AbstractThis paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure models by using a multivariate time series of partial observations from a large-dimensional system; and (ii) comparing these closure models with the optimal closures predicted by the Mori–Zwanzig (MZ) formalism of statistical physics. Multilayer stochastic models (MSMs) are introduced as both a generalization and a time-continuous limit of existing multilevel, regression-based approaches to closure in a data-driven setting; these approaches include empirical model reduction (EMR), as well as more recent multi-layer modeling. It is shown that the multilayer structure of MSMs can provide a natural Markov approximation to the generalized Langev...
Modeling complex systems with large numbers of degrees of freedom has become a grand challenge over ...
Couplings of microscopic stochastic models to deterministic macroscopic ordinary and partial differe...
The objective of this work is to evaluate the potential of reduced order models to reproduce the ext...
This paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure models ...
AbstractThis paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure...
Finding the dynamical law of observable quantities lies at the core of physics. Within the particula...
In this study, we investigate how to use sample data, generated by a fully resolved multiscale model...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
In this chapter we review stochastic modelling methods in climate science. First we provide a concep...
In this chapter we review stochastic modelling methods in climate science. First we provide a concep...
We discuss applications of a recently developed method for model reduction based on linear response ...
Couplings of microscopic stochastic models to deterministic macroscopic ordinary and partial differe...
Providing efficient and accurate parameterizations for model reduction is a key goal in many areas o...
Complex dynamical systems are used for predictions in many domains. Because of computational costs, ...
Complex dynamical systems are used for predictions in many domains. Because of computational costs, ...
Modeling complex systems with large numbers of degrees of freedom has become a grand challenge over ...
Couplings of microscopic stochastic models to deterministic macroscopic ordinary and partial differe...
The objective of this work is to evaluate the potential of reduced order models to reproduce the ext...
This paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure models ...
AbstractThis paper has two interrelated foci: (i) obtaining stable and efficient data-driven closure...
Finding the dynamical law of observable quantities lies at the core of physics. Within the particula...
In this study, we investigate how to use sample data, generated by a fully resolved multiscale model...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
In this chapter we review stochastic modelling methods in climate science. First we provide a concep...
In this chapter we review stochastic modelling methods in climate science. First we provide a concep...
We discuss applications of a recently developed method for model reduction based on linear response ...
Couplings of microscopic stochastic models to deterministic macroscopic ordinary and partial differe...
Providing efficient and accurate parameterizations for model reduction is a key goal in many areas o...
Complex dynamical systems are used for predictions in many domains. Because of computational costs, ...
Complex dynamical systems are used for predictions in many domains. Because of computational costs, ...
Modeling complex systems with large numbers of degrees of freedom has become a grand challenge over ...
Couplings of microscopic stochastic models to deterministic macroscopic ordinary and partial differe...
The objective of this work is to evaluate the potential of reduced order models to reproduce the ext...