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Main Author: Kanno, Yoshihiro
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.07793
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author Kanno, Yoshihiro
author_facet Kanno, Yoshihiro
contents As one of data-driven approaches to computational mechanics in elasticity, this paper presents a method finding a bound for structural response, taking uncertainty in a material data set into account. For construction of an uncertainty set, we adopt the segmented least squares so that a data set that is not fitted well by the linear regression model can be dealt with. Since the obtained uncertainty set is nonconvex, the optimization problem solved for the uncertainty analysis is nonconvex. We recast this optimization problem as a mixed-integer programming problem to find a global optimal solution. This global optimality, together with a fundamental property of the order statistics, guarantees that the obtained bound for the structural response is conservative, in the sense that, at least a specified confidence level, probability that the structural response is in this bound is no smaller than a specified target value. We present numerical examples for three different types of skeletal structures.
format Preprint
id arxiv_https___arxiv_org_abs_2406_07793
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Data-driven confidence bound for structural response using segmented least squares: a mixed-integer programming approach
Kanno, Yoshihiro
Optimization and Control
As one of data-driven approaches to computational mechanics in elasticity, this paper presents a method finding a bound for structural response, taking uncertainty in a material data set into account. For construction of an uncertainty set, we adopt the segmented least squares so that a data set that is not fitted well by the linear regression model can be dealt with. Since the obtained uncertainty set is nonconvex, the optimization problem solved for the uncertainty analysis is nonconvex. We recast this optimization problem as a mixed-integer programming problem to find a global optimal solution. This global optimality, together with a fundamental property of the order statistics, guarantees that the obtained bound for the structural response is conservative, in the sense that, at least a specified confidence level, probability that the structural response is in this bound is no smaller than a specified target value. We present numerical examples for three different types of skeletal structures.
title Data-driven confidence bound for structural response using segmented least squares: a mixed-integer programming approach
topic Optimization and Control
url https://arxiv.org/abs/2406.07793