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Solar Irradiance Forecasting using Decision Tree and Ensemble Models

机译:基于决策树和集成模型的太阳辐照度预测

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Sun's radiation is the pivotal driving force of the Earth and its prediction is quite significant for conducting numerous research projects in Renewable Energy Sources (RESs). The solar resource being an intermittent one, improvement in solar radiation prediction accuracy is strived for, to reduce uncertainty in RESs and enhance economical profits derived from them. This paper gives solar irradiance forecasting approach based on Decision Trees (DTs) and their ensemble models. Input data is comprised of 9 daily averaged meteorological parameters and 3 calendar variables for Chandigarh over 2 years (2017 & 2018). The implementation of forecasting models have been analyzed and compared based on Mean Square Error (MSE), Mean Absolute Error (MAE), Mean Absolute Percentage Error (MAPE), Root Mean Square Error (RMSE), Correlation Coefficient (R-value). Pearson coefficient technique has also been used to assess the correlation between input features and solar irradiance. The model with least error metrics and highest R-value is considered to be optimal and is utilized to predict daily solar irradiance of Chandigarh for the year 2019.
机译:太阳的辐射是地球的关键驱动力,其预测对于开展可再生能源(RESs)的众多研究项目具有重要意义。太阳能是一种间歇性的资源,努力提高太阳辐射的预测准确性,以减少RES的不确定性并提高从中获得的经济利益。本文提出了基于决策树及其集合模型的太阳辐照度预测方法。输入数据由昌迪加尔在过去2年(2017年和2018年)的9个每日平均气象参数和3个日历变量组成。根据均方误差(MSE),均方绝对误差(MAE),均方绝对百分比误差(MAPE),均方根误差(RMSE),相关系数(R值)对预测模型的实现进行了分析和比较。皮尔逊系数技术也已用于评估输入特征与太阳辐照度之间的相关性。具有最小误差度量和最高R值的模型被认为是最佳的,并被用来预测昌迪加尔2019年的日太阳辐照度。

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