Bidirectional convolutional LSTM for the prediction of nitrogen dioxide in the city of Madrid
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Otros documentos de la autoría: Iskandaryan, Ditsuhi; Ramos, Jose Francisco; Trilles, Sergio
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Bidirectional convolutional LSTM for the prediction of nitrogen dioxide in the city of MadridFecha de publicación
2022-06-01Editor
PLoSISSN
1932-6203Cita bibliográfica
Iskandaryan D, Ramos F, Trilles S (2022) Bidirectional convolutional LSTM for the prediction of nitrogen dioxide in the city of Madrid. PLoS ONE 17(6)Tipo de documento
info:eu-repo/semantics/articleVersión
info:eu-repo/semantics/publishedVersionPalabras clave / Materias
Resumen
Nitrogen dioxide is one of the pollutants with the most significant health effects. Advanced information on its concentration in the air can help to monitor and control further consequences more effectively, while ... [+]
Nitrogen dioxide is one of the pollutants with the most significant health effects. Advanced information on its concentration in the air can help to monitor and control further consequences more effectively, while also making it easier to apply preventive and mitigating measures. Machine learning technologies with available methods and capabilities, combined with the geospatial dimension, can perform predictive analyses with higher accuracy and, as a result, can serve as a supportive tool for productive management. One of the most advanced machine learning algorithms, Bidirectional convolutional LSTM, is being used in ongoing work to predict the concentration of nitrogen dioxide. The model has been validated to perform more accurate spatiotemporal analysis based on the integration of temporal and geospatial factors. The analysis was carried out according to two scenarios developed on the basis of selected features using data from the city of Madrid for the periods January-June 2019 and January-June 2020. Evaluation of the model’s performance was conducted using the Root Mean Square Error and the Mean Absolute Error which emphasises the superiority of the proposed model over the reference models. In addition, the significance of a feature selection technique providing improved accuracy was underlined. In terms of execution time, due to the complexity of the Bidirectional convolutional LSTM architecture, convergence and generalisation of the data took longer, resulting in the superiority of the reference models. [-]
Publicado en
PLoS ONE 17(6) (2022)Entidad financiadora
Universitat Jaume I | Ministerio de Ciencia e Innovación (MICI)
Código del proyecto o subvención
PREDOC/2018/61 | IJC2018-035017-I
Título del proyecto o subvención
Juan de la Cierva---Incorporación postdoctoral programme
Derechos de acceso
info:eu-repo/semantics/openAccess
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