In this paper, extensions to conventional stochastic estimation techniques are presented, whereby uncertainties in individual estimates may be deduced. Test applications to time series of velocity measurements in a turbulent boundary layer confirm the fidelity of the uncertainty estimation procedure and illustrate how the optimal choice of stochastic estimation model can be strongly dependent on the event upon which the average is conditioned. They also demonstrate how stochastic estimations may be refined to yield more accurate descriptions of particular coherent motions, and how they can reveal the existence of rare events, different in statistical character to their more frequent counterparts, which might otherwise be undetected by conve...
This report deals with methods of measuring the probability distributions and mean values of random ...
International audienceThe models under location uncertainty recently introduced by Mémin [16] provid...
We introduce a novel way to extract information from turbulent datasets by applying an Auto Regressi...
The stochastic estimation method educes structure by approximating an average field in terms of even...
It is shown that conditional averages in the form of expected values of functions of the velocity at...
An efficient stochastic method is applied to the problem of modelling unsteady turbulent velocity fl...
While great progress is being made in characterizing the 3-D structure of organized turbulent motion...
The correct modeling of turbulent and transient flow is still a major task for computational fluid d...
A new parametric approach for the study of Lagrangian data is presented. It provides parameter estim...
The goal of the study was to generate, from a simple set of rules, a stochastic signal in space-time...
The models under location uncertainty (henceforth referred to as stochastic models) recently introdu...
We study the statistics of the horizontal component of atmospheric boundary layer wind speed and int...
The stochastic model proposed by Mémin (2014) for turbulent flow simulations is analysed, both theor...
The turbulence closure model is the dominant source of error in most Reynolds-Averaged Navier–Stokes...
A statistical approach for the treatment of turbulence data generated by computer simulations is pre...
This report deals with methods of measuring the probability distributions and mean values of random ...
International audienceThe models under location uncertainty recently introduced by Mémin [16] provid...
We introduce a novel way to extract information from turbulent datasets by applying an Auto Regressi...
The stochastic estimation method educes structure by approximating an average field in terms of even...
It is shown that conditional averages in the form of expected values of functions of the velocity at...
An efficient stochastic method is applied to the problem of modelling unsteady turbulent velocity fl...
While great progress is being made in characterizing the 3-D structure of organized turbulent motion...
The correct modeling of turbulent and transient flow is still a major task for computational fluid d...
A new parametric approach for the study of Lagrangian data is presented. It provides parameter estim...
The goal of the study was to generate, from a simple set of rules, a stochastic signal in space-time...
The models under location uncertainty (henceforth referred to as stochastic models) recently introdu...
We study the statistics of the horizontal component of atmospheric boundary layer wind speed and int...
The stochastic model proposed by Mémin (2014) for turbulent flow simulations is analysed, both theor...
The turbulence closure model is the dominant source of error in most Reynolds-Averaged Navier–Stokes...
A statistical approach for the treatment of turbulence data generated by computer simulations is pre...
This report deals with methods of measuring the probability distributions and mean values of random ...
International audienceThe models under location uncertainty recently introduced by Mémin [16] provid...
We introduce a novel way to extract information from turbulent datasets by applying an Auto Regressi...