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首页> 外文期刊>International journal for numerical methods in biomedical engineering >Sensitivity analysis of non-local damage in soft biological tissues
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Sensitivity analysis of non-local damage in soft biological tissues

机译:软生物组织非局部损伤的敏感性分析

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摘要

Computational modeling can provide insight into understanding the damage mechanisms of soft biological tissues. Our gradient-enhanced damage model presented in a previous publication has shown advantages in considering the internal length scales and in satisfying mesh independence for simulating damage, growth and remodeling processes. Performing sensitivity analyses for this model is an essential step towards applications involving uncertain patient-specific data. In this paper, a numerical analysis approach is developed. For that we integrate two existing methods, that is, the gradient-enhanced damage model and the surrogate model-based probability analysis. To increase the computational efficiency of the Monte Carlo method in uncertainty propagation for the nonlinear hyperelastic damage analysis, the surrogate model based on Legendre polynomial series is employed to replace the direct FEM solutions, and the sparse grid collocation method (SGCM) is adopted for setting the collocation points to further reduce the computational cost in training the surrogate model. The effectiveness of the proposed approach is illustrated by two numerical examples, including an application of artery dilatation mimicking to the clinical problem of balloon angioplasty.
机译:计算建模可以洞察理解软生物组织的损伤机制。我们在先前出版物中呈现的梯度增强损伤模型在考虑内部长度和满足网格独立性时,以用于模拟损坏,生长和重塑过程的优势。对该模型进行敏感性分析是涉及涉及不确定患者特定数据的应用的重要步骤。本文开发了一种数值分析方法。为此,我们整合了两个现有方法,即梯度增强的损伤模型和基于代理模型的概率分析。为了提高Monte Carlo方法的计算效率,在非线性超弹性损伤分析中的不确定传播中,基于Legendre多项式系列的代理模型用于更换直接的FEM解决方案,采用稀疏网格搭配方法(SGCM)进行设置搭配点以进一步降低培训代理模型的计算成本。所提出的方法的有效性由两个数值实施例说明,包括在球囊血管成形术临床问题中施加动脉扩张的应用。

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