Data-driven confidence bound for structural response using segmented least squares: a mixed-integer programming approach

IF 0.7 4区 数学 Q3 MATHEMATICS, APPLIED Japan Journal of Industrial and Applied Mathematics Pub Date : 2024-07-02 DOI:10.1007/s13160-024-00657-3
Yoshihiro Kanno
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Abstract

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.

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使用分段最小二乘法的结构响应数据驱动置信度:一种混合整数编程方法
作为弹性计算力学的数据驱动方法之一,本文提出了一种考虑到材料数据集不确定性的结构响应约束的方法。在构建不确定性集时,我们采用了分段最小二乘法,这样就可以处理线性回归模型拟合效果不佳的数据集。由于得到的不确定度集是非凸的,因此不确定度分析的优化问题也是非凸的。我们将这一优化问题重塑为混合整数编程问题,以找到全局最优解。这种全局最优性以及阶次统计的基本属性保证了所获得的结构响应约束是保守的,即至少在指定的置信水平下,结构响应在此约束内的概率不小于指定的目标值。我们给出了三种不同类型骨架结构的数值示例。
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来源期刊
CiteScore
1.50
自引率
11.10%
发文量
56
审稿时长
>12 weeks
期刊介绍: Japan Journal of Industrial and Applied Mathematics (JJIAM) is intended to provide an international forum for the expression of new ideas, as well as a site for the presentation of original research in various fields of the mathematical sciences. Consequently the most welcome types of articles are those which provide new insights into and methods for mathematical structures of various phenomena in the natural, social and industrial sciences, those which link real-world phenomena and mathematics through modeling and analysis, and those which impact the development of the mathematical sciences. The scope of the journal covers applied mathematical analysis, computational techniques and industrial mathematics.
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