Litcius/Paper detail

Solar Irradiation Forecasting Using Ensemble Voting Based on Machine Learning Algorithms

Edna S. Solano, Carolina M. Affonso

2023Sustainability38 citationsDOIOpen Access PDF

Abstract

This paper proposes an ensemble voting model for solar radiation forecasting based on machine learning algorithms. Several ensemble models are assessed using a simple average and a weighted average, combining the following algorithms: random forest, extreme gradient boosting, categorical boosting, and adaptive boosting. A clustering algorithm is used to group data according to the weather, and feature selection is applied to choose the most-related inputs and their past observation values. Prediction performance is evaluated by several metrics using a real-world Brazilian database, considering different prediction time horizons of up to 12 h ahead. Numerical results show the weighted average voting approach based on random forest and categorical boosting has superior performance, with an average reduction of 6% for MAE, 3% for RMSE, 16% for MAPE, and 1% for R2 when predicting one hour in advance, outperforming individual machine learning algorithms and other ensemble models.

Topics & Concepts

Boosting (machine learning)Random forestCategorical variableEnsemble learningMachine learningComputer scienceArtificial intelligenceGradient boostingAlgorithmCluster analysisEnsemble forecastingFeature selectionSolar Radiation and PhotovoltaicsPhotovoltaic System Optimization TechniquesEnergy Load and Power Forecasting