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Modeling and Simulation of Stochastic Inverse Problems in Viscoplasticity

机译:粘塑性随机逆问题的建模与仿真

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摘要

In this paper, we have proposed an approach for parameter identification of random field for rigid viscoplastic material. It is assumed that the random field is stationary and Gaussian with known autocovariance function. Karhunen-Loeve decomposition has been used to quantify the effects of random inputs. A method is presented that takes into account only the first two statistical moments of the analyzed displacement field, and only two values of searched process are identified-mean value and coefficient of variation in autocovariation function. It has been shown that this approach is desirable when complicated systems are analyzed. The discretization of the governing equations has been described by the finite element method. The sparse grid stochastic collocation method has been used to solve the stochastic direct problem. It is shown that for the described nonlinear equations, the response function due to searched parameters with wide bounds and with reduced number of measurement points has many local extrema and global optimization technique is required. Genetic algorithm has been adopted to compute the functional cost. Numerical example shows the identification problem for compressed cylindrical sample. It is revealed that the key factor determining the convergence of the method is the degree of reduction in the height of the tested sample.
机译:在本文中,我们提出了一种用于刚性粘塑材料的随机场的参数识别方法。假设随机字段是静止的,具有已知的自电转换函数的高斯和高斯。 Karhunen-Loeve分解已被用于量化随机输入的影响。介绍了仅考虑分析的位移场的前两个统计矩的方法,并且仅识别出搜索过程的两个值的标识 - 自电节量函数的变化系数。已经表明,当分析复杂系统时,这种方法是期望的。有限元方法描述了控制方程的离散化。稀疏电网随机搭配方法已用于解决随机直接问题。结果表明,对于所描述的非线性方程,由于具有宽范围和减少数量的测量点的搜索参数而导致的响应功能具有许多本地极值和全局优化技术。采用遗传算法来计算功能成本。数值示例显示了压缩圆柱形样品的识别问题。据透露,确定该方法的收敛的关键因素是测试样品高度的降低程度。

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