论文标题
基于模块化的几何近似血管的模型顺序降低流量
Model order reduction of flow based on a modular geometrical approximation of blood vessels
论文作者
论文摘要
我们对有效模拟动脉血流的有效模拟降低的顺序方法感兴趣。血液动力学是通过不可压缩的Navier-Stokes方程建模的。我们的算法基于目标几何形状的近似结构域分解,以从几何构建块的参数化变形获得的许多子域(例如,直管和模型分叉)。在每个构建块上,我们通过大量有限元解决方案的快照(离线阶段)的快照来构建一组光谱函数。然后,通过通过光谱Lagrange乘数(在线阶段)耦合这些局部基础函数的线性组合(在线阶段),可以找到目标几何学上Navier-Stokes方程的全局解决方案。由于降低的自由度的数量要比其有限元的对应物小得多,因此这种方法使我们能够在牛顿 - 拉夫森算法的每种迭代中显着降低线性系统的大小。我们相对于完整的仿真实现了较大的加速度(在我们的数值实验中,增益至少是一个数量级,并且相对于降低的基量尺寸而成倍增长),同时仍然保留大多数心血管模拟的满意度精度。
We are interested in a reduced order method for the efficient simulation of blood flow in arteries. The blood dynamics is modeled by means of the incompressible Navier-Stokes equations. Our algorithm is based on an approximated domain-decomposition of the target geometry into a number of subdomains obtained from the parametrized deformation of geometrical building blocks (e.g. straight tubes and model bifurcations). On each of these building blocks, we build a set of spectral functions by proper orthogonal decomposition of a large number of snapshots of finite element solutions (offline phase). The global solution of the Navier-Stokes equations on a target geometry is then found by coupling linear combinations of these local basis functions by means of spectral Lagrange multipliers (online phase). Being that the number of reduced degrees of freedom is considerably smaller than their finite element counterpart, this approach allows us to significantly decrease the size of the linear system to be solved in each iteration of the Newton-Raphson algorithm. We achieve large speedups with respect to the full order simulation (in our numerical experiments, the gain is at least of one order of magnitude and grows inversely with respect to the reduced basis size), whilst still retaining satisfactory accuracy for most cardiovascular simulations.