We analyze the effect of additive fractional noise with Hurst parameter H>1/2 on fast-slow systems. Our strategy is based on sample paths estimates, similar to the approach by Berglund and Gentz in the Brownian motion case. Yet, the setting of fractional Brownian motion does not allow us to use the martingale methods from fast-slow systems with Brownian motion. We thoroughly investigate the case where the deterministic system permits a uniformly hyperbolic stable slow manifold. In this setting, we provide a neighborhood, tailored to the fast-slow structure of the system, that contains the process with high probability. We prove this assertion by providing exponential error estimates on the probability that the system leaves this neighborhoo...
We consider stochastic dynamical systems with multiple time scales. An intermediate reduced model is...
International audienceWe present an innovating sensitivity analysis for stochastic differential equa...
Our first result is a stochastic sewing lemma with quantitative estimates for mild incremental proce...
Impact of correlated noises on dynamical systems is investigated by considering Fokker-Planck type e...
International audienceThe use of diffusion models driven by fractional noise has become popular for ...
We prove a fractional averaging principle for interacting slow-fast systems. The mode of convergence...
We study fast / slow systems driven by a fractional Brownian motion B with Hurst parameter H∈(13,1]....
This book is devoted to a number of stochastic models that display scale invariance. It primarily fo...
We consider slow-fast systems of differential equations, in which both the slow and fast variables a...
In this paper we develop sensitivity analyses w.r.t. the long-range/memory noise parameter for solut...
We consider a system of d linear stochastic heat equations driven by an additive infinite-dimensiona...
Sensitivity analysis w.r.t. the long-range/memory noise parameter for probability distributions of f...
Two applications of the fractional Brownian motion will be presented. First, we study the time-regul...
AbstractWe consider slow–fast systems of differential equations, in which both the slow and fast var...
We consider sample path properties of the solution to the stochastic heat equation, in Rd or bounded...
We consider stochastic dynamical systems with multiple time scales. An intermediate reduced model is...
International audienceWe present an innovating sensitivity analysis for stochastic differential equa...
Our first result is a stochastic sewing lemma with quantitative estimates for mild incremental proce...
Impact of correlated noises on dynamical systems is investigated by considering Fokker-Planck type e...
International audienceThe use of diffusion models driven by fractional noise has become popular for ...
We prove a fractional averaging principle for interacting slow-fast systems. The mode of convergence...
We study fast / slow systems driven by a fractional Brownian motion B with Hurst parameter H∈(13,1]....
This book is devoted to a number of stochastic models that display scale invariance. It primarily fo...
We consider slow-fast systems of differential equations, in which both the slow and fast variables a...
In this paper we develop sensitivity analyses w.r.t. the long-range/memory noise parameter for solut...
We consider a system of d linear stochastic heat equations driven by an additive infinite-dimensiona...
Sensitivity analysis w.r.t. the long-range/memory noise parameter for probability distributions of f...
Two applications of the fractional Brownian motion will be presented. First, we study the time-regul...
AbstractWe consider slow–fast systems of differential equations, in which both the slow and fast var...
We consider sample path properties of the solution to the stochastic heat equation, in Rd or bounded...
We consider stochastic dynamical systems with multiple time scales. An intermediate reduced model is...
International audienceWe present an innovating sensitivity analysis for stochastic differential equa...
Our first result is a stochastic sewing lemma with quantitative estimates for mild incremental proce...