率预测全天空图像智能优化算法深度学习图像特征提取
Keywords:
photovoltaic power forecastingall sky imagesintelligent optimization algorithmsdeeplearningimage feature extraction
分类号:
TM615
文献标志码:
A
摘要:
针对天空云层变化导致光伏功率预测精度下降,以及现有基于全天空图像方法在关键云区特
征提取方面存在不足的问题,提出一种基于全天空图像关键云区特征提取的改进光伏功率预测方法。首
先,提取全天空图像关键云区特征与历史光伏功率特征以捕获扰动与时序信息;随后,采用双通道长短期记
忆网络(LSTM)分别编码过去与未来特征,并通过注意力机制实现高效融合;最后,引入逐步训练策略,并利
用常春藤算法(IVYA)优化模型参数。实测数据表明,所提方法优于空间卷积神经网络(SCNN)、Conv-
NeXt、双向长短期记忆网络(Bi LSTM)及Transformer等主流方法,其10 min预测性能取得EMAE 为
0.515 kW、ERMSE 为1.489 kW、R2 为0.967 8的结果。
Abstract:
To address the degradation in photovoltaic (PV) power forecasting accuracy caused by dynamic
cloud evolution and the insufficient extraction of key cloud region features in existing all sky image–
based methods,an improved PV power prediction approach based on key cloud region feature extraction
from all sky images is proposed.Firstly,the features of key cloud regions from all sky images
and historical PV power are extracted to capture perturbation and temporal information.Subsequently,a
dual channel long short term memory (LSTM) network is employed to encode past and future features
separately,which are then efficiently fused via an attention mechanism.Finally,a stepwise training strategy
is introduced,and the Ivy Algorithm (IVYA) is used to optimize model parameters.Validation using one
year of measured data demonstrates that the proposed method outperforms mainstream models including
SCNN,ConvNeXt,Bi LSTM,and Transformer,achieving a 10 minute forecasting performance with a
EMAE of 0.515 kW,a ERMSE of 1.489 kW,and R2 of 0.967 8.

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备注/Memo

备注/Memo:
收稿日期:2025-12-11
基金项目:国家自然科学基金资助项目(62373067)
作者简介:谢七月 (1980-),男,江西于都人,博士,教授,研究方向为发电过程建模与优化控制、机器学习与人工智能。
更新日期/Last Update: 2026-05-11