In this study, we investigate how to use sample data, generated by a fully resolved multiscale model, to construct stochastic representations of unresolved scales in reduced models. We explore three methods to model these stochastic representations. They employ empirical distributions, conditional Markov chains, and conditioned Ornstein–Uhlenbeck processes, respectively. The Kac–Zwanzig heat bath model is used as a prototype model to illustrate the methods. We demonstrate that all tested strategies reproduce the dynamics of the resolved model variables accurately. Furthermore, we show that the computational cost of the reduced model is several orders of magnitude lower than that of the fully resolved model
In this paper, we report on the development of a methodology for stochastic parameterization of conv...
In this paper we propose a stochastic model reduction procedure for deterministic equations from geo...
In this chapter we review stochastic modelling methods in climate science. First we provide a concep...
In this study, we investigate how to use sample data, generated by a fully resolved multiscale model...
In simulations of multiscale dynamical systems, not all relevant processes can be resolved explicitl...
Turbulent fluid flows in atmospheric and oceanic sciences are characterized by strongly transient fe...
We discuss applications of a recently developed method for model reduction based on linear response ...
The large-scale ocean circulation is strongly influenced by mesoscale turbulent eddies. Mesoscale oc...
Although the governing equations of many systems, when derived from first principles, may be viewed ...
Multiscale dynamics are frequently present in real-world processes, such as the atmosphere-ocean and...
AbstractThis paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure...
Many problems in climate modelling are characterized by their chaotic nature and multiple time scale...
In this study we investigate a data-driven stochastic methodology to parametrize small-scale feature...
A new framework is proposed for the evaluation of stochastic subgrid-scale parameterizations in the...
This paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure models ...
In this paper, we report on the development of a methodology for stochastic parameterization of conv...
In this paper we propose a stochastic model reduction procedure for deterministic equations from geo...
In this chapter we review stochastic modelling methods in climate science. First we provide a concep...
In this study, we investigate how to use sample data, generated by a fully resolved multiscale model...
In simulations of multiscale dynamical systems, not all relevant processes can be resolved explicitl...
Turbulent fluid flows in atmospheric and oceanic sciences are characterized by strongly transient fe...
We discuss applications of a recently developed method for model reduction based on linear response ...
The large-scale ocean circulation is strongly influenced by mesoscale turbulent eddies. Mesoscale oc...
Although the governing equations of many systems, when derived from first principles, may be viewed ...
Multiscale dynamics are frequently present in real-world processes, such as the atmosphere-ocean and...
AbstractThis paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure...
Many problems in climate modelling are characterized by their chaotic nature and multiple time scale...
In this study we investigate a data-driven stochastic methodology to parametrize small-scale feature...
A new framework is proposed for the evaluation of stochastic subgrid-scale parameterizations in the...
This paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure models ...
In this paper, we report on the development of a methodology for stochastic parameterization of conv...
In this paper we propose a stochastic model reduction procedure for deterministic equations from geo...
In this chapter we review stochastic modelling methods in climate science. First we provide a concep...