Title of article :
Hourly solar radiation forecasting using optimal coefficient 2-D
linear filters and feed-forward neural networks
Author/Authors :
Fatih O. Hocaog?lu *، نويسنده , , O¨ mer N. Gerek، نويسنده , , Mehmet Kurban، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2008
Abstract :
In this work, the hourly solar radiation data collected during the period August 1, 2005–July 30, 2006 from the solar observation
station in Iki Eylul campus area of Eskisehir region are studied. A two-dimensional (2-D) representation model of the hourly solar radiation
data is proposed. The model provides a unique and compact visualization of the data for inspection, and enables accurate forecasting
using image processing methods. Using the hourly solar radiation data mentioned above, the image model is formed in raster
scan form with rows and columns corresponding to days and hours, respectively. Logically, the between-day correlations along the same
hour segment provide the vertical correlations of the image, which is not available in the regular 1-D representation. To test the forecasting
efficiency of the model, nine different linear filters with various filter-tap configurations are optimized and tested. The results provide
the necessary correlation model and prediction directions for obtaining the optimum prediction template for forecasting. Next, the
2-D forecasting performance is tested through feed-forward neural networks (NN) using the same data. The optimal linear filters and
NN models are compared in the sense of root mean square error (RMSE). It is observed that the 2-D model has pronounced advantages
over the 1-D representation for both linear and NN prediction methods. Due to the capability of depicting the nonlinear behavior of the
input data, the NN models are found to achieve better forecasting results than linear prediction filters in both 1-D and 2-D.
2008 Elsevier Ltd. All rights reserved
Keywords :
Solar radiation , forecasting , Linear filter , NN
Journal title :
Solar Energy
Journal title :
Solar Energy