论文标题
一个有限元素 /神经网络框架,用于建模非球形颗粒的悬浮液。概念和医疗应用
A finite element / neural network framework for modeling suspensions of non-spherical particles. Concepts and medical applications
论文作者
论文摘要
仅当已知一组完全相关的相关性,可以准确预测悬浮在流体中的颗粒的平移和旋转运动。因此,本研究致力于对新框架的推导和验证,以确定流体流动中不同非球形颗粒的阻力,提升,旋转和俯仰扭矩系数。研究的动机来自医疗应用,其中颗粒可能具有任意和复杂的形状。在这里,通常不可能得出准确的分析模型来预测不同的流体动力。但是,考虑到血液的各种成分,它们的形状在控制多种身体功能(例如控制血液粘度或凝结)方面发挥了重要作用。因此,提出的模型被设计为适用于各种形状。在医疗和生物应用中发生的悬浮液的另一个重要特征是颗粒数量大。我们提出的建模方法可以有效地用于模拟具有许多颗粒的固定液体悬浮液。基于原型颗粒的分辨数值模拟,我们生成数据来训练神经网络,这使我们能够快速估计浸入流体中的特定粒子所经历的流体动力。
An accurate prediction of the translational and rotational motion of particles suspended in a fluid is only possible if a complete set of correlations for the force coefficients of fluid-particle interaction is known. The present study is thus devoted to the derivation and validation of a new framework to determine the drag, lift, rotational and pitching torque coefficients for different non-spherical particles in a fluid flow. The motivation for the study arises from medical applications, where particles may have an arbitrary and complex shape. Here, it is usually not possible to derive accurate analytical models for predicting the different hydrodynamic forces. However, considering for example the various components of blood, their shape takes an important role in controlling several body functions such as control of blood viscosity or coagulation. Therefore, the presented model is designed to be applicable to a broad range of shapes. Another important feature of the suspensions occurring in medical and biological applications is the high number of particles. The modelling approach we propose can be efficiently used for simulations of solid-liquid suspensions with numerous particles. Based on resolved numerical simulations of prototypical particles we generate data to train a neural network which allows us to quickly estimate the hydrodynamic forces experienced by a specific particle immersed in a fluid.