Publication | Open Access
Nonlinear Continuous Data Assimilation
24
Citations
32
References
2017
Year
Numerical AnalysisMachine PrecisionSuper-exponential ConvergenceNonlinear System IdentificationEngineeringData ScienceContinuous Data AssimilationLinear Aot AlgorithmInverse ProblemsNonlinear ProcessNonlinear EquationNonlinear Signal ProcessingApproximation TheoryData Assimilation
We introduce three new nonlinear continuous data assimilation algorithms. These models are compared with the linear continuous data assimilation algorithm introduced by Azouani, Olson, and Titi (AOT). As a proof-of-concept for these models, we computationally investigate these algorithms in the context of the 1D Kuramoto-Sivashinsky equation. We observe that the nonlinear models experience super-exponential convergence in time, and converge to machine precision significantly faster than the linear AOT algorithm in our tests.
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