We derive a data-driven method for the approximation of the Koopman generator called gEDMD, which can be regarded as a straightforward extension of EDMD (extended dynamic mode decomposition). This approach is applicable to deterministic and stochastic dynamical systems. It can be used for computing eigenvalues, eigenfunctions, and modes of the generator and for system identification. In addition to learning the governing equations of deterministic systems, which then reduces to SINDy (sparse identification of nonlinear dynamics), it is possible to identify the drift and diffusion terms of stochastic differential equations from data. Moreover, we apply gEDMD to derive coarse-grained models of high-dimensional systems, and also to determine e...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
With the increasing complexity of modern industry processes, robotics, transportation, aerospace, po...
Ranging from natural phenomena such as biological and chemical systems to artificial technologies su...
The Koopman operator is a linear but infinite-dimensional operator that governs the evolution of sca...
Abstract. The Koopman operator is a linear but infinite dimensional opera-tor that governs the evolu...
We consider the application of Koopman theory to nonlinear partial differential equations and data-d...
Data-driven analysis has seen explosive growth with widespread availability of data and unprecedente...
Many dimensionality and model reduction techniques rely on estimating dominant eigenfunctions of ass...
Many dimensionality and model reduction techniques rely on estimating dominant eigenfunctions of ass...
Bernard O Koopman proposed an alternative view of dynamical systems based on linear operator theory,...
Data-driven schemes are in high demand, given the growing abundance and accessibility to large amoun...
Information about the behavior of dynamical systems can often be obtained by analyzing the eigenvalu...
A nonlinear dynamical system can be represented by an infinite-dimensional linear operator known as ...
Within this work, we investigate how data-driven numerical approximation methods of the Koopman oper...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
With the increasing complexity of modern industry processes, robotics, transportation, aerospace, po...
Ranging from natural phenomena such as biological and chemical systems to artificial technologies su...
The Koopman operator is a linear but infinite-dimensional operator that governs the evolution of sca...
Abstract. The Koopman operator is a linear but infinite dimensional opera-tor that governs the evolu...
We consider the application of Koopman theory to nonlinear partial differential equations and data-d...
Data-driven analysis has seen explosive growth with widespread availability of data and unprecedente...
Many dimensionality and model reduction techniques rely on estimating dominant eigenfunctions of ass...
Many dimensionality and model reduction techniques rely on estimating dominant eigenfunctions of ass...
Bernard O Koopman proposed an alternative view of dynamical systems based on linear operator theory,...
Data-driven schemes are in high demand, given the growing abundance and accessibility to large amoun...
Information about the behavior of dynamical systems can often be obtained by analyzing the eigenvalu...
A nonlinear dynamical system can be represented by an infinite-dimensional linear operator known as ...
Within this work, we investigate how data-driven numerical approximation methods of the Koopman oper...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
With the increasing complexity of modern industry processes, robotics, transportation, aerospace, po...
Ranging from natural phenomena such as biological and chemical systems to artificial technologies su...