阿萨巴的太阳辐射预测模型及其热力学分析:最小平方回归和机器学习方法

N. E. Nwanze, S. C. Iweka, K. E. Madu, E. D. Edafiadhe
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摘要

阿萨巴地区全球太阳辐射预测模型的开发采用了最小平方回归和机器学习工具。本研究使用了尼日利亚气象局阿萨巴 2013-2022 年的数据。使用最小平方回归法开发了四个基于全球太阳辐射的模型,分别标记为 H1、H2、H3 和 H4,其模型项包括特征日长、太阳偏角、降雨量等,而机器学习模型包括多层感知器模型、粗高斯模型(基于 SVM 的模型)和 XGBoost 模型。利用模型项考虑了平均偏差误差、平均百分比误差、均方根误差、纳什-苏特克利夫方程、相关系数(R)、t 检验和判定系数(R2)等预测因素。结果表明,H4 模型的平均百分比误差值为 0.740,RMSE 值为 46.588,Nash-Sutcliffe 方程值为 0.739,R2 值为 0.7391,t 检验值为 2.595E-24,平均偏差误差值为 -6.88E-12,均优于 H1、H2、H3、机器学习模型(基于 SVM 的模型、多层感知器和 XGBoost)和其他现有模型(MA-MME 和 MLR)。因此,H4 模型的结果在可接受范围内。此外,阿萨巴全球太阳辐射的放热量在 20-185 W/m2 之间变化,情况良好。这表明,为阿萨巴和其他气候条件相似的地区开发了一个更有效、更理想的全球太阳辐射预测模型(H4)。
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Solar Radiation Forecasting Models and their Thermodynamic Analysis in Asaba: Least Square Regression and Machine Learning Approach
Least square regression and machine learning tools were used for the development of global solar radiation forecasting models for Asaba region. Data from the year 2013-2022 from Nigerian Meteorological Agency, Asaba was used for this study. The least square regression method was used to develop four global solar radiation -based models, tagged H1, H2, H3 and H4 with characteristic day length, solar declination angle, rainfall amount, etc. as its model terms while the machine learning models produced multilayer perceptron, coarse Gaussian model (SVM-based model) and XGBoost model. The prediction factors like mean bias error, mean percentage error, root mean square error, Nash-Sutcliffe equation, coefficient of correlation (R), t-test, and coefficient of determination (R2) were considered using the model terms. The results indicates that H4 model outperformed H1, H2, H3, machine learning models (SVM-based model, multilayer perceptron and XGBoost) and other existing models (MA-MME and MLR) with a mean percentage error value of 0.740, RMSE value of 46.588, Nash-Sutcliffe equation value of 0.739, higher R2 value of 0.7391, t-test value of 2.595E-24 and mean bias error value of -6.88E-12. Thus, H4 model results fell within accepted range. Additionally, the exergy of the global solar radiation of Asaba varied from 20-185 W/m2 which are good. This shows that a more efficient and ideal global solar radiation prediction model (H4) has been developed for Asaba and other regions that share similar climatic conditions.
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