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Stochastic inverse method to identify parameter random fields in a structure

机译:确定结构中参数随机字段的随机逆方法

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The parameters in a structure such as geometric and material properties are generally uncertain due to manufacturing tolerance, wear, fatigue and material irregularity. Such parameters are random fields because the uncertain properties vary along the spatial domain of a structure. Since the parameter uncertainties in a structure result in the uncertainty of the structural dynamic behavior, they need to be identified accurately for structural analysis or design. In order to identify the random fields of geometric parameters, the parameters can be measured directly using a 3-dimensional coordinate measuring machine. However, it is often very expensive to measure them directly. It is even impossible to directly measure some parameters such as density and Young's modulus. For that case, the parameter random fields should be identified from measurable response data samples. In this paper, a stochastic inverse method to identify parameter random fields in a structure using modal data is proposed. The proposed method consists of the following three steps: (i) obtaining realizations of the parameter random field from modal data samples by solving an optimization problem, (ii) obtaining the deterministic terms in the Karhunen-Loeve expansion by solving an eigenvalue problem and (iii) estimating the distributions of random variables in the Karhunen-Loeve expansion using a maximum likelihood estimation method with kernel density.
机译:由于制造公差,磨损,疲劳和材料不规则性,结构中的参数(例如几何和材料特性)通常是不确定的。这样的参数是随机字段,因为不确定的属性沿结构的空间域变化。由于结构中的参数不确定性会导致结构动力学行为的不确定性,因此需要对其进行准确识别以进行结构分析或设计。为了识别几何参数的随机字段,可以使用3维坐标测量机直接测量参数。但是,直接测量它们通常非常昂贵。甚至不可能直接测量某些参数,例如密度和杨氏模量。对于这种情况,应从可测量的响应数据样本中标识参数随机字段。本文提出了一种利用模态数据识别结构中参数随机场的随机逆方法。所提出的方法包括以下三个步骤:(i)通过求解优化问题从模态数据样本中获取参数随机字段的实现,(ii)通过解决特征值问题获得Karhunen-Loeve展开中的确定性项,以及( iii)使用具有核密度的最大似然估计方法估计Karhunen-Loeve展开中的随机变量的分布。

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