引用本文:张扬科,李刚,李秀峰.基于典型代表电站和改进SVM的区域光伏功率短期预测方法[J].电力自动化设备,2021,41(11):
ZHANG Yangke,LI Gang,LI Xiufeng.Short-term forecasting method for regional photovoltaic power based on typical representative power stations and improved SVM[J].Electric Power Automation Equipment,2021,41(11):
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基于典型代表电站和改进SVM的区域光伏功率短期预测方法
张扬科1, 李刚1, 李秀峰2
1.大连理工大学 水电与水信息研究所,辽宁 大连 116024;2.云南电力调度控制中心,云南 昆明 650000
摘要:
准确的区域光伏功率预测作为解决光伏并网消纳和多能互补问题的技术之一受到越来越多的关注,提出一种基于典型代表电站和改进支持向量机(SVM)的区域光伏功率短期预测方法。通过K-means聚类将同一地区光伏电站划分到不同汇聚区,使用历史数据和3种数学相关系数计算得到各汇聚区典型代表电站,并通过4类光伏功率指标分析各典型代表电站与汇聚区的一致性,基于此,以改进SVM代替传统的滚动预报形成区域功率预测模型。实际算例分析表明,所提方法可提升区域光伏功率短期预测精度。
关键词:  K-means聚类  典型代表电站  短期预测  新能源出力  SVM
DOI:10.16081/j.epae.202108017
分类号:TM615
基金项目:国家自然科学基金资助项目(51879030)
Short-term forecasting method for regional photovoltaic power based on typical representative power stations and improved SVM
ZHANG Yangke1, LI Gang1, LI Xiufeng2
1.Institute of Hydropower System & Hydroinformatics, Dalian University of Technology, Dalian 116024, China;2.Yunnan Electric Power Dispatching and Control Center, Kunming 650000, China
Abstract:
Accurate regional photovoltaic power forecasting attracts more and more attention since it is one of the techniques for solving problems of photovoltaic grid-connection consumption and multi-energy complementary. A short-term forecasting method for regional photovoltaic power based on typical representative power stations and improved SVM(Support Vector Machine) is proposed. The photovoltaic power stations in the same region are divided into different convergence areas by K-means clustering, the typical representative station in each convergence area is calculated by using historical data and three mathematical correlation coefficients, and the consistency of each typical representative station with the convergence area is analyzed through four photovoltaic power indices. On this basis, a regional power forecasting model is formed by substituting the traditional rolling forecasting with the improved SVM. The actual example analysis shows that the proposed method can improve the short-term forecasting accuracy of regional photovoltaic power.
Key words:  K-means clustering  typical representative power stations  short-term forecasting  renewable energy output  SVM

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