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Study on Material Parameters Identification of Brain Tissue Considering Uncertainty of Friction Coefficient

机译:考虑摩擦系数不确定性的脑组织材料参数鉴定研究

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Accurate material parameters are critical to construct the high biofidelity finite element ( FE)models. However, it is hard to obtain the brain tissue parameters accurately because of the effects of irregular geometry and uncertain boundary conditions. Considering the complexity of material test and the uncertainty of friction coefficient, a computational inverse method for viscoelastic material parameters identification of brain tissue is presented based on the interval analysis method. Firstly, the intervals are used to quantify the friction coefficient in the boundary condition. And then the inverse problem of material parameters identification under uncertain friction coefficient is transformed into two types of deterministic inverse problem. Finally the intelligent optimization algorithm is used to solve the two types of deterministic inverse problems quickly and accurately, and the range of material parameters can be easily acquired with no need of a variety of samples. The efficiency and convergence of this method are demonstrated by the material parameters identification of thalamus. The proposed method provides a potential effective tool for building high biofidelity human finite element model in the study of traffic accident injury.
机译:精确的材料参数对于构造高生物化有限元(FE)型号至关重要。然而,由于不规则几何形状和不确定边界条件的影响,很难准确地获得脑组织参数。考虑到材料测试的复杂性以及摩擦系数的不确定性,基于间隔分析方法提出了一种脑组织粘弹性材料参数的计算逆方法。首先,间隔用于量化边界条件中的摩擦系数。然后,在不确定的摩擦系数下识别物质参数识别的逆问题被转化为两种类型的确定性逆问题。最后,智能优化算法用于快速准确地解决两种类型的确定性逆问题,并且可以容易地获取材料参数范围,无需各种样本。通过丘脑的材料参数鉴定证明了该方法的效率和收敛性。该方法在交通事故损伤研究中提供了建立高生物尺寸人体有限元模型的潜在有效工具。

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