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Numerical characterization of nonlinear dynamical systems using parallel computing: The role of GPUs approach

机译:使用并行计算的非线性动力学系统的数值表征:GPU方法的作用

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The characterization of nonlinear dynamical systems and their attractors in terms of invariant measures, basins of attractions and the structure of their vector fields usually outlines a task strongly related to the underlying computational cost. In this work, the practical aspects related to the use of parallel computing - specially the use of Graphics Processing Units (CPUs) and of the Compute Unified Device Architecture (CUDA) - are reviewed and discussed in the context of nonlinear dynamical systems characterization. In this work such characterization is performed by obtaining both local and global Lyapunov exponents for the classical forced Duffing oscillator. The local divergence measure was employed by the computation of the Lagrangian Coherent Structures (LCSs), revealing the general organization of the flow according to the obtained separatrices, while the global Lyapunov exponents were used to characterize the attractors obtained under one or more bifurcation parameters. These simulation sets also illustrate the required computation time and speedup gains provided by different parallel computing strategies, justifying the employment and the relevance of GPUs and CUDA in such extensive numerical approach. Finally, more than simply providing an overview supported by a representative set of simulations, this work also aims to be a unified introduction to the use of the mentioned parallel computing tools in the context of nonlinear dynamical systems, providing codes and examples to be executed in MATLAB and using the CUDA environment, something that is usually fragmented in different scientific communities and restricted to specialists on parallel computing strategies. (C) 2016 Elsevier B.V. All rights reserved.
机译:非线性动力学系统及其吸引子的不变量度,吸引盆地及其向量场的结构特征通常概述了与基础计算成本密切相关的任务。在这项工作中,在非线性动力学系统表征的背景下,对与并行计算的使用有关的实际方面,特别是图形处理单元(CPU)和计算统一设备体系结构(CUDA)的使用进行了讨论。在这项工作中,通过获得经典强制Duffing振荡器的局部和全局Lyapunov指数来进行这种表征。拉格朗日相干结构(LCSs)的计算采用了局部散度测度,揭示了根据获得的分离度的流动的一般组织,而全局Lyapunov指数用于表征在一个或多个分叉参数下获得的吸引子。这些仿真集还说明了由不同的并行计算策略提供的所需的计算时间和加速增益,从而证明了在如此广泛的数值方法中使用GPU和CUDA的重要性。最后,除了简单地提供具有代表性的一组模拟支持的概述之外,这项工作还旨在对非线性动力学系统中所提及的并行计算工具的使用进行统一介绍,并提供要在其中执行的代码和示例。 MATLAB和CUDA环境,通常分散在不同的科学界,并且仅限于并行计算策略的专家使用。 (C)2016 Elsevier B.V.保留所有权利。

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