A Data-Driven Approximation of the Koopman Operator: Extending Dynamic Mode Decomposition
About
The Koopman operator is a linear but infinite dimensional operator that governs the evolution of scalar observables defined on the state space of an autonomous dynamical system, and is a powerful tool for the analysis and decomposition of nonlinear dynamical systems. In this manuscript, we present a data driven method for approximating the leading eigenvalues, eigenfunctions, and modes of the Koopman operator. The method requires a data set of snapshot pairs and a dictionary of scalar observables, but does not require explicit governing equations or interaction with a "black box" integrator. We will show that this approach is, in effect, an extension of Dynamic Mode Decomposition (DMD), which has been used to approximate the Koopman eigenvalues and modes. Furthermore, if the data provided to the method are generated by a Markov process instead of a deterministic dynamical system, the algorithm approximates the eigenfunctions of the Kolmogorov backward equation, which could be considered as the "stochastic Koopman operator" [1]. Finally, four illustrative examples are presented: two that highlight the quantitative performance of the method when presented with either deterministic or stochastic data, and two that show potential applications of the Koopman eigenfunctions.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Longitudinal cognitive score prediction | ADNI (5-fold cross-val) | Pearson r0.3706 | 9 | |
| Closed-Loop End-Effector Tracking | Trunk Robot Trajectories Circle 5 cm | Average RMSE (mm)20.4 | 3 | |
| Closed-Loop End-Effector Tracking | Trunk Robot Trajectories Figure-eight | Average RMSE (mm)26.72 | 3 | |
| Open-loop prediction | Tendon-driven continuum trunk robot 150 random segments | RMSE7.3 | 3 |