A precise and efficient K-means-ELM model to improve ultra-short-term solar irradiance forecasting

IF 4.2 Q2 ENERGY & FUELS
Mengyu Li, Yong Li, Yongfa Diao
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引用次数: 0

Abstract

To address the problems of intermittent and uncontrollable solar irradiance faced by grid-connected photovoltaic power plants, this paper proposes an ultra-short-term solar irradiance prediction model that combines K-means clustering with the Extreme Learning Machine (ELM). The K-means algorithm is first applied to cluster solar irradiance data from different seasons in Shanghai based on spatial similarity. Subsequently, the ELM algorithm is employed to train the model, significantly improving both prediction accuracy and training speed. Compared with the prediction accuracy of the model before clustering, the root-mean-square error (RMSE) of the clustered model is significantly reduced by 28.75 % in spring, and 0.30 %, 6.70 % and 5.92 % in summer, Autumn and winter, respectively. In addition, the model demonstrates stable predictive performance at different time resolutions (5, 10 and 15 minutes) with R2 values close to 1, confirming its accuracy and stability under small sample conditions. In terms of training speed, ELM’s training time is more than 100 times faster than Support Vector Regression (SVR) and significantly shorter than traditional models such as PSO-BP and Random Forest (RF), showing its great advantage in application scenarios that require fast response. Overall, the K-means-ELM model is able to accurately capture the overall trend and sudden changes in solar irradiance, which is of great application value for enhancing the efficiency and stability of solar power generation systems.
改进超短期太阳辐照度预报的精确高效 K-means-ELM 模型
为解决并网光伏电站面临的太阳辐照度间歇性和不可控性问题,本文提出了一种结合 K-means 聚类和极限学习机(ELM)的超短期太阳辐照度预测模型。首先采用 K-means 算法,根据空间相似性对上海不同季节的太阳辐照度数据进行聚类。随后,采用 ELM 算法对模型进行训练,大大提高了预测精度和训练速度。与聚类前的预测精度相比,聚类后模型的均方根误差(RMSE)在春季显著降低了 28.75%,在夏季、秋季和冬季分别降低了 0.30%、6.70% 和 5.92%。此外,该模型在不同的时间分辨率(5 分钟、10 分钟和 15 分钟)下都表现出稳定的预测性能,R2 值接近 1,证实了其在小样本条件下的准确性和稳定性。在训练速度方面,ELM 的训练时间比支持向量回归(SVR)快 100 多倍,明显短于 PSO-BP 和随机森林(RF)等传统模型,在需要快速响应的应用场景中显示出巨大优势。总体而言,K-均值-ELM 模型能够准确捕捉太阳辐照度的整体趋势和突变,对于提高太阳能发电系统的效率和稳定性具有重要的应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Renewable Energy Focus
Renewable Energy Focus Renewable Energy, Sustainability and the Environment
CiteScore
7.10
自引率
8.30%
发文量
0
审稿时长
48 days
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