Title of article :
Source estimation methods for atmospheric dispersion
Author/Authors :
K. Shankar Rao ، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
Both forward and backward transport modeling methods are being developed for characterization of sources in
atmospheric releases of toxic agents. Forward modeling methods, which describe the atmospheric transport from sources
to receptors, use forward-running transport and dispersion models or computational fluid dynamics models which are run
many times, and the resulting dispersion field is compared to observations from multiple sensors. Forward modeling
methods include Bayesian updating and inference schemes using stochastic Monte Carlo or Markov Chain Monte Carlo
sampling techniques. Backward or inverse modeling methods use only one model run in the reverse direction from the
receptors to estimate the upwind sources. Inverse modeling methods include adjoint and tangent linear models, Kalman
filters, and variational data assimilation, among others.
This survey paper discusses these source estimation methods and lists the key references. The need for assessing
uncertainties in the characterization of sources using atmospheric transport and dispersion models is emphasized.
Published by Elsevier Ltd
Keywords :
Atmospheric transport and dispersion models , Bayesian updating and inference methods , Inverse modeling , variational data assimilation , Adjoint andtangent linear models , Kalman filtering
Journal title :
Atmospheric Environment
Journal title :
Atmospheric Environment