Optimal prediction methods compensate for a lack of resolution in the numerical solution of time-dependent differential equations through the use of prior statistical information. We present a new derivation of the basic methodology, show that field-theoretical perturbation theory provides a useful device for dealing with quasi-linear problems, and provide a nonlinear example that illuminates the difference between a pseudo-spectral method and an optimal prediction method with Fourier kernels. Along the way, we explain the differences and similarities between optimal prediction, the representer method in data assimilation, and duality methods for finding weak solutions. We also discuss the conditions under which a simple implementation of t...
Many inverse problems for differential equations can be formulated as optimal control problems. It i...
Many inverse problems for differential equations can be formulated as optimal control problems. It ...
The Wiener–Kolmogorov principle of minimizing the mean square estimation error is discussed in the f...
Abstract. Optimal prediction is a computational method for systems that cannot be properly resolved,...
Optimal prediction is a general system reduction technique for large sets of differential equations....
The paper is concerned with system reduction by statistical methods and, in par-ticular, by the opti...
We consider some large systems of differential equations that have been introduced as model many-bod...
Optimal prediction (OP) methods compensate for a lack of resolution in the numerical solution of com...
We consider the problem of predicting the long-term evolution of a large nonlinear system, when the ...
We apply the non-Markovian Optimal Prediction method to the Hald system of two coupled oscillators t...
The research is devoted to analysis of optimal control problems arising in models of economic growth...
The paper deals with analysis of optimal control problems arising in models of economic growth. The ...
International audiencePredicting the evolution of geophysical fluids (ocean or atmosphere) has a gre...
Transferring information from data to models is crucial to many scientific disciplines. Typically, t...
Transferring information from data to models is crucial to many scientific disciplines. Typically, t...
Many inverse problems for differential equations can be formulated as optimal control problems. It i...
Many inverse problems for differential equations can be formulated as optimal control problems. It ...
The Wiener–Kolmogorov principle of minimizing the mean square estimation error is discussed in the f...
Abstract. Optimal prediction is a computational method for systems that cannot be properly resolved,...
Optimal prediction is a general system reduction technique for large sets of differential equations....
The paper is concerned with system reduction by statistical methods and, in par-ticular, by the opti...
We consider some large systems of differential equations that have been introduced as model many-bod...
Optimal prediction (OP) methods compensate for a lack of resolution in the numerical solution of com...
We consider the problem of predicting the long-term evolution of a large nonlinear system, when the ...
We apply the non-Markovian Optimal Prediction method to the Hald system of two coupled oscillators t...
The research is devoted to analysis of optimal control problems arising in models of economic growth...
The paper deals with analysis of optimal control problems arising in models of economic growth. The ...
International audiencePredicting the evolution of geophysical fluids (ocean or atmosphere) has a gre...
Transferring information from data to models is crucial to many scientific disciplines. Typically, t...
Transferring information from data to models is crucial to many scientific disciplines. Typically, t...
Many inverse problems for differential equations can be formulated as optimal control problems. It i...
Many inverse problems for differential equations can be formulated as optimal control problems. It ...
The Wiener–Kolmogorov principle of minimizing the mean square estimation error is discussed in the f...