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System Identification of Spatial Distribution of Structural Parameters Using Modified Transitional Markov Chain Monte Carlo Method

机译:用改进的过渡性马尔可夫链蒙特卡罗方法系统识别结构参数的空间分布

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摘要

Uncertain changes in spatial distribution of structural parameters, caused by deterioration or damage, may weaken the structure and result in unexpected losses of properties or casualties. In recent decades, to identify spatial distribution of parameters, various system identification (SI) methods have been developed based on optimization algorithms employing various regularization techniques. However, such optimization-based SI methods may suffer from ill-posedness of the optimization problem under uncertain measurement noises. Moreover, depending on boundary and traction conditions, the accuracy and robustness of SI methods may differ. In this paper, to overcome these technical challenges in identification of spatial distribution, a new SI method is developed by modifying the transitional Markov chain Monte Carlo (m-TMCMC). In addition to the modifications introduced to the sampling algorithm, the proposed method enhances robustness of the SI results by exploiting the results by the maximum likelihood estimation and finite-element updating. To identify general shapes of spatial distribution with a reasonable number of parameters, a spatial deterioration model is proposed based on the modes obtained based on a random field model called Karhunen-Loeve expansion. The proposed SI method is tested and demonstrated through numerical examples of steel plate and B-pillar structure, in which the effects of random measurement errors are also considered. The numerical examples demonstrate accuracy and robustness of the proposed method. (C) 2017 American Society of Civil Engineers.
机译:由劣化或损坏引起的结构参数空间分布的不确定变化可能会削弱结构,并导致意外的财产损失或人员伤亡。近几十年来,为了识别参数的空间分布,基于各种正则化技术的优化算法发展了各种系统识别(SI)方法。然而,这种基于优化的SI方法在测量噪声不确定的情况下可能存在优化问题的不适定性。此外,根据边界条件和牵引条件,SI方法的精度和鲁棒性可能会有所不同。本文通过对过渡马尔可夫链蒙特卡罗(m-TMCMC)方法的改进,提出了一种新的识别空间分布的SI方法。除了对采样算法进行修改外,该方法还利用了最大似然估计和有限元更新的结果,增强了SI结果的鲁棒性。为了识别具有合理数量参数的空间分布的一般形状,基于基于随机场模型Karhunen-Loeve展开得到的模式,提出了一种空间退化模型。通过钢板和B柱结构的数值算例验证了所提出的SI方法,其中还考虑了随机测量误差的影响。数值算例表明了该方法的准确性和鲁棒性。(C) 2017年美国土木工程师学会。

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