Summary
Computational modeling of the heart is a subject of substantial medical and scientific interest, which may contribute to increase the understanding of several phenomena associated with cardiac physiological and pathological states. Modeling the mechanics of the heart have led to considerable insights, but it still represents a complex and a demanding computational problem, especially in a strongly coupled electromechanical setting. Passive cardiac tissue is commonly modeled as hyperelastic, and is characterized by quasi-incompressible, orthotropic and non-linear material behavior. These factors are known to be very challenging for the numerical solution of the model. The near-incompressibility is known to cause numerical issues such as the well known locking phenomenon and ill-conditioning of the stiffness matrix. In this work, the Augmented Lagrangian method (ALG) is used to handle the nearly incompressible condition. This approach can potentially improve computational performance by reducing the condition number of the stiffness matrix and thereby improving the convergence of iterative solvers. We also improve the performance of iterative solvers by the use of an algebraic multigrid preconditioner. Numerical results of the ALG method combined with a preconditioned iterative solver for a cardiac mechanics benchmark suite are presented to show its improved performance. This article is protected by copyright. All rights reserved.
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