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Inverse propagation of uncertainties in finite element model updating through use of fuzzy arithmetic

机译:利用模糊算法更新有限元模型中不确定性的逆传播

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摘要

A fuzzy finite element model updating (FFEMU) method is presented in this study for the damage detection problem. The uncertainty caused by the measurement noise in modal parameters is described by fuzzy numbers. Inverse analysis is formulated as a constrained optimization problem at each α-cut level. Membership functions of each updating parameter which correspond to reduction in bending stiffness of the finite elements is determined by minimizing an objective function using a hybrid version of genetic algorithms (GA) and particle swarm optimization method (PSO) which is very efficient in terms of accuracy and robustness. Practical evaluation of the approximate bounds of the interval modal parameters in FFEMU iterations is addressed. A probabilistic analysis is performed using Monte Carlo simulation (MCS) and the results are compared with presented FFEMU method. It is apparent from numerical simulations that the proposed method is well capable in finding the membership functions of the updating parameters within reasonable accuracy. It is also shown that the results obtained by FFEMU are in good agreement with the MCS results while FFEMU is not as computationally expensive as the MCS method. Nevertheless, the proposed FFEMU do not required derivatives of the objective function like existing methods except in the deterministic case.
机译:针对损伤检测问题,提出了一种模糊有限元模型更新(FFEMU)方法。由模态参数中的测量噪声引起的不确定性用模糊数表示。逆分析被公式化为每个α-cut级别的约束优化问题。通过使用遗传算法(GA)和粒子群优化方法(PSO)的混合版本来最小化目标函数,可以确定每个更新参数的成员函数,这些函数对应于有限元的弯曲刚度的降低。和鲁棒性。解决了FFEMU迭代中间隔模态参数的近似边界的实际评估。使用蒙特卡洛模拟(MCS)进行概率分析,并将结果与​​提出的FFEMU方法进行比较。从数值模拟可以明显看出,所提出的方法能够在合理的精度内找到更新参数的隶属函数。还表明,FFEMU所获得的结果与MCS结果非常吻合,而FFEMU的计算费用却不如MCS方法。然而,除了确定性情况外,拟议的FFEMU不需要像现有方法那样的目标函数导数。

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