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Comparison and Implementation of Multiple Model Structural Identification Methods

机译:多种模型结构识别方法的比较与实现

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Although multiple-model structural identification (MM ST-ID) approaches appear to offer clear, conceptual benefits over single-model approaches, they have not yet been employed within a transparent scenario that will allow quantitative comparison, critique, and refinement. To fill this gap, the research reported in this paper aimed to (1) implement and compare current MM ST-ID approaches on a physical laboratory model to establish their accuracy and identify their merits and shortcomings, and (2) identify the ability to refine MM ST-ID methods by weighing observations based on their correlation with the desired predictions. The scenario implemented used modal parameters as the observations, and static displacements and strains as the desired predictions. The various MM ST-ID methods were evaluated based on how their prediction distributions agreed with the actual responses of the physical model. The results indicated that while all methods were successful in bounding the actual responses, the Bayesian updating approach proved to be the most efficient in terms of required number of simulations, and was able to produce prediction distributions with the smallest bounds (while still incorporating all measured responses). In addition, the mean of the MM ST-ID prediction distributions did not coincide with the model that had the largest weight (i.e., the highest likelihood), which indicates that single model approaches not only are unable to provide estimates of variability, but may produce biased predictions. Finally, through a second set of scenarios, the research reported in this paper showed how prediction distributions may be improved by weighing observations based on their correlation with the desired predictions. (C) 2015 American Society of Civil Engineers.
机译:尽管多模型结构识别(MM ST-ID)方法似乎比单模型方法具有明显的概念优势,但尚未在允许定量比较,批判和完善的透明方案中使用它们。为了弥补这一空白,本文报道的研究旨在(1)在物理实验室模型上实施和比较当前的MM ST-ID方法,以建立其准确性并确定其优缺点,以及(2)确定改进的能力MM ST-ID方法通过根据观测值与所需预测的相关性对观测值进行加权来确定。实施的方案使用模态参数作为观测值,并使用静态位移和应变作为所需的预测。根据各种MM ST-ID方法的预测分布与物理模型的实际响应之间的一致性,对这些方法进行了评估。结果表明,尽管所有方法都能成功地约束实际响应,但贝叶斯更新方法被证明在所需的仿真次数方面是最有效的,并且能够以最小的边界生成预测分布(同时仍包含所有测得的结果)。回应)。此外,MM ST-ID预测分布的平均值与权重最大(即,可能性最高)的模型不一致,这表明单个模型方法不仅无法提供可变性估计,而且可能产生有偏见的预测。最后,通过第二组场景,本文报道的研究表明了如何通过根据观测值与所需预测值的相关性加权观测值来改善预测值分布。 (C)2015年美国土木工程师学会。

著录项

  • 来源
    《Journal of structural engineering》 |2015年第11期|04015042.1-04015042.13|共13页
  • 作者

    Dubbs N. C.; Moon F. L.;

  • 作者单位

    Intelligent Infrastruct Syst LLC, Philadelphia, PA 19104 USA;

    Drexel Univ, Dept Civil Architectural & Environm Engn, Philadelphia, PA 19104 USA;

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  • 正文语种 eng
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