Abstract
One of the main issues addressed in any engineering design problem is to predict the performance of the component or system as accurately and realistically as possible, taking into account the variability of operating conditions or the uncertainty on input data (boundary conditions or geometry tolerance). In this paper, the propagation of uncertainty on boundary conditions through a numerical model of supersonic nozzle is investigated. The evaluation of the statistics of the problem response functions is performed following ‘Surrogate-Based Uncertainty Quantification’. The approach involves: (a) the generation of a response surface starting from a DoE in order to approximate the convergent–divergent ‘physical’ model (expensive to simulate), (b) the application of the UQ technique based on the LHS to the meta-model. Probability Density Functions are introduced for the inlet boundary conditions in order to quantify their effects on the output nozzle performance. The physical problem considered is very relevant for the experimental tests on the UQ approach because of its high non-linearity. A small perturbation to the input data can drive the solution to a completely different output condition. The CFD simulations and the Uncertainty Quantification were performed by coupling the open source Dakota platform with the ANSYS Fluent® CFD commercial software: the process is automated through scripting. The procedure adopted in this work demonstrate the applicability of advanced simulation techniques (such as UQ analysis) to industrial technical problems. Moreover, the analysis highlights the practical use of the uncertainty quantification techniques in predicting the performance of a nozzle design affected by off-design conditions with fluid-dynamic complexity due to strong nonlinearity.
Highlights
In recent years, an important part of the research in numerical simulations, in many engineering sectors, has been dedicated to the performance prediction of systems and components in off-design conditions
The quantitative analysis of the influence on supersonic nozzle performance of the variation of selected input variables leads to the following conclusions
This is confirmed by the Uncertainty Quantification (UQ) analysis, with a uniform uncertainty to the input variable, the performance parameters can assume a large range of possible values
Summary
An important part of the research in numerical simulations, in many engineering sectors, has been dedicated to the performance prediction of systems and components in off-design conditions. In order to improve the accuracy and the reliability of the numerical predictions, it is necessary to understand how the uncertainties can affect the results of the problem under investigation. This is one of the main targets of Uncertainty Quantification (UQ) analysis with direct positive fall-out on engineering problems. The use of CFD coupled to optimization algorithms for the automatic design optimization of industrial components is nowadays a mature technology [1,2].
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