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Fast data-driven model reduction for nonlinear dynamical systems

Joar Axås, Mattia Cenedese, George Haller

2022Nonlinear Dynamics46 citationsDOIOpen Access PDF

Abstract

Abstract We present a fast method for nonlinear data-driven model reduction of dynamical systems onto their slowest nonresonant spectral submanifolds (SSMs). While the recently proposed reduced-order modeling method SSMLearn uses implicit optimization to fit a spectral submanifold to data and reduce the dynamics to a normal form, here, we reformulate these tasks as explicit problems under certain simplifying assumptions. In addition, we provide a novel method for timelag selection when delay-embedding signals from multimodal systems. We show that our alternative approach to data-driven SSM construction yields accurate and sparse rigorous models for essentially nonlinear (or non-linearizable ) dynamics on both numerical and experimental datasets. Aside from a major reduction in complexity, our new method allows an increase in the training data dimensionality by several orders of magnitude. This promises to extend data-driven, SSM-based modeling to problems with hundreds of thousands of degrees of freedom.

Topics & Concepts

Reduction (mathematics)Dimensionality reductionNonlinear systemEmbeddingModel order reductionDynamical systems theoryDegrees of freedom (physics and chemistry)Computer scienceSystem dynamicsAlgorithmApplied mathematicsMathematicsArtificial intelligenceProjection (relational algebra)PhysicsGeometryQuantum mechanicsModel Reduction and Neural NetworksStructural Health Monitoring TechniquesProbabilistic and Robust Engineering Design
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