估算月全球太阳辐射的七个经验模式的比较(以利比亚为例)

A. Teyabeen, Najeya B. Elhatmi, Akram A. Essnid, F. Mohamed
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引用次数: 2

摘要

本研究的目的是比较七个经验模型,以找出其中哪一个是最有效的估计每月全球太阳辐射。采用利比亚的黎波里(Lat. 32.815 N, Long. 13.439 E)的利比亚太阳能研究中心自动气象站收集3年(2018-2020年)数据,利用最小二乘法建立模型并确定经验系数。为了评价所建立模型的性能,引入了三种统计误差检验,即均方根误差、RMSE、平均绝对百分比误差、MAPE和相关系数R2。结果表明:5 ~ 9月天气晴好,其余月份云量分散。基于日照时数的二次模型在水平面上估算全球日辐射月平均值的效率最高,相关系数最高,MAPE最小,RMSE最小,分别为0.93、2.8049和0.0195 kWh / m2 / day。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Seven Empirical Models For Estimating Monthly Global Solar Radiation, (Case Study: Libya)
The aim of this study is to compare seven empirical models to find out which of them is the most efficient for estimating monthly global solar radiation. 3-years period data (2018-2020) used for the comparison were collected using automatic weather station installed at the Libyan Center for Solar Energy Research and Studies site, Tripoli, Libya (Lat. 32.815 N, Long. 13.439 E). The least square method is used to establish the models and determine their empirical coefficients. In order to evaluate the performance of the established models, three statistical error tests were introduced, root mean square error, RMSE, mean absolute percentage error, MAPE, and correlation coefficient, R2. The obtained results indicated that the weather condition is fair during May-September, and scattered clouds during the other months. The results also indicated that the sunshine duration-based quadratic model presented the best efficiency for estimating the monthly average of daily global solar radiation on a horizontal surface, where it had the highest value of correlation coefficient, and the smallest values of MAPE and RMSE of 0.93, 2.8049, and 0.0195 kWh⁄m2 ⁄day, respectively.
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