Solar Irradiance Forecasting for Informed Solar Systems Design and Financing Decisions

IF 1 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC SAIEE Africa Research Journal Pub Date : 2024-06-06 DOI:10.23919/SAIEE.2024.10551303
Ronewa Mabodi;Jahvaid Hammujuddy
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Abstract

This research presents the implementation and evaluation of machine learning models to predict solar irradiance (W/m 2 ). The objective is to provide valuable insights for making informed decisions regarding solar system design and financing. A thorough exploratory data analysis was conducted on the Southern African Universities Radiometric Network (SAURAN) data collected at the University of Pretoria’s station to gain insights into the patterns of solar irradiance over the past 10 years. Python’s functions and libraries are utilized extensively for conducting exploratory data analysis, model implementation, model testing, forecasting, and data visualization. Random Forest (RF), k-Nearest Neighbors (KNN), Feedforward Neural Network (FFNN), Support Vector Regression (SVR), and eXtreme Gradient Boosting models (XGBoost) are implemented and evaluated. The KNN model was found to be superior achieving a relative Root Mean Squared Error (RMSE), relative Mean Absolute Error (MAE), and R-Squared (R 2 ) of 5.77%, 4.51% and 0.89 respectively on testing data. The variable importance analysis revealed that temperature (X!) exerted the greatest influence on predicting solar irradiance, accounting for 44% of the predictive power. The KNN model is suitable to inform solar systems design and financing decisions. Directions for future studies are identified and suggestions for areas of exploration are provided to contribute to the advancement of solar irradiance predictions.
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预测太阳辐照度,为太阳能系统设计和融资决策提供依据
本研究介绍了预测太阳辐照度(瓦/平方米)的机器学习模型的实施和评估。目的是为太阳能系统的设计和融资决策提供有价值的见解。对比勒陀利亚大学站点收集的南部非洲大学辐射测量网络(SAURAN)数据进行了全面的探索性数据分析,以深入了解过去 10 年的太阳辐照度模式。Python 的函数和库被广泛用于进行探索性数据分析、模型实施、模型测试、预测和数据可视化。随机森林 (RF)、k-近邻 (KNN)、前馈神经网络 (FFNN)、支持向量回归 (SVR) 和极梯度提升模型 (XGBoost) 得到了实施和评估。在测试数据中,KNN 模型的相对均方根误差 (RMSE)、相对平均绝对误差 (MAE) 和 R 平方 (R2) 分别为 5.77%、4.51% 和 0.89。变量重要性分析表明,温度(X!)KNN 模型适用于太阳能系统的设计和融资决策。研究还确定了未来的研究方向,并提出了探索领域的建议,以促进太阳辐照度预测的发展。
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来源期刊
SAIEE Africa Research Journal
SAIEE Africa Research Journal ENGINEERING, ELECTRICAL & ELECTRONIC-
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发文量
29
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Back cover Table of contents Front cover Notes Interval type-II fuzzy logic control of neutral DC compensation method to moderate DC bias in power transformer
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