大规模GPU加速PPMLR-MHD空间天气预报模拟

Xiangyu Guo, Binbin Tang, Jian Tao, Zhaohui Huang, Zhihui Du
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引用次数: 2

摘要

PPMLR-MHD是一种新的磁流体动力学(MHD)模型,用于模拟太阳风与磁层的相互作用,它已被证明是从太阳到地球的空间天气因果链过程的关键要素。与现有的MHD方法相比,PPMLR-MHD方法具有高阶空间精度和低数值耗散的优点。然而,准确性是有代价的。一方面,这种方法需要更密集的计算。另一方面,在模拟过程中需要传递更多的边界数据。在这项工作中,我们提出了利用cpu和gpu的计算能力实现PPMLR-MHD模型的并行混合解决方案。我们证明了我们的优化实现通过使用GPU Direct技术减轻了数据传输开销,并且可以扩展到151个进程,并且通过在橡树岭国家实验室的Titan上在cpu和GPU之间分配工作负载来实现显着的性能提升。性能结果表明,我们的实现速度足够快,可以实时进行高精度的MHD模拟。
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Large Scale GPU Accelerated PPMLR-MHD Simulations for Space Weather Forecast
PPMLR-MHD is a new magnetohydrodynamics (MHD) model used to simulate the interactions of the solar wind with the magnetosphere, which has been proved to be the key element of the space weather cause-and-effect chain process from the Sun to Earth. Compared to existing MHD methods, PPMLR-MHD achieves the advantage of high order spatial accuracy and low numerical dissipation. However, the accuracy comes at a cost. On one hand, this method requires more intensive computation. On the other hand, more boundary data is subject to be transferred during the process of simulation. In this work, we present a parallel hybrid solution of the PPMLR-MHD model implemented using the computing capabilities of both CPUs and GPUs. We demonstrate that our optimized implementation alleviates the data transfer overhead by using GPU Direct technology and can scale up to 151 processes and achieve significant performance gains by distributing the workload among the CPUs and GPUs on Titan at Oak Ridge National Laboratory. The performance results show that our implementation is fast enough to carry out highly accurate MHD simulations in real time.
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