湖南电力2024,Vol.44Issue(5) :87-94.DOI:10.3969/j.issn.1008-0198.2024.05.014

基于加权相似气象搜索的无地表辐照度光伏出力预测

Photovoltaic Output Prediction Without Surface Irradiance Based on Weighted Similarity Meteorological Search

杨家豪 张莲 王士彬 李蘅 肖远强
湖南电力2024,Vol.44Issue(5) :87-94.DOI:10.3969/j.issn.1008-0198.2024.05.014

基于加权相似气象搜索的无地表辐照度光伏出力预测

Photovoltaic Output Prediction Without Surface Irradiance Based on Weighted Similarity Meteorological Search

杨家豪 1张莲 1王士彬 2李蘅 1肖远强1
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作者信息

  • 1. 重庆理工大学电气与电子工程学院,重庆 400054
  • 2. 国网重庆市电力公司市南供电分公司,重庆 401336
  • 折叠

摘要

为解决光伏出力预测中地表辐照度数据缺失的问题,提出一种无地表辐照度的光伏出力预测方法.首先,在原有数据基础上增添天文辐射特征,考虑到该特征可能仍无法满足预测精度需求,进而引入相似气象数据下的出力数据作为另一增广特征.其次,提出对相似度算法进行特征加权的方法,通过D-S证据理论对斯皮尔曼相关系数、最大信息系数及随机森林特征重要性三种评分方式进行综合评分,得到各特征的权重系数,以进一步提高相似度算法的气象提取能力和准确性.最后,对欧氏距离和余弦相似度方法下的相似日搜索结果和相似时刻搜索结果进行了对比.宁夏某光伏电站的实例分析表明,加权的欧氏距离相似时刻搜索结果得到的预测效果最优,四季的平均准确率和合格率分别达到了0.889、0.944,实现了无地表辐照度光伏出力较为精准的预测.

Abstract

Aiming at the problem lacking of surface solar radiation(SSR)data when forecasting the photovoltaic(PV)power generation,a PV power generation forecast method without SSR information is proposed.First,the astronomical radiation feature is added on the original data.Considering that this feature may still not meet the prediction accuracy requirements,output data under similar meteorological data is introduced as another augmented feature.Second,the method of feature weighting is proposed for the similarity algorithm,and the weight coefficients of each feature are obtained by the synthetic scoring of three scoring methods of Spearman,maximum information coefficient,and the importance of random forest features through the D-S evidence theory,so as to extract the meteorological data and further improve the accuracy of the similarity algorithm.Finally,the similar day search results and similar hour search results under Euclidean distance and cosine similarity methods are compared.The study of a PV power plant in Ningxia shows that the weighted Euclidean distance similar hour search results obtain the optimal forecast performance,that the average accuracy rate and qualification rate of the four seasons reaches 0.889 and 0.944 respectively,promising a relatively good forecast result of PV output without the SSR information.

关键词

地表太阳辐射/光伏发电/预测/D-S证据理论/相似度算法/加权相似度算法

Key words

surface solar radiation/photovoltaic power generation/forecast/D-S evidence theory/similarity algorithm/weighted similarity algorithm

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出版年

2024
湖南电力
湖南省电力公司科学研究院 湖南省电机工程学会

湖南电力

影响因子:0.308
ISSN:1008-0198
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