Title of article :
Locating and quantifying gas emission sources using remotely obtained concentration data
Author/Authors :
Hirst، نويسنده , , Bill and Jonathan، نويسنده , , Philip and Gonzلlez del Cueto، نويسنده , , Fernando and Randell، نويسنده , , David and Kosut، نويسنده , , Oliver، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
We describe a method for detecting, locating and quantifying sources of gas emissions to the atmosphere using remotely obtained gas concentration data; the method is applicable to gases of environmental concern. We demonstrate its performance using methane data collected from aircraft. Atmospheric point concentration measurements are modelled as the sum of a spatially and temporally smooth atmospheric background concentration, augmented by concentrations due to local sources. We model source emission rates with a Gaussian mixture model and use a Markov random field to represent the atmospheric background concentration component of the measurements. A Gaussian plume atmospheric eddy dispersion model represents gas dispersion between sources and measurement locations. Initial point estimates of background concentrations and source emission rates are obtained using mixed ℓ2 − ℓ1 optimisation over a discretised grid of potential source locations. Subsequent reversible jump Markov chain Monte Carlo inference provides estimated values and uncertainties for the number, emission rates and locations of sources unconstrained by a grid. Source area, atmospheric background concentrations and other model parameters, including plume model spreading and Lagrangian turbulence time scale, are also estimated. We investigate the performance of the approach first using a synthetic problem, then apply the method to real airborne data from a 1600 km2 area containing two landfills, then a 225 km2 area containing a gas flare stack.
Keywords :
Remote sensing , Gaseous emissions , Atmospheric background gas , Random field modelling , Bayesian inversion , Reversible jump MCMC , Gaussian Mixture Model
Journal title :
Atmospheric Environment
Journal title :
Atmospheric Environment