Adaptive nonlinear state-space modelling for the prediction of daily mean PM"1"0 concentrations [An article from: Environmental Modelling and Software]
Book Details
Author(s)A. Zolghadri, F. Cazaurang
PublisherElsevier
ISBN / ASINB000RR95KC
ISBN-13978B000RR95K0
AvailabilityAvailable for download now
MarketplaceUnited States 🇺🇸
Description
This digital document is a journal article from Environmental Modelling and Software, published by Elsevier in 2006. The article is delivered in HTML format and is available in your Amazon.com Media Library immediately after purchase. You can view it with any web browser.
Description:
An adaptive nonlinear state space-based modelling system has been designed to predict daily mean concentrations of PM"1"0 for Bordeaux metropolitan area. The nonlinear model structure is based on empirical relationships between the measured PM"1"0 and other primary pollutants and meteorological variables. An Extended Kalman filter algorithm is used to estimate 1-day ahead prediction of the extended state, containing model parameters and daily mean PM"1"0. A key characteristic of such a system is that its behaviour can be adapted to the short-term changes of air pollution and consequently the model can handle the time-evolving nature of the phenomena and does not need frequent adjustments. The method is applied to data from a monitoring site in Bordeaux (south France). Experimental results show that the model accurately predicts daily mean PM"1"0. The application of the Extended Kalman filter explains about 70% of the variance with an absolute mean error less than 4.5@mg/m^3. The approximate index of agreement value for the period covered is 0.90.
Description:
An adaptive nonlinear state space-based modelling system has been designed to predict daily mean concentrations of PM"1"0 for Bordeaux metropolitan area. The nonlinear model structure is based on empirical relationships between the measured PM"1"0 and other primary pollutants and meteorological variables. An Extended Kalman filter algorithm is used to estimate 1-day ahead prediction of the extended state, containing model parameters and daily mean PM"1"0. A key characteristic of such a system is that its behaviour can be adapted to the short-term changes of air pollution and consequently the model can handle the time-evolving nature of the phenomena and does not need frequent adjustments. The method is applied to data from a monitoring site in Bordeaux (south France). Experimental results show that the model accurately predicts daily mean PM"1"0. The application of the Extended Kalman filter explains about 70% of the variance with an absolute mean error less than 4.5@mg/m^3. The approximate index of agreement value for the period covered is 0.90.
