Reducing the computational time required by high-fidelity, full order models (FOMs) for the solution of problems in cardiac mechanics is crucial to allow the translation of patient-specific simulations into clinical practice. While FOMs, such as those based on the finite element method, provide valuable information of the cardiac mechanical function, up to hundreds of thousands degrees of freedom may be needed to obtain accurate numerical results. As a matter of fact, simulating even just a few heartbeats can require hours to days of CPU time even on powerful supercomputers. In addition, cardiac models depend on a set of input parameters that we could let vary in order to explore multiple virtual scenarios. To compute reliable solutions at a greatly reduced computational cost, we rely on a reduced basis method empowered with a new deep-learning based operator approximation, which we refer to as Deep-HyROMnet technique. Our strategy combines a projection-based POD-Galerkin method with deep neural networks for the approximation of (reduced) nonlinear operators, overcoming the typical computational bottleneck associated with standard hyper-reduction techniques. This method is shown to provide reliable approximations to cardiac mechanics problems outperforming classical projection-based ROMs in terms of computational speed-up of orders of magnitude, and enhancing forward uncertainty quantification analysis otherwise unaffordable.
翻译:降低高贞操要求的计算时间,完全定序模型(FOMS)对于解决心脏机理问题所需的计算时间至关重要,因为完全定序模型(FOMS)对于将病人特定模拟转化为临床实践至关重要。FOMS,例如基于有限元素方法的模型,提供心脏机理功能的宝贵信息,可能需要高达数十万度的自由度才能获得准确的数值结果。事实上,即使只模拟几节心跳,也可能需要几小时至几天的CPU时间。此外,心脏模型取决于一套输入参数,而我们为了探索多种虚拟情景而可以允许差异。要以大幅降低计算成本来计算可靠的解决方案,我们依靠一种更低的基础方法,通过基于新的深学习的操作器近似法,我们称之为深湿内技术。我们的战略是将基于预测的POD-Galerkin方法与用于近似(减少的)非线性计算机操作员的深神经网络结合起来。此外,该方法还取决于一套与标准的超降级技术相关的典型的计算瓶。这个方法,我们依靠一种更可靠的、更精确的、更精确的、更精确的、更精确的模型化的模型分析。