Algorithms Air Quality Estimation: A Comparative Study of Stochastic and Heuristic Predictive Models
Fecha
2021Autor
Sánchez-Pozo N.N.
Trilles-Oliver S.
Solé-Ribalta A.
Lorente-Leyva L.L.
Mayorca-Torres D.
Peluffo-Ordóñez D.H.
Metadatos
Mostrar el registro completo del ítemResumen
This paper presents a comparative analysis of predictive models applied to air quality estimation. Currently, among other global issues, there is a high concern about air pollution, for this reason, there are several air quality indicators, with carbon monoxide (CO), sulfur dioxide (SO2), nitrogen dioxide (NO2) and ozone (O3) being the main ones. When the concentration level of an indicator exceeds an established air quality safety threshold, it is considered harmful to human health, therefore, in cities like London, there are monitoring systems for air pollutants. This study aims to compare the efficiency of stochastic and heuristic predictive models for forecasting ozone (O3) concentration to estimate London's air quality by analyzing an open dataset retrieved from the London Datastore portal. Models based on data analysis have been widely used in air quality forecasting. This paper develops four predictive models (autoregressive integrated moving average - ARIMA, support vector regression - SVR, neural networks (specifically, long-short term memory - LSTM) and Facebook Prophet). Experimentally, ARIMA models and LSTM are proved to reach the highest accuracy in predicting the concentration of air pollutants among the considered models. As a result, the comparative analysis of the loss function (root-mean-square error) reveled that ARIMA and LSTM are the most suitable, accomplishing a low error rate of 0.18 and 0.20, respectively. © 2021, Springer Nature Switzerland AG.
Colecciones
- Artículos Scopus [165]
Descripción
UNIVERSIDAD MARIANA
- Calle 18 No. 34-104 Pasto (N)
- (057) + 7244460 - Cel 3127306850
- informacion@umariana.edu.co
- NIT: 800092198-5
- Código SNIES: 1720
- Res. 1362 del 3 de febrero de 1983
NORMATIVIDAD INSTITUCIONAL
PROGRAMAS DE ESTUDIO
Para la recepción de notificaciones judiciales se encuentra habilitada la cuenta de correo electronico notificacionesjudiciales@umariana.edu.co
CONVOCATORIASINSCRIPCIÓN DE HOJAS DE VIDAGESTIÓN DEL TALENTO HUMANO
POLÍTICA DE PROTECCIÓN DE DATOS PERSONALESCONDICIONES DE USO U TÉRMINOS LEGALESRÉGIMEN TRIBUTARIO ESPECIAL 2021
Copyright Universidad Mariana
Tecnología implementada por