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A perspective on regression and Bayesian approaches for system identification of pattern formation dynamics 被引量:2

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摘要 We present two approaches to system identification, i.e. the identification of partial differentialequations (PDEs) from measurement data. The first is a regression-based variational systemidentification procedure that is advantageous in not requiring repeated forward model solves andhas good scalability to large number of differential operators. However it has strict data typerequirements needing the ability to directly represent the operators through the available data.The second is a Bayesian inference framework highly valuable for providing uncertaintyquantification, and flexible for accommodating sparse and noisy data that may also be indirectquantities of interest. However, it also requires repeated forward solutions of the PDE modelswhich is expensive and hinders scalability. We provide illustrations of results on a model problemfor pattern formation dynamics, and discuss merits of the presented methods.
出处 《Theoretical & Applied Mechanics Letters》 CAS CSCD 2020年第3期188-194,共7页 力学快报(英文版)
基金 We acknowledge the support of Defense Advanced Research Projects Agency(Grant HR00111990S2) Toyota Research Institute(Award#849910).
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