Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/61930
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dc.contributor.authorChen, X.en
dc.contributor.authorRoberts, A.en
dc.contributor.authorKevrekidis, I.en
dc.date.issued2011en
dc.identifier.citationANZIAM Journal, 2010; 52: C661-C677en
dc.identifier.issn1446-1811en
dc.identifier.issn1446-8735en
dc.identifier.urihttp://hdl.handle.net/2440/61930-
dc.descriptionThe 15th Biennial Computational Techniques and Applications Conference, held at the University of New South Wales, 28 November - 1 December 2010en
dc.description.abstractConsider the case when a microscale simulator is too expensive for long time simulations necessary to determine macroscale dynamics. Projective integration uses bursts of the microscale simulator, using microscale time steps, and computes an approximation to the system over a macroscale time step by extrapolation. Projective integration has the potential to be an effective method to compute the long time dynamic behaviour of multiscale systems. However, many multiscale systems are influenced by noise. Thus it is important to consider the projective integration of such systems. By the maximum likelihood estimation, we estimate a linear stochastic differential equation from short bursts of data. The analytic solution of the linear stochastic differential equation then estimates the solution over a macroscale time step. We explore how the noise affects the projective integration in different methods. Monte Carlo simulation suggests design parameters offering stability and accuracy for the algorithms. The algorithms developed here may be applied to compute the long time dynamic behaviour of multiscale systems with noise.en
dc.description.statementofresponsibilityXiaopeng Chen, Anthony J. Roberts and Ioannis Kevrekidisen
dc.description.urihttp://conferences.science.unsw.edu.au/CTAC2010/index.phpen
dc.language.isoenen
dc.publisherCambridge University Pressen
dc.rights© Austral. Mathematical Soc. 2011.en
dc.source.urihttp://journal.austms.org.au/ojs/index.php/ANZIAMJ/article/view/3764en
dc.subjectstochastic differential equations, stochastic process, projective integration, maximum likelihood estimationen
dc.titleProjective integration of expensive multiscale stochastic simulationen
dc.title.alternativeProjective integration of expensive stochastic processesen
dc.typeConference paperen
dc.contributor.conferenceBiennial Computational Techniques and Applications Conference (15th : 2010 : Sydney, N.S.W.)en
dc.publisher.placeUnited Kingdomen
pubs.publication-statusPublisheden
dc.identifier.orcidRoberts, A. [0000-0001-8930-1552]en
Appears in Collections:Aurora harvest
Mathematical Sciences publications

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