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Conditional bivariate probability function for source identification
Affiliation:1. Department of Chemical and Environmental Engineering, University of the Basque Country, School of Engineering of Bilbao, Alameda Urquijo, 48013 Bilbao, Spain;2. King''s College London, Environmental Research Group, Franklin Wilkins Building, 150 Stamford Street, London SE1 9NH, UK
Abstract:In this paper a new receptor modelling method is developed to identify and characterise emission sources. The method is an extension of the commonly used conditional probability function (CPF). The CPF approach is extended to the bivariate case to produce a conditional bivariate probability function (CBPF) plot using wind speed as a third variable plotted on the radial axis. The bivariate case provides more information on the type of sources being identified by providing important dispersion characteristic information. By considering intervals of concentration, considerably more source information can be revealed that is absent in the basic CPF or CBPF. We demonstrate the application of the approach by considering an area of high source complexity, where many new sources can be identified and characterised compared with currently used techniques. Dispersion model simulations are undertaken to verify the approach. The technique has been made available through the openair R package.
Keywords:Receptor model  Source identification  Air quality data  Dispersion model  Air pollution  Openair
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