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Adaptive Time Domain Decomposition for systems of ODEs on Grid architecture

机译:网格架构杂散系统的自适应时域分解

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Modelling complex systems can lead to solve ODEs, and/or DAEs systems to understand the dynamics behavior, eventually stiff, of the solutions. The main difficulty in term of parallel implementation of such systems of equations is the poor granularity of the computations, especially, for the grid computing architecture, which is characterized by a large number of processors. Nevertheless, the development of low cost parallel computer change the concept of an efficient parallel implementation. The number of available processors allows to consider these computational resources to improve the confidence in the solution by combining several schemes of different orders and different discretisations, to validate and to verify the result. The main approach used in the past to obtain parallel solver for ODEs systems consists to parallelize "across the method" which distributes to the processors the computation of steps of multi-step methods as Runge-Kutta RK(4) method. The number of processors used is limited as it depends of the number of steps. An another approach is the time decomposition method was originaly introduced by people from the multi-grid field and was applied to solve PDEs. The "parareal" scheme proposed in [5] follows this approach to consider two levels of grids in time in order to split the domain in time in subdomains. A prediction of the solution is computed on the fine grid in time in parallel. Then at each end boundaries of time sub-domains the solution makes a jump with the previous initial boundary value (IBV) of the next subdomain in time. A correction of the IBV for the next fine grid iterate is then computed on the coarse grid in time. [2] shows that the method converge at least in a finite number of iterations, due to the propagation of the fine time grid solution as at each iteration k, the IBV of the k~(th) time sub-domain is exact. Nevertheless, this approach seems to have difficulties for stiff non linear problems eventually with bifurcation parameters. We propose in this paper to investigate the same concept of prediction on fine grid and correction on coarse grid but with introducing more adaptivity in the definition of the fineness of the grids, the number of grids for correction, and the decomposition of the time interval. We expect to improve the method in order to solve stiff ODEs problems. We postulate that we can have as much processors as we need (grid architecture), and the main focus is to reduce the elapse time to obtain the solution on a finite time interval with a given precision.
机译:建模复杂系统可以导致解决ODES和/或DAES系统,以了解解决方案的动态行为,最终僵硬。这些等式系统的并行实施期限的主要困难是计算的粒度差,特别是对于网格计算架构,其特征在于大量处理器。然而,低成本并行计算机的发展改变了有效的平行实现的概念。可用处理器的数量允许通过组合不同订单和不同的离散模式的多种方案来考虑这些计算资源来提高解决方案的置信度,以验证和验证结果。过去用于获得ODES系统并行求解器的主要方法包括并行化“跨越方法”,该方法分布到处理器的多步骤方法的计算作为runge-Kutta RK(4)方法。使用的处理器数量有限,因为它取决于步数。另一种方法是时间分解方法是由多网格领域的人们引入的最初原始的,并应用于解决PDE。 [5]中提出的“宫间”方案遵循这种方法,以考虑两级电网时间,以便在亚域内及时分割域。将解决方案的预测并行地在细网上计算。然后,在时间子域的每个端边界处,解决方案与下一个子域的先前初始边界值(IBV)跳转。然后在粗略网格上计算下一个精细网格迭代的IBV的校正。 [2]示出了该方法至少在有限数量的迭代中收敛,由于精细时间网格解决方案的传播,因为在每个迭代k时,k〜(th)时间子域的IBV精确。然而,这种方法似乎最终具有困难的非线性问题难以提出分叉参数。我们提出本文以研究对细网的预测和粗网格的校正的相同概念,但在网格的细度定义中引入更多适应性,校正的网格数以及时间间隔的分解。我们希望改进该方法以解决僵硬的杂散问题。我们假设我们可以拥有尽可能多的处理器(网格架构),并且主要焦点是减少经过时间,以获得具有给定精度的有限时间间隔的解决方案。

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