Neural network prediction model for the particulate matter (PM2.5) on the US-Mexico border in El Paso (Texas) and Ciudad Juárez (Chihuahua)

  1. Ordieres, J.B. 3
  2. Vergara, E.P. 3
  3. Capuz, R.S. 2
  4. Salazar, R.E. 1
  1. 1 Instituto Tecnológico de Mexicali
    info

    Instituto Tecnológico de Mexicali

    Mexicali, México

    ROR https://ror.org/03jfd4440

  2. 2 Universidad Politécnica de Valencia
    info

    Universidad Politécnica de Valencia

    Valencia, España

    ROR https://ror.org/01460j859

  3. 3 Universidad de La Rioja
    info

    Universidad de La Rioja

    Logroño, España

    ROR https://ror.org/0553yr311

Revista:
Environmental Modelling & Software

ISSN: 1364-8152

Año de publicación: 2005

Volumen: 20

Número: 5

Páginas: 547-559

Tipo: Artículo

DOI: 10.1016/J.ENVSOFT.2004.03.010 SCOPUS: 2-s2.0-9944223325 WoS: WOS:000226966600007 GOOGLE SCHOLAR

Otras publicaciones en: Environmental Modelling & Software

Repositorio institucional: lock_openAcceso abierto Editor

Resumen

The daily average PM 2.5 concentration forecast is a leading component nowadays in air quality research, which is necessary to perform in order to assess the impact of air on the health and welfare of every living being. The present work is aimed at analyzing and benchmarking a neural-network approach to the prediction of average PM 2.5 concentrations. The model thus obtained will be indispensable, as a control tool, for the purpose of preventing dangerous situations that may arise. To this end we have obtained data and measurements based on samples taken during the early hours of the day. Results from three different topologies of neural networks were compared so as to identify their potential uses, or rather, their strengths and weaknesses: Multilayer Perceptron (MLP), Radial Basis Function (RBF) and Square Multilayer Perceptron (SMLP). Moreover, two classical models were built (a persistence model and a linear regression), so as to compare their results with the ones provided by the neural network models. The results clearly demonstrated that the neural approach not only outperformed the classical models but also showed fairly similar values among different topologies. Moreover, a differential behavior in terms of stability and length of the training phase emerged during testing as well. The RBF shows up to be the network with the shortest training times, combined with a greater stability during the prediction stage, thus characterizing this topology as an ideal solution for its use in environmental applications instead of the widely used and less effective MLP. © 2004 Elsevier Ltd. All rights reserved.