Litcius/Paper detail

Multi-step wind energy forecasting in the Mexican Isthmus using machine and deep learning

Angel A. Galarza-Chavez, Jose L. Martinez-Rodriguez, René Fernando Domínguez-Cruz, Esmeralda López-Garza, Ana B. Ríos-Alvarado

2024Energy Reports23 citationsDOIOpen Access PDF

Abstract

Wind energy has gained more presence in Mexico, specifically in the Isthmus region of Oaxaca. Due to the intermittency of environmental conditions, predicting power generation across various wind farms in the area is essential for making informed decisions. However, there is currently a lack of strategies that provide energy predictions for wind farms in this region over a specific period, particularly using a multi-step forecasting approach. This paper proposes a methodology and implementation for forecasting energy generation in wind farms within the Isthmus region. The methodology includes stages for data analysis and exploration, preprocessing, configuring regression models, evaluation and simulation, and multi-step forecasting (24-hour period). Five regression algorithms were analyzed: Linear Regression (LR), Support Vector Regression (SVR), Multiple-SVR (M-SVR), General Regression Neural Network (GRNN), and Long Short-Term Memory (LSTM). Additionally, multi-step forecasting strategies such as recursive and Multi-Input Multi-Output (MIMO) were examined. Among these models, the LR and M-SVR models using the MIMO strategy yielded the best results in this study, achieving a Root Mean Square Error (RMSE) of 0.10 and a Mean Absolute Error (MAE) of 0.08. We also analyze daily forecasts to demonstrate the monthly model performance fluctuations during a whole year. Furthermore, the proposed model is based on actual wind conditions in the area, enhancing its effectiveness and feasibility. • Methodology for wind energy forecasting in the Isthmus region. • Machine and deep learning algorithms were configured using a heuristic strategy. • The MIMO multi-step ahead forecasting strategy yielded the best results in this study. • Daily forecasts demonstrated the monthly model performance fluctuations during a year.

Topics & Concepts

Wind powerEnergy (signal processing)Artificial intelligenceDeep learningComputer scienceMeteorologyEnvironmental scienceMachine learningEngineeringStatisticsMathematicsPhysicsElectrical engineeringEnergy Load and Power ForecastingComputational Physics and Python ApplicationsWind Energy Research and Development