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Comparative Assessment of Temperature Based ANN and Angstrom Type Models for Predicting Global Solar Radiation

机译:预测全球太阳辐射温度基于ANN和Angstrom型模型的比较评估

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In this study, temperature based artificial neural network (ANN) models and Angstrom type models for predicting global solar radiation were developed for selected locations in Nigeria.The ANN models were standard multi-layered feed forward, back-propagation neural networks trained with the Levenberg Marquardt algorithm using seventeen years data collected from Nigerian Meteorological Agency (NIMET), Abuja, Nigeria and tested with twenty-two years monthly averaged data downloaded from National Aeronautical Space Administration (NASA) online database. The network inputs were latitude, longitude, elevation, month, maximum ambient temperature (T_(max)) and minimum ambient temperature (T_(min)), while monthly average global solar radiation was the network output.The Angstrom type empirical models correlated global solar radiation with minimum and maximum ambient temperatures. The performance of the models were evaluated using statistical performance indicators, namely RMSE, MBE, R~2 and rank score. The coefficients of determination (R~2) of the ANN models were always greater than 99% for all the selected locations while the highest coefficient of determination for the empirical models was 89%. The temperature-based ANN models were thus shown to deliver superior and more reliable outcomes in comparison with the empirical models.
机译:在这项研究中,基于温度模型和埃型模型,用于预测全球太阳能辐射被用于Nigeria.The人工神经网络模型的选定位置开发的人工神经网络(ANN),用所述的Levenberg训练标准的多层前馈,反向传播神经网络Marquardt算法使用来自尼日利亚气象厅(尼梅特),尼日利亚阿布贾收集并22年月平均数据来自美国国家航空航天局(NASA)的在线数据库下载测试17年数据。网络输入为纬度,经度,海拔,月,最大环境温度(T_(最大值))和最低环境温度(T_(分钟)),而平均每月全球太阳辐射是网络output.The埃键入经验模型相关的全球太阳辐射有最小和最大的环境温度。使用统计性能指标,即RMSE,MBE,R〜2,等级分数模型的性能进行了评估。该人工神经网络模型的确定(R〜2)的系数总是大于99%的所有选择的位置而判定为经验模型系数最高为89%。因此,基于温度的人工神经网络模型被示出以提供卓越的和更可靠的结果相比与经验模型。

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