基于som的区域建模方法的短期光伏发电预测

Q1 Engineering
Jun Li;Qibo Liu
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引用次数: 0

摘要

光伏发电固有的间歇性和不确定性阻碍了光伏并网系统的发展。准确预测光伏发电输出功率是解决这一问题的有效途径。提出了一种结合训练自组织映射(SOM)网络聚类和优化核极限学习机(KELM)方法的混合预测模型,以提高短期光伏发电预测的准确性。首先,使用纯SOM完成训练数据集的初始划分;然后利用模糊c均值(FCM)算法对训练好的SOM网络进行聚类,同时利用Davies-Bouldin指数(DBI)确定聚类的最优大小。最后,在每个数据分区中,将聚类与差分进化算法优化的KELM方法相结合,建立区域KELM模型,或与使用最小二乘法完成系数评估的多元线性回归(MR)相结合,建立区域MR模型。将所提出的模型应用于GEFCom2014提供的三个不同太阳能电站的一小时前光伏功率预测实例。与其他单一全局模型相比,该区域KELM模型在植物1、植物2和植物3上的均方根误差(rmse)平均降低了52.06%、54.56%和51.43%。结果表明,该模型的预测精度得到了显著提高。此外,所提出的预测方法与现有最先进的预测方法之间的比较表明了所提出方法的优越性。不同方法在不同季节的预测结果表明,该方法具有较强的稳健性。在四个季节中,建议的SF-KELM的MAEs和rmse通常是最小的。而且,$R^{2}$的值超过了0.9,这是最接近1的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-term Photovoltaic Power Forecasting Using SOM-based Regional Modelling Methods
The inherent intermittency and uncertainty of photovoltaic (PV) power generation impede the development of grid-connected PV systems. Accurately forecasting PV output power is an effective way to address this problem. A hybrid forecasting model that combines the clustering of a trained self-organizing map (SOM) network and an optimized kernel extreme learning machine (KELM) method to improve the accuracy of short-term PV power generation forecasting are proposed. First, pure SOM is employed to complete the initial partitions of the training dataset; then the fuzzy c-means (FCM) algorithm is used to cluster the trained SOM network and the Davies-Bouldin index (DBI) is utilized to determine the optimal size of clusters, simultaneously. Finally, in each data partition, the clusters are combined with the KELM method optimized by differential evolution algorithm to establish a regional KELM model or combined with multiple linear regression (MR) using least squares to complete coefficient evaluation to establish a regional MR model. The proposed models are applied to one-hour-ahead PV power forecasting instances in three different solar power plants provided by GEFCom2014. Compared with other single global models, the root mean square errors (RMSEs) of the proposed regional KELM model are reduced by 52.06% in plant 1, 54.56% in plant 2, and 51.43% in plant 3 on average. Such results demonstrate that the forecasting accuracy has been significantly improved using the proposed models. In addition, the comparisons between the proposed and existing state-of-the-art forecasting methods presented have demonstrated the superiority of the proposed methods. The forecasts of different methods in different seasons revealed the strong robustness of the proposed method. In four seasons, the MAEs and RMSEs of the proposed SF-KELM are generally the smallest. Moreover, the $R^{2}$ value exceeds 0.9, which is the closest to 1.
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来源期刊
Chinese Journal of Electrical Engineering
Chinese Journal of Electrical Engineering Energy-Energy Engineering and Power Technology
CiteScore
7.80
自引率
0.00%
发文量
621
审稿时长
12 weeks
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