Issue 3, 2010

Inference of emission rates from multiple sources using Bayesian probability theory

Abstract

The determination of atmospheric emission rates from multiple sources using inversion (regularized least-squares or best-fit technique) is known to be very susceptible to measurement and model errors in the problem, rendering the solution unusable. In this paper, a new perspective is offered for this problem: namely, it is argued that the problem should be addressed as one of inference rather than inversion. Towards this objective, Bayesian probability theory is used to estimate the emission rates from multiple sources. The posterior probability distribution for the emission rates is derived, accounting fully for the measurement errors in the concentration data and the model errors in the dispersion model used to interpret the data. The Bayesian inferential methodology for emission rate recovery is validated against real dispersion data, obtained from a field experiment involving various source–sensor geometries (scenarios) consisting of four synthetic area sources and eight concentration sensors. The recovery of discrete emission rates from three different scenarios obtained using Bayesian inference and singular value decomposition inversion are compared and contrasted.

Graphical abstract: Inference of emission rates from multiple sources using Bayesian probability theory

Article information

Article type
Paper
Submitted
17 Aug 2009
Accepted
27 Oct 2009
First published
01 Dec 2009

J. Environ. Monit., 2010,12, 622-634

Inference of emission rates from multiple sources using Bayesian probability theory

E. Yee and T. K. Flesch, J. Environ. Monit., 2010, 12, 622 DOI: 10.1039/B916954G

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