Predicting global solar radiation using an artificial neural network single-parameter model

K. Angela, S. Taddeo, M. James
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引用次数: 20

Abstract

We used five years of global solar radiation data to estimate the monthly average of daily global solar irradiation on a horizontal surface based on a single parameter, sunshine hours, using the artificial neural network method. The station under the study is located in Kampala, Uganda at a latitude of 0.19°N, a longitude of 32.34°E, and an altitude of 1200m above sea level. The five-year data was split into two parts in 2003-2006 and 2007-2008; the first part was used for training, and the latter was used for testing the neural network. Amongst the models tested, the feed-forward back-propagation network with one hidden layer (65 neurons) and with the tangent sigmoid as the transfer function emerged as the more appropriate model. Results obtained using the proposed model showed good agreement between the estimated and actual values of global solar irradiation. A correlation coefficient of 0.963 was obtained with a mean bias error of 0.055 MJ/m2 and a root mean square error of 0.521 MJ/m2. The single-parameter ANN model shows promise for estimating global solar irradiation at places where monitoring stations are not established and stations where we have one common parameter (sunshine hours).
利用人工神经网络单参数模型预测全球太阳辐射
利用5年的全球太阳辐射数据,基于日照时数这一单一参数,利用人工神经网络方法估算了水平面上全球日太阳辐射的月平均值。研究下的站点位于乌干达坎帕拉,北纬0.19°,东经32.34°,海拔1200m。5年的数据分为2003-2006年和2007-2008年两部分;第一部分用于训练,后一部分用于测试神经网络。在测试的模型中,具有1个隐藏层(65个神经元)并以正切s形作为传递函数的前馈反向传播网络被认为是更合适的模型。利用所提出的模型得到的结果表明,全球太阳辐照的估计值和实际值吻合得很好。相关系数为0.963,平均偏置误差为0.055 MJ/m2,均方根误差为0.521 MJ/m2。单参数人工神经网络模型在没有建立监测站的地方和我们有一个共同参数(日照时数)的地方显示出估计全球太阳辐照的希望。
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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