Journal article

Comparison of the genetic algorithm and incremental optimisation routines for a Bayesian inverse modelling based network design

A Nickless, PJ Rayner, B Erni, RJ Scholes

Inverse Problems | IOP PUBLISHING LTD | Published : 2018

Abstract

The design of an optimal network of atmospheric monitoring stations for the observation of carbon dioxide (CO2) concentrations can be obtained by applying an optimisation algorithm to a cost function based on minimising posterior uncertainty in the CO2 fluxes obtained from a Bayesian inverse modelling solution. Two candidate optimisation methods assessed were the evolutionary algorithm: the genetic algorithm (GA), and the deterministic algorithm: the incremental optimisation (IO) routine. This paper assessed the ability of the IO routine in comparison to the more computationally demanding GA routine to optimise the placement of a five-member network of CO2 monitoring sites located in South A..

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University of Melbourne Researchers