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Addressing nonlinearities in Monte Carlo.

Jérémi DauchetJean-Jacques BezianStéphane BlancoCyril CaliotJulien CharonChristophe CoustetMouna El HafiVincent EymetOlivier FargesVincent ForestRichard FournierMathieu GaltierJacques GautraisAnaïs KhuongLionel PelissierBenjamin PiaudMaxime RogerGuillaume TerréeSebastian Weitz
Published in: Scientific reports (2018)
Monte Carlo is famous for accepting model extensions and model refinements up to infinite dimension. However, this powerful incremental design is based on a premise which has severely limited its application so far: a state-variable can only be recursively defined as a function of underlying state-variables if this function is linear. Here we show that this premise can be alleviated by projecting nonlinearities onto a polynomial basis and increasing the configuration space dimension. Considering phytoplankton growth in light-limited environments, radiative transfer in planetary atmospheres, electromagnetic scattering by particles, and concentrated solar power plant production, we prove the real-world usability of this advance in four test cases which were previously regarded as impracticable using Monte Carlo approaches. We also illustrate an outstanding feature of our method when applied to acute problems with interacting particles: handling rare events is now straightforward. Overall, our extension preserves the features that made the method popular: addressing nonlinearities does not compromise on model refinement or system complexity, and convergence rates remain independent of dimension.
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