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Nonlinear data assimilation: towards a prediction of the solar cycle

Posted on:2014-10-04Degree:Ph.DType:Dissertation
University:Columbia UniversityCandidate:Svedin, AndreasFull Text:PDF
GTID:1450390005997935Subject:Applied Mathematics
Abstract/Summary:PDF Full Text Request
The solar cycle is the cyclic variation of solar activity, with a span of 9-14 years. The prediction of the solar cycle is an important and unsolved problem with implications for communications, aviation and other aspects of our high-tech society. Our interest is model-based prediction, and we present a self-consistent procedure for parameter estimation and model state estimation, even when only one of several model variables can be observed.;Data assimilation is the art of comparing, combining and transferring observed data into a mathematical model or computer simulation. We use the 3DVAR methodology, based on the notion of least squares, to present an implementation of a traditional data assimilation. Using the Shadowing Filter — a recently developed method for nonlinear data assimilation — we outline a path towards model based prediction of the solar cycle. To achieve this end we solve a number of methodological challenges related to unobserved variables. We also provide a new framework for interpretation that can guide future predictions of the Sun and other astrophysical objects.
Keywords/Search Tags:Prediction, Solar cycle, Data assimilation
PDF Full Text Request
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