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Application of the Kalman Filter for Faster Strong Coupling of Cardiovascular Simulations

机译:卡尔曼滤波器在心血管模拟快速强耦合中的应用

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摘要

In this paper, we propose a method for reducing the computational cost of strong coupling for multiscale cardiovascular simulation models. In such a model, individual model modules of myocardial cell, left ventricular structural dynamics, and circulatory hemodynamics are coupled. The strong coupling method enables stable and accurate calculation, but requires iterative calculations which are computationally expensive. The iterative calculations can be reduced, if accurate initial approximations are made available by predictors. The proposed method uses the Kalman filter to estimate accurate predictions by filtering out noise included in past values. The performance of the proposed method was assessed with an application to a previously published multiscale cardiovascular model. The proposed method reduced the number of iterations by 90% and 62% compared with no prediction and Lagrange extrapolation, respectively. Even when the parameters were varied and number of elements of the left ventricular finite-element model increased, the number of iterations required by the proposed method was significantly lower than that without prediction. These results indicate the robustness, scalability, and validity of the proposed method.
机译:在本文中,我们提出了一种减少多尺度心血管模拟模型的强耦合计算成本的方法。在这样的模型中,心肌细胞,左心室结构动力学和循环血液动力学的各个模型模块是耦合的。强耦合方法可以实现稳定而准确的计算,但是需要迭代计算,而这在计算上是昂贵的。如果预测变量可以提供准确的初始近似值,则可以减少迭代计算。所提出的方法使用卡尔曼滤波器通过滤除过去值中包含的噪声来估计准确的预测。将该方法的性能与先前公布的多尺度心血管模型的应用进行了评估。与没有预测和拉格朗日外推相比,该方法分别将迭代次数减少了90%和62%。即使当参数改变并且左心室有限元模型的元素数量增加时,所提出的方法所需的迭代次数也明显低于没有预测的迭代次数。这些结果表明了该方法的鲁棒性,可扩展性和有效性。

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