陈飙松

个人信息Personal Information

研究员

博士生导师

硕士生导师

性别:男

毕业院校:大连理工大学

学位:博士

所在单位:力学与航空航天学院

学科:计算力学. 工程力学

办公地点:综合实验1号楼

电子邮箱:chenbs@dlut.edu.cn

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Sparse regression Chebyshev polynomial interval method for nonlinear dynamic systems under uncertainty

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论文类型:期刊论文

发表时间:2017-11-01

发表刊物:APPLIED MATHEMATICAL MODELLING

收录刊物:Scopus、SCIE、EI

卷号:51

页面范围:505-525

ISSN号:0307-904X

关键字:Uncertain interval model; Sparse regression; Chebyshev polynomials; Response interval estimation of nonlinear dynamic systems; Ordinary differential equations (ODES)

摘要:This paper proposes a new higher-efficiency interval method for the response bound estimation of nonlinear dynamic systems, whose uncertain parameters are bounded. This proposed method uses sparse regression and Chebyshev polynomials to help the interval analysis applied on the estimation. It is also a non-intrusive method which needs much fewer evaluations of original nonlinear dynamic systems than the other Chebyshev polynomials based interval methods. By using the proposed method, the response bound estimation of nonlinear dynamic systems can be performed more easily, even if the numerical simulation in nonlinear dynamic systems is costly or the number of uncertain parameters is higher than usual. In our approach, the sparse regression method "elastic net" is adopted to improve the sampling efficiency, but with sufficient accuracy. It alleviates the sample size required in coefficient calculation of the Chebyshev inclusion function in the sampling based methods. Moreover, some mature technologies are adopted to further reduce the sample size and to guarantee the accuracy of the estimation. So that the number of sampling, which solves the certain ordinary differential equations (ODEs), can be reduced significantly in the Chebyshev interval method. Three numerical examples are presented to illustrate the efficiency of proposed interval method. In particular, the last two examples are high dimension uncertain problems, which can further exhibit the ability to reduce the computational cost. (C) 2017 Published by Elsevier Inc.