Deo Makarand, Bauer Steffen, Plank Gernot, Vigmond Edward
Department of Electrical and Computer Engineering, University of Calgary, 2500 University Drive NW, Calgary, AB T2N 1N4, Canada.
IEEE Trans Biomed Eng. 2007 May;54(5):938-42. doi: 10.1109/TBME.2006.889203.
Simulations of the bidomain equations involve solving large, sparse, linear systems of the form Ax = b. Being an initial value problems, it is solved at every time step. Therefore, efficient solvers are essential to keep simulations tractable. Iterative solvers, especially the preconditioned conjugate gradient (PCG) method, are attractive since memory demands are minimized compared to direct methods, albeit at the cost of solution speed. However, a proper preconditioner can drastically speed up the solution process by reducing the number of iterations. In this paper, a novel preconditioner for the PCG method based on system order reduction using the Arnoldi method (A-PCG) is proposed. Large order systems, generated during cardiac bidomain simulations employing a finite element method formulation, are solved with the A-PCG method. Its performance is compared with incomplete LU (ILU) preconditioning. Results indicate that the A-PCG estimates an approximate solution considerably faster than the ILU, often within a single iteration. To reduce the computational demands in terms of memory and run time, the use of a cascaded preconditioner was suggested. The A-PCG was applied to quickly obtain an approximate solution, and subsequently a cheap iterative method such as successive overrelaxation (SOR) is applied to further refine the solution to arrive at a desired accuracy. The memory requirements are less than those of direct LU but more than ILU method. The proposed scheme is shown to yield significant speedups when solving time evolving systems.
双域方程的模拟涉及求解形如Ax = b的大型稀疏线性系统。作为初值问题,需要在每个时间步进行求解。因此,高效的求解器对于使模拟易于处理至关重要。迭代求解器,特别是预处理共轭梯度(PCG)方法很有吸引力,因为与直接方法相比,其内存需求最小化,尽管以求解速度为代价。然而,合适的预处理器可以通过减少迭代次数极大地加快求解过程。本文提出了一种基于使用阿诺尔迪方法(A - PCG)进行系统降阶的PCG方法的新型预处理器。采用有限元方法公式进行心脏双域模拟时生成的高阶系统,用A - PCG方法求解。将其性能与不完全LU(ILU)预处理进行比较。结果表明,A - PCG估计近似解的速度比ILU快得多,通常在一次迭代内即可完成。为了减少内存和运行时间方面的计算需求,建议使用级联预处理器。先应用A - PCG快速获得近似解,随后应用诸如逐次超松弛(SOR)等廉价的迭代方法进一步细化解以达到所需精度。内存需求小于直接LU分解法但大于ILU方法。结果表明,所提出的方案在求解随时间演化的系统时能显著加速。