Mut Fernando, Aubry Romain, Löhner Rainald, Cebral Juan R
Int J Numer Method Biomed Eng. 2010 Jan;26(1):73-85. doi: 10.1002/cnm.1235.
The study of hemodynamics in arterial models constructed from patient-specific medical images requires the solution of the incompressible flow equations in geometries characterized by complex branching tubular structures. The main challenge with this kind of geometries is that the convergence rate of the pressure Poisson solver is dominated by the graph depth of the computational grid. This paper presents a deflated preconditioned conjugate gradients (DPCG) algorithm for accelerating the pressure Poisson solver. A subspace deflation technique is used to approximate the lowest eigenvalues along tubular domains. This methodology was tested with an idealized cylindrical model and three patient-specific models of cerebral arteries and aneurysms constructed from medical images. For these cases, the number of iterations decreased by up to a factor of 16, while the total CPU time was reduced by up to 4 times when compared with the standard PCG solver.
对由患者特定医学图像构建的动脉模型中的血流动力学进行研究,需要在具有复杂分支管状结构的几何形状中求解不可压缩流动方程。这类几何形状的主要挑战在于压力泊松求解器的收敛速度受计算网格的图形深度主导。本文提出一种用于加速压力泊松求解器的收缩预条件共轭梯度(DPCG)算法。采用子空间收缩技术来近似沿管状区域的最低特征值。该方法用一个理想化的圆柱形模型以及三个由医学图像构建的患者特定脑动脉和动脉瘤模型进行了测试。对于这些案例,与标准PCG求解器相比,迭代次数减少了多达16倍,而总CPU时间减少了多达4倍。