Title of article :
Neural network model for the prediction of PM10 daily concentrations in two sites in the Western Mediterranean Original Research Article
Author/Authors :
Gianluigi de Gennaro، نويسنده , , Livia Trizio، نويسنده , , Alessia Di Gilio، نويسنده , , Jorge Pey، نويسنده , , Noemi Pérez، نويسنده , , Michael Cusack، نويسنده , , Andrés Alastuey، نويسنده , , XAVIER QUEROL، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2013
Abstract :
An artificial neural network (ANN) was developed and tested to forecast PM10 daily concentration in two contrasted environments in NE Spain, a regional background site (Montseny), and an urban background site (Barcelona-CSIC), which was highly influenced by vehicular emissions. In order to predict 24-h average PM10 concentrations, the artificial neural network previously developed by was improved by using hourly PM concentrations and deterministic factors such as a Saharan dust alert. In particular, the model input data for prediction were the hourly PM10 concentrations 1-day in advance, local meteorological data and information about air masses origin. The forecasted performance indexes for both sites were calculated and they showed better results for the regional background site in Montseny (R2 = 0.86, SI = 0.75) than for urban site in Barcelona (R2 = 0.73, SI = 0.58), influenced by local and sometimes unexpected sources. Moreover, a sensitivity analysis conducted to understand the importance of the different variables included among the input data, showed that local meteorology and air masses origin are key factors in the model forecasts. This result explains the reason for the improvement of ANNʹs forecasting performance at the Montseny site with respect to the Barcelona site. Moreover, the artificial neural network developed in this work could prove useful to predict PM10 concentrations, especially, at regional background sites such as those on the Mediterranean Basin which are primarily affected by long-range transports. Hence, the artificial neural network presented here could be a powerful tool for obtaining real time information on air quality status and could aid stakeholders in their development of cost-effective control strategies.
Keywords :
PM10 forecasting , Regional background , Artificial neural networks , Urban background , Air pollution , Sources
Journal title :
Science of the Total Environment
Journal title :
Science of the Total Environment