Multi-fidelity uncertainty quantification method with application to nonlinear structural response analysis
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Publication:1985164
DOI10.1016/j.apm.2019.06.038zbMath1481.62126OpenAlexW2953974795WikidataQ127581172 ScholiaQ127581172MaRDI QIDQ1985164
Qiang Yang, Songhe Meng, Xinghong Zhang, Hua Jin, Weihua Xie
Publication date: 7 April 2020
Published in: Applied Mathematical Modelling (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.1016/j.apm.2019.06.038
compositesnonlinear analysisuncertainty quantificationpolynomial chaos expansionmulti-fidelity methods
Applications of statistics in engineering and industry; control charts (62P30) Reliability and life testing (62N05)
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