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Numerical procedure for multiscale bone adaptation prediction based on neural networks and finite element simulation

机译:基于神经网络和有限元模拟的多尺度骨适应预测的数值程序

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A human femur is composed of cortical and trabecular bone organized in a hierarchical way. In this paper, a multiscale procedure based on finite element simulation and neural network computation was developed to link mesoscopic and macroscopic scales to simulate trabecular bone adaptation process. The finite element calculation is performed at macroscopic level and trained neural networks are employed as numerical devices for substituting the finite element computation needed for the mesoscale prediction. Based on a set of mesoscale simulations of representative volume element of bone, a neural network is trained to approximate the responses. The input data for the artificial neural network are boundary conditions and the applied stress. The output data are some averaged bone properties. A macroscale constitutive model is obtained by homogenization of the mesoscale responses. The proposed approach is able to predict in rapid way some relevant outputs related to bone adaptation process such as trabecular bone density, elastic modulus and accumulation of apparent fatigue damage of 3D trabecular bone architecture at a given bone site. The proposed rapid multiscale method was able to predict final proximal femur trabecular bone adaption similar to the patterns observed in a human proximal femur.
机译:人股骨由皮质和骨小梁组成,它们以分层的方式组织。本文开发了一种基于有限元模拟和神经网络计算的多尺度程序,以将介观尺度和宏观尺度联系起来,以模拟小梁骨适应过程。有限元计算是在宏观层面上进行的,训练有素的神经网络被用作数值设备来替代中尺度预测所需的有限元计算。基于一组代表骨骼的体积元素的中尺度模拟,训练了一个神经网络来近似响应。人工神经网络的输入数据是边界条件和施加的应力。输出数据是一些平均骨骼属性。通过对中尺度响应进行均质化,可获得宏观尺度本构模型。所提出的方法能够快速地预测与骨骼适应过程相关的一些相关输出,例如小梁骨密度,弹性模量以及给定骨骼部位的3D小梁骨骼结构的明显疲劳损伤的累积。所提出的快速多尺度方法能够预测最终的股骨近端小梁骨适应性,类似于在人类股骨近端观察到的模式。

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