Emulating complex dynamical simulators with random Fourier features
Hossein Mohammadi, Peter Challenor, Marc Goodfellow

TL;DR
This paper introduces a Gaussian process-based approach using random Fourier features to efficiently emulate complex dynamical simulators, capturing system evolution and uncertainty with promising predictive accuracy.
Contribution
The paper presents a novel method combining GPs and RFF to efficiently emulate dynamical systems, overcoming computational challenges of traditional GP sampling.
Findings
Effective emulation of Lorenz and van der Pol models
Accurate uncertainty quantification in predictions
Computational efficiency achieved with RFF
Abstract
A Gaussian process (GP)-based methodology is proposed to emulate complex dynamical computer models (or simulators). The method relies on emulating the numerical flow map of the system over an initial (short) time step, where the flow map is a function that describes the evolution of the system from an initial condition to a subsequent value at the next time step. This yields a probabilistic distribution over the entire flow map function, with each draw offering an approximation to the flow map. The model output times series is then predicted (under the Markov assumption) by drawing a sample from the emulated flow map (i.e., its posterior distribution) and using it to iterate from the initial condition ahead in time. Repeating this procedure with multiple such draws creates a distribution over the time series. The mean and variance of this distribution at a specific time point serve as…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Simulation Techniques and Applications · Advanced Multi-Objective Optimization Algorithms
