1,992 research outputs found

    Stochastic turbulence modeling in RANS simulations via Multilevel Monte Carlo

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    A multilevel Monte Carlo (MLMC) method for quantifying model-form uncertainties associated with the Reynolds-Averaged Navier-Stokes (RANS) simulations is presented. Two, high-dimensional, stochastic extensions of the RANS equations are considered to demonstrate the applicability of the MLMC method. The first approach is based on global perturbation of the baseline eddy viscosity field using a lognormal random field. A more general second extension is considered based on the work of [Xiao et al.(2017)], where the entire Reynolds Stress Tensor (RST) is perturbed while maintaining realizability. For two fundamental flows, we show that the MLMC method based on a hierarchy of meshes is asymptotically faster than plain Monte Carlo. Additionally, we demonstrate that for some flows an optimal multilevel estimator can be obtained for which the cost scales with the same order as a single CFD solve on the finest grid level.Comment: 40 page

    Oscillatory Chemical Reactions - Mechanism of Belousov-Zhabotinskii Reaction

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    163-16

    LOW LATENCY LOW LOSS UNDER 1 MSEC PROTECTION IN 5G/LTE-A PACKET FRONTHAUL

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    Protection switching is important in a Third Generation Partnership Project (3GPP) Fifth Generation (5G) fronthaul network and for ultra-reliable and low latency communications (URLLC) types of applications. For example, protection switching requirements may necessitate an under one millisecond (msec) low loss and low latency protection switch over to, among other things, avoid a cell reset and support the emerging area of URLLC. To address those types of challenges, techniques are presented herein that support, among other things, a dedicated protection mechanism that is handled in a data plane where such protection switching is triggered in the data plane itself without any protocol interaction. Aspects of the techniques presented herein encompass, among other things, the dynamic configuration of a re-timer buffer depth, a custom extension header in a Radio over Ethernet (RoE) packet to support the conveyance of an indication of a path failure, little dependency on the transport network, etc

    Stochastic turbulence modeling in RANS simulations via multilevel Monte Carlo

    Get PDF
    A multilevel Monte Carlo (MLMC) method for quantifying model-form uncertainties associated with the Reynolds-Averaged Navier-Stokes (RANS) simulations is presented. Two, high-dimensional, stochastic extensions of the RANS equations are considered to demonstrate the applicability of the MLMC method. The first approach is based on global perturbation of the baseline eddy viscosity field using a lognormal random field. A more general second extension is considered based on the work of [Xiao et al. (2017)], where the entire Reynolds Stress Tensor (RST) is perturbed while maintaining realizability. For two fundamental flows, we show that the MLMC method based on a hierarchy of meshes is asymptotically faster than plain Monte Carlo. Additionally, we demonstrate that for some flows an optimal multilevel estimator can be obtained for which the cost scales with the same order as a single CFD solve on the finest grid level

    A multigrid multilevel Monte Carlo method using high-order finite-volume scheme for lognormal diffusion problems

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    The aim of this paper is to show that a high-order discretization can be used to improve the convergence of a multilevel Monte Carlo method for elliptic partial differential equations with lognormal random coefficients in combination with the multigrid solution method. To demonstrate this, we consider a fourth-order accurate finite-volume discretization. With the help of the Matérn family of covariance functions, we simulate the coefficient field with different degrees of smoothness. The idea behind using a fourth-order scheme is to capture the additional regularity in the solution introduced due to higher smoothness of the random field. Second-order schemes previously utilized for these types of problems are not able to fully exploit this additional regularity. We also propose a practical way of combining a full multigrid solver with the multilevel Monte Carlo estimator constructed on the same mesh hierarchy. Through this integration, one full multigrid solve at any level provides a valid sample for all the preceding Monte Carlo levels. The numerical results show that the fourth-order multilevel estimator consistently outperforms the second-order variant. In addition, we observe an asymptotic gain for the standard Monte Carlo estimator

    A multigrid multilevel Monte Carlo method for transport in the Darcy–Stokes system

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    A multilevel Monte Carlo (MLMC) method for Uncertainty Quantification (UQ) of advection-dominated contaminant transport in a coupled Darcy–Stokes flow system is described. In particular, we focus on high-dimensional epistemic uncertainty due to an unknown permeability field in the Darcy domain that is modelled as a lognormal random field. This paper explores different numerical strategies for the subproblems and suggests an optimal combination for the MLMC estimator. We propose a specific monolithic multigrid algorithm to efficiently solve the steady-state Darcy–Stokes flow with a highly heterogeneous diffusion coefficient. Furthermore, we describe an Alternating Direction Implicit (ADI) based time-stepping for the flux-limited quadratic upwinding discretization for the transport problem. Numerical experiments illustrating the multigrid convergence and cost of the MLMC estimator with respect to the smoothness of permeability field are presented
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