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首页> 外文期刊>Journal of Computational and Applied Mathematics >Parallel iterative linear solvers for multistep Runge-Kutta methods
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Parallel iterative linear solvers for multistep Runge-Kutta methods

机译:用于多步Runge-Kutta方法的并行迭代线性求解器

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This paper deals with solving stiff systems of differential equations by implicit Multistep Runge-Kutta (MRK) methods. For this type of methods, nonlinear systems of dimension sd arise, where s is the number of Runge-Kutta stages and d the dimension of the problem. Applying a Newton process leads to linear systems of the same dimension, which can be very expensive to solve in practice. With a parallel iterative linear system solver, especially designed for MRK methods, we approximate these linear systems by s systems of dimension d, which can be solved in parallel on a computer with s processors. In terms of Jacobian evaluations and LU-decompositions, the k-steps-stage MRK applied with this technique is on s processors equally expensive as the widely used k-step Backward Differentiation Formula on 1 processor, whereas the stability properties are better than that of BDF. A simple implementation of both methods shows that, for the same number of Newton iterations, the accuracy delivered by the new method is higher than that of BDF.
机译:本文通过隐式多步Runge-Kutta(MRK)方法处理微分方程的刚性系统。对于这种类型的方法,会出现尺寸为sd的非线性系统,其中s是Runge-Kutta级数,而d是问题的维数。应用牛顿法会产生相同尺寸的线性系统,这在实践中解决起来可能非常昂贵。使用专门为MRK方法设计的并行迭代线性系统求解器,我们用d维的s个系统近似这些线性系统,可以在具有s个处理器的计算机上并行求解。就雅可比估计和LU分解而言,在此处理器上应用的k步级MRK与在1个处理器上广泛使用的k步向后微分公式同等昂贵,而稳定性优于。 BDF。两种方法的简单实现表明,对于相同数量的牛顿迭代,新方法提供的精度高于BDF。

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