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The Influence of the Specimen Shape and Loading Conditions on the Parameter Identification of a Viscoelastic Brain Model

机译:试样形状和装载条件对粘弹性脑模型参数鉴定的影响

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The mechanical properties of brain under various loadings have been reported in the literature over the past 50 years. Step-and-hold tests have often been employed to characterize viscoelastic and nonlinear behavior of brain under high-rate shear deformation; however, the identification of brain material parameters is typically performed by neglecting the initial strain ramp and/or by assuming a uniform strain distribution in the brain samples. Using finite element (FE) simulations of shear tests, this study shows that these simplifications have a significant effect on the identified material properties in the case of cylindrical human brain specimens. Material models optimized using only the stress relaxation curve under predict the shear force during the strain ramp, mainly due to lower values of their instantaneous shear moduli. Similarly, material models optimized using an analytical approach, which assumes a uniform strain distribution, under predict peak shear forces in FE simulations. Reducing the specimen height showed to improve the model prediction, but no improvements were observed for cubic samples with heights similar to cylindrical samples. Models optimized using FE simulations show the closest response to the test data, so a FE-based optimization approach is recommended in future parameter identification studies of brain.
机译:在过去的50年里,在文献中报道了各种载荷下脑的机械性能。阶梯和保持测试通常用于在高速剪切变形下表征大脑的粘弹性和非线性行为;然而,通常通过忽略初始应变斜坡和/或假设脑样品中的均匀应变分布来执行脑材料参数的识别。使用有限元(Fe)模拟剪切试验,本研究表明,这些简化对圆柱形人脑样本的情况下鉴定的材料特性具有显着影响。在应变斜坡期间,仅使用诸如应力松弛曲线的应力松弛曲线优化的材料模型主要是由于其瞬时剪切模量的较低值。类似地,使用分析方法优化的材料模型,其假设在Fe模拟中的预测峰剪切力下均匀的应变分布。减少样品高度显示以改善模型预测,但对于具有类似圆柱形样品的高度的立方样本没有观察到改进。使用FE模拟优化的模型显示对测试数据的最接近的响应,因此建议在脑的未来参数识别研究中使用基于FE的优化方法。

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