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An Efficient Polynomial Chaos Method for Stiffness Analysis of Air Spring Considering Uncertainties
Author(s) -
Feng Kong,
Penghao Si,
Shengwen Yin
Publication year - 2021
Publication title -
complexity
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.447
H-Index - 61
eISSN - 1099-0526
pISSN - 1076-2787
DOI - 10.1155/2021/5592559
Subject(s) - polynomial chaos , polynomial expansion , mathematics , random variable , polynomial , interval (graph theory) , quadrature (astronomy) , orthogonal polynomials , stiffness , interval arithmetic , moment (physics) , algorithm , mathematical analysis , statistics , structural engineering , monte carlo method , combinatorics , physics , engineering , optics , classical mechanics , bounded function
Traditional methods for stiffness analysis of the air spring are based on deterministic assumption that the parameters are fixed. However, uncertainties have widely existed, and the mechanic property of the air spring is very sensitive to these uncertainties. To model the uncertainties in the air spring, the interval/random variables models are introduced. For response analysis of the interval/random variables models of the air spring system, a new unified orthogonal polynomial expansion method, named as sparse quadrature-based interval and random moment arbitrary polynomial chaos method (SQ-IRMAPC), is proposed. In SQ-IRMAPC, the response of the acoustic system related to both interval and random variables is approximated by the moment-based arbitrary orthogonal polynomial expansion. To efficiently calculate the coefficient of the interval and random orthogonal polynomial expansion, the sparse quadrature is introduced. The proposed SQ-IRMAPC was employed to analyze the mechanic performance of an air spring with interval and/or random variables, and its effectiveness has been demonstrated by fully comparing it with the most recently proposed orthogonal polynomial-based interval and random analysis method.

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