Optimal Estimation of Solar Radiation on Flat Surfaces for the Design of Energy Systems using Artificial Neural Networks

F. A. Huerta, Fermín Rafael Cabezas Soldevilla, Alexi Delgado, Chiara Carbajal
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Abstract

Solar energy systems use solar radiation to obtain useful energy, so to design and implement these systems anywhere on the surface of the earth it is very important to know the value of the incident solar radiation in the selected place. This radiation is usually obtained from meters such as pyranometers, pyrheliometers or actinographs from meteorological stations located near the place. As these instruments are expensive and usually have high measurement errors (5 - 9%), it is necessary to estimate the radiation in an optimal way. In this work, two mathematical methods are used to estimate the value of incident solar radiation on horizontal and tilted surfaces. The methods are: Method based on astronomical equations and method based on Artificial Neural Networks. The case study was conducted for the geographical location of the National University of Engineering (Lima, Peru). A database of meteorological variables measured for ten years and averaged every month was used to compare their measurements with the estimated results of the proposed mathematical methods. The results revealed that the estimated values of global solar radiation when applying the astronomical method differs on average 9% with respect to that provided by the database and 6% when applying Artificial Neural Networks.
基于人工神经网络的平面太阳辐射最优估计用于能源系统设计
太阳能系统是利用太阳辐射来获取有用的能量,因此在地球表面任何地方设计和实现太阳能系统,了解所选地点的入射太阳辐射值是非常重要的。这种辐射通常是从位于该地点附近的气象站的辐射计、日冕计或放射线记录仪等仪表获得的。由于这些仪器价格昂贵,通常有很高的测量误差(5 - 9%),有必要以最佳方式估计辐射。本文采用两种数学方法来估计水平和倾斜表面上的入射太阳辐射值。方法有:基于天文方程的方法和基于人工神经网络的方法。案例研究是针对国立工程大学(秘鲁利马)的地理位置进行的。使用了一个十年来测量的气象变量数据库,每个月取平均值,将它们的测量结果与所提出的数学方法的估计结果进行比较。结果表明,应用天文方法估算的太阳总辐射值与数据库估算值平均相差9%,应用人工神经网络估算值平均相差6%。
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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