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      Exploiting Active Subspaces to Quantify Uncertainty in the Numerical Simulation of the HyShot II Scramjet

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          Abstract

          We present a computational analysis of the reactive flow in a hypersonic scramjet engine with focus on effects of uncertainties in the operating conditions. We employ a novel methodology based on active subspaces to characterize the effects of the input uncertainty on the scramjet performance. The active subspace identifies one-dimensional structure in the map from simulation inputs to quantity of interest that allows us to reparameterize the operating conditions; instead of seven physical parameters, we can use a single derived active variable. This dimension reduction enables otherwise infeasible uncertainty quantification, considering the simulation cost of roughly 9500 CPU-hours per run. For two values of the fuel injection rate, we use a total of 68 simulations to (i) identify the parameters that contribute the most to the variation in the output quantity of interest, (ii) estimate upper and lower bounds on the quantity of interest, (iii) classify sets of operating conditions as safe or unsafe corresponding to a threshold on the output quantity of interest, and (iv) estimate a cumulative distribution function for the quantity of interest.

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          Two-equation eddy-viscosity turbulence models for engineering applications

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            High-Order Collocation Methods for Differential Equations with Random Inputs

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              A non-adapted sparse approximation of PDEs with stochastic inputs

              We propose a method for the approximation of solutions of PDEs with stochastic coefficients based on the direct, i.e., non-adapted, sampling of solutions. This sampling can be done by using any legacy code for the deterministic problem as a black box. The method converges in probability (with probabilistic error bounds) as a consequence of sparsity and a concentration of measure phenomenon on the empirical correlation between samples. We show that the method is well suited for truly high-dimensional problems (with slow decay in the spectrum).
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                Author and article information

                Journal
                2014-08-26
                2015-07-15
                Article
                10.1016/j.jcp.2015.09.001
                1408.6269
                144f9759-aa49-4e66-82a2-afb38c5f8072

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                math.NA physics.flu-dyn

                Numerical & Computational mathematics,Thermal physics & Statistical mechanics

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