Nonlinear Drift in Feynman-Kac Theory: Preserving Early Probabilistic Insights
Daniel Yaacoub (IP, IP, IP, IP), St\'ephane Blanco (LAPLACE), Jean-Fran\c{c}ois Cornet (IP, IP, IP), J\'er\'emi Dauchet (IP, IP, IP, INP Clermont Auvergne, UCA), Richard Fournier (LAPLACE), Thomas Vourc'h (IP, IP, INP Clermont Auvergne, UCA)

TL;DR
This paper extends Feynman-Kac theory to nonlinear drift dynamics, enabling probabilistic representations of complex flows and bridging gaps between deterministic and stochastic models in confined geometries.
Contribution
It introduces a rigorous extension of Feynman-Kac theory to nonlinear systems with drift, providing new propagator representations for complex flow analysis.
Findings
Extended Feynman-Kac to nonlinear drift systems
Developed novel propagator representations
Bridged probabilistic and deterministic flow models
Abstract
In 1905, Einstein's theory of Brownian motion supported the molecular basis of the diffusion equation and introduced two complementary viewpoints: a deterministic field description and a probabilistic formulation based on stochastic particle ensembles. The consequences were far-reaching in the development of key concepts of modern physics such as wave-particle duality in quantum mechanics. In the 1940s, Feynman and Kac advanced this framework by casting path integrals within measure theory, defining solutions as mathematical expectations and extending the method to a broad class of differential operators. Despite its influence, applying this deterministic-probabilistic correspondence to flows within confined geometries has remained elusive: how can one recover deterministic streamlines from particles advected by a random velocity that never matches the true flow field? Elegant…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Complex Systems and Time Series Analysis · Statistical Mechanics and Entropy
