Continuation of probability density functions using a generalized Lyapunov approach

Publication date

2017-05-01

Authors

Baars, SvenISNI 0000000503362653
Viebahn, J.P.ISNI 0000000443796731
Mulder, Thomas Erik MulderISNI 000000049291313X
Kuehn, C.
Wubs, F. W.
Dijkstra, HenkISNI 0000000023267948

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

taverne

Abstract

Techniques from numerical bifurcation theory are very useful to study transitions between steady fluid flow patterns and the instabilities involved. Here, we provide computational methodology to use parameter continuation in determining probability density functions of systems of stochastic partial differential equations near fixed points, under a small noise approximation. Key innovation is the efficient solution of a generalized Lyapunov equation using an iterative method involving low-rank approximations. We apply and illustrate the capabilities of the method using a problem in physical oceanography, i.e. the occurrence of multiple steady states of the Atlantic Ocean circulation.

Keywords

Continuation of fixed points, Lyapunov equation, Probability density function, Stochastic dynamical systems, Taverne, Physics and Astronomy (miscellaneous), Computer Science Applications

Citation

Baars, S, Viebahn, J P, Mulder, T E, Kuehn, C, Wubs, F W & Dijkstra, H A 2017, 'Continuation of probability density functions using a generalized Lyapunov approach', Journal of Computational Physics, vol. 336, pp. 627-643. https://doi.org/10.1016/j.jcp.2017.02.021