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Multifidelity Uncertainty Quantification of a Commercial Supersonic Transport
Author(s) -
Thomas K. West,
Ben D. Phillips
Publication year - 2018
Publication title -
2018 applied aerodynamics conference
Language(s) - English
Resource type - Conference proceedings
SCImago Journal Rank - 0.227
H-Index - 9
DOI - 10.2514/6.2018-2851
Subject(s) - supersonic speed , uncertainty quantification , computer science , aerospace engineering , environmental science , engineering , machine learning
The objective of this work was to develop a multifidelity uncertainty quantification approach for efficient analysis of a commercial supersonic transport concept. An approach based on point-collocation, non-intrusive polynomial chaos was formulated in which a low-fidelity model could be corrected using multiple higher-fidelity models. The formulation and methodology also allows for the addition of uncertainty sources not present in the lower fidelity models. To demonstrate the applicability and potential computational savings of the multifidelity polynomial chaos approach, two model problems were explored. The first was a supersonic airfoil with three levels of modeling fidelity, each capturing a gradual increase in modeling of the underlying flow physics. As much as 50% computational cost reduction was observed using the mutlifidelity approach, while predicting nearly the same amount of uncertainty in drag. The second problem was a commercial supersonic transport. This model had three levels of fidelity that included two different modeling approaches and the addition of physics between the fidelity levels. Results of this analysis yielded nearly a 70% computational savings to predict a comparable amount of uncertainty in ground noise. Both problems illustrate the applicability and significant computational savings of the multifidelity method for efficient and accurate uncertainty quantification.

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