Por favor, use este identificador para citar o enlazar este ítem: http://repositorio.espe.edu.ec/handle/21000/35763
Título : Sistema de predicción de variables meteorológicas utilizando Machine Learning y Software Libre.
Director(es): Llanos Proaño, Jacqueline del Rosario
Rivas Lalaleo, David Raimundo
Autor: Segovia Tapia, Jenny Aracely
Toaquiza Camalle, Jonathan Fernando
Palabras clave : APRENDISAJE AUTOMÁTICO
MODELOS DE PRONÓSTICOS
VARIABLES METEOROLÓGICAS
PYTHON - LEGUAJE DE PROGRAMACIÓN
Fecha de publicación : 13-feb-2023
Editorial: Universidad de las Fuerzas Armadas ESPE. Extensión Latacunga. Carrera de Ingeniería en Electrónica e Instrumentación.
Citación : Segovia Tapia, Jenny Aracely. Toaquiza Camalle, Jonathan Fernando (2023). Sistema de predicción de variables meteorológicas utilizando Machine Learning y Software Libre. Carrera de Ingeniería Electrónica e Instrumentación. Universidad de las Fuerzas Armadas ESPE. Extensión Latacunga.
Abstract: The techniques for forecasting meteorological variables are highly studied since prior knowledge of them allows for the efficient management of renewable energies, and also for other applications of science such as agriculture, health, engineering, energy, etc. In this research, the de sign, implementation, and comparison of forecasting models for meteorological variables have been performed using different Machine Learning techniques as part of Python open-source software. The techniques implemented include multiple linear regression, polynomial regression, random forest, decision tree, XGBoost, and multilayer perceptron neural network (MLP). To identify the best technique, the mean square error (RMSE), mean absolute percentage error (MAPE), mean absolute error (MAE), and coefficient of determination (R 2) are used as evaluation metrics. The most efficient techniques depend on the variable to be forecasting, however, it is noted that for most of them, random forest and XGBoost techniques present better performance. For temperature, the best per forming technique was Random Forest with an R 2 of 0.8631, MAE of 0.4728 °C, MAPE of 2.73%, and RMSE of 0.6621 °C; for relative humidity, was Random Forest with an R 2 of 0.8583, MAE of 2.1380RH, MAPE of 2.50 % and RMSE of 2.9003 RH; for solar radiation, was Random Forest with an R 2 of 0.7333, MAE of 65.8105 W/m2, and RMSE of 105.9141 W/m2 ; and for wind speed, was Random Forest with an R 2 of 0.3660, MAE of 0.1097 m/s, and RMSE of 0.2136 m/s.
URI : http://repositorio.espe.edu.ec/handle/21000/35763
Aparece en las colecciones: Artículos Académicos - Carrera de Ingeniería Electrónica e Instrumentación (ESPEL)

Ficheros en este ítem:
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AA-ESPEL-ENI-0503.pdfARTÍCULO ACADÉMICO2,06 MBAdobe PDFVisualizar/Abrir
ESPEL-ENI-0503-P.pdfPRESENTACIÓN2,77 MBAdobe PDFVisualizar/Abrir


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