Daily Direct Normal Irradiance Forecasting by Support Vector Regression Case Study: in Ghardaia-Algeria

A. Takilalte, S. Harrouni
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引用次数: 3

Abstract

Concentrated solar thermal plants (CST) generate electricity from the direct normal irradiance (DNI) component of solar irradiance. Accuracy forecasting of DNI can reduce the uncertainty of solar power plant output caused by solar irradiance intermittency, in the objective to increase CST plant profitability. In this study, the support vector regression (SVR) methodology was adopted to forecast the DNI based upon some meteorological and radiometric data such as, measured mean daily values of Temperature (T), Humidity (H), Global Horizontal Irradiation (GHI), sunshine duration (SS) and the calculated Fractal Dimension (FD) which is tested for the first time here. The capability of the SVRs-Radial Basis Function (RBF) constructed with different combinations of the parameters mentioned above are investigated. For this purpose, long-term measured data (one year) for the city of Ghardaia situated in sunny part of Algeria was utilized. The sunshine hours (SS) have been widely endorsed as the most effective parameters in forecasting of the DNI in the horizon of 122 days ahead by an error NRMSE =14.7% and R2=0.87. A slight improvement in the accuracy is performed using other parameters as inputs to get NRMSE =12.41% and R2=0.90.
基于支持向量回归的每日直接正常辐照度预测案例研究:在加纳-阿尔及利亚
聚光太阳能热电厂(CST)利用太阳辐照度的直接正常辐照度(DNI)部分发电。DNI的准确预测可以减少太阳辐照度间歇性造成的太阳能电站输出的不确定性,目的是提高CST电站的盈利能力。本研究采用支持向量回归(SVR)方法,基于温度(T)、湿度(H)、全球水平辐照(GHI)、日照时数(SS)等气象和辐射资料,以及本文首次验证的计算分形维数(FD),对DNI进行预测。研究了用上述参数的不同组合构造的svrs -径向基函数(RBF)的性能。为此目的,利用了位于阿尔及利亚阳光充足地区的Ghardaia市的长期测量数据(一年)。日照时数(SS)已被广泛认可为预测122天地平线DNI最有效的参数,误差NRMSE =14.7%, R2=0.87。使用其他参数作为输入,准确度略有提高,得到NRMSE =12.41%, R2=0.90。
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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