Short-term spatio-temporal forecasting of air temperatures using deep graph convolutional neural networks
Fecha
2023-05-01Estado
info:eu-repo/semantics/publishedVersionMetadatos
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Time series forecasting of meteorological variables, such as the hourly air temperature, has multiple benefits for industry, agriculture, and the environment. Due to the high accuracy required for the associated short-term predictions, traditional methods cannot satisfy the requirements and generally ignore spatial dependencies. This paper proposes a deep Graph Convolutional Long Short Term Memory Neural Network (GCN-LSTM) technique to tackle the time series prediction problem in air temperature forecasting. In the proposed methodology, temporal and spatial-based imputation approaches have been employed to recover the weather variables missing values. The proposed approach is validated using real, open weather data from 37 meteorological stations in Spain. Performed analysis indicates that GCN-LSTM showed superior performance when compared with various state-of-the-art Deep Learning based models found in the literature, resulting in a more robust and computationally efficient model for forecasting air temperature in many meteorological stations simultaneously. Time series forecasting of meteorological variables, such as the hourly air temperature, has multiple benefits for industry, agriculture, and the environment. Due to the high accuracy required for the associated short-term predictions, traditional methods cannot satisfy the requirements and generally ignore spatial dependencies. This paper proposes a deep Graph Convolutional Long Short Term Memory Neural Network (GCN-LSTM) technique to tackle the time series prediction problem in air temperature forecasting. In the proposed methodology, temporal and spatial-based imputation approaches have been employed to recover the weather variables missing values. The proposed approach is validated using real, open weather data from 37 meteorological stations in Spain. Performed analysis indicates that GCN-LSTM showed superior performance when compared with various state-of-the-art Deep Learning based models found in the literature, resulting in a more robust and computationally efficient model for forecasting air temperature in many meteorological stations simultaneously.
Short-term spatio-temporal forecasting of air temperatures using deep graph convolutional neural networks
Tipo de Actividad
Artículos en revistasISSN
1436-3240Materias/ UNESCO
UNESCO::32 Medicina::3201 Ciencias clínicas::320199 Otras especialidades (Enfermería)UNESCO::32 Medicina::3201 Ciencias clínicas::320107 Geriatría
Materias/ categorías / ODS
Instituto de Investigación Tecnológica (IIT) - Innovación docente y Analytics (GIIDA)Palabras Clave
Air temperature forecasting; Short-term forecasting; Deep learning; Deep graph convolutional neural networks; Missing values imputationAir temperature forecasting; Short-term forecasting; Deep learning; Deep graph convolutional neural networks; Missing values imputation


