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Structural identification using a nonlinear constraint satisfaction processor with interval arithmetic and contractor programming

机译:使用带有区间算法和承包商编程的非线性约束满足处理器的结构识别

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摘要

Structural identification through finite element model updating has gained increased importance as an applied experimental technique for performance-based structural assessment and health monitoring. However, practical challenges associated with computability, feasibility, and uniqueness present in the structured nonlinear inverse eigenvalue problem develop as a result of the necessary use of partially described and incompletely measured mode shapes. As an alternative to direct methods and optimization-based approaches, this paper proposes a new paradigm for model updating that is based on formulating the structured inverse eigenvalue problem as a Constraint Satisfaction Problem. Interval arithmetic and contractor programming are introduced as a means for generating feasible solutions to a structured inverse eigenvalue problem within a bounded parameter search space. This framework offers the ability to solve under-determined and non-unique inverse problems as well as accommodate measurement uncertainty through relaxation of constraint equations. These abilities address key challenges in quantifying uncertainty in parameter estimates obtained through structural identification and enable the exploration of alternative solutions to the global minimum that may better reflect the true physical properties of the structure. These capabilities are first demonstrated using synthetic data from a numerical mass-spring model and then extended to experimental data from a laboratory shear building model. Lastly, the methodology is contrasted with probabilistic model updating to highlight the advantages and unique capabilities offered by the methodology in addressing the effects of measurement uncertainty on the parameter estimation. (C) 2017 Elsevier Ltd. All rights reserved.
机译:作为基于性能的结构评估和健康监测的一种应用实验技术,通过有限元模型更新进行结构识别已变得越来越重要。但是,由于必须使用部分描述的和不完全测量的模态形状,因此在结构化非线性逆特征值问题中出现了与可计算性,可行性和唯一性相关的实际挑战。作为直接方法和基于优化的方法的替代方法,本文提出了一种用于模型更新的新范式,该范式是基于将结构化逆特征值问题表述为约束满足问题。引入区间算术和承包商编程作为在有界参数搜索空间内生成结构化特征值反问题的可行解的方法。该框架提供了解决欠定和非唯一逆问题的能力,并通过放松约束方程式来适应测量不确定性。这些功能解决了在量化通过结构识别获得的参数估计值的不确定性方面的关键挑战,并使能够探索可更好地反映结构真实物理特性的全局最小值的替代解决方案。首先使用数字质量弹簧模型的合成数据演示了这些功能,然后将其扩展到实验室剪力构建模型的实验数据。最后,将该方法与概率模型更新进行对比,以突出该方法在解决测量不确定性对参数估计的影响方面的优势和独特功能。 (C)2017 Elsevier Ltd.保留所有权利。

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