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首页> 外文期刊>Mechanical Engineering Journal >Locally mesh-refined lattice Boltzmann method for fuel debris air cooling analysis on GPU supercomputer
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Locally mesh-refined lattice Boltzmann method for fuel debris air cooling analysis on GPU supercomputer

机译:GPU超级计算机燃料碎片空气冷却分析的局部网格 - 精制晶格玻璃螺柱

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A dry method is one of practical methods for decommissioning the TEPCO's Fukushima Daiichi nuclear power station. Japan Atomic Energy Agency (JAEA) has been evaluating the air cooling performance of the fuel debris by using the JUPITER code based on an incompressible fluid model and the CityLBM code based on the lattice Boltzmann method (LBM). However, these codes were based on a uniform Cartesian grid system, and required large computational time and cost to capture complicated debris structures and multi-scale flows at the actual reactor scale. The adaptive mesh refinement (AMR) method is one of the key techniques to accelerate multi-scale simulations. We develop an AMR version of the CityLBM code on GPU based supercomputers and apply it to thermal-hydrodynamics problems. The proposed method is validated against free convective heat transfer experiments at JAEA. Thanks to the AMR method, grid resolution is optimized near the walls where velocity and temperature gradients are large, and the temperature distribution agrees with the experimental data using half the number of grid points. It is also shown that the AMR based CityLBM code on 4 NVIDIA TESLA V100 GPUs gives 6.7x speedup of the time to solution compared with the JUPITER code on 36 Intel Xeon E5-2680v3 CPUs. The results show that the AMR based LBM is promising for accelerating extreme scale thermal convective simulations.
机译:干法是加入Tepco的福岛达奇核电站的实用方法之一。日本原子能机构(JAEA)一直在使用基于不可压缩的流体模型和基于格子Boltzmann方法(LBM)的CityLBM代码来评估燃料碎片的空气冷却性能。然而,这些代码基于均匀的笛卡尔栅系统,并且需要大的计算时间和成本以捕获实际反应堆刻度的复杂的碎片结构和多尺度流动。自适应网格细化(AMR)方法是加速多尺度仿真的关键技术之一。我们在基于GPU的超级计算机上开发了CityLBM代码的AMR版本,并将其应用于热流体动力学问题。该方法是针对JAEA的自由对流传热实验进行了验证的。由于AMR方法,网格分辨率在围墙附近进行了优化,其中速度和温度梯度大,温度分布与使用栅格点数的一半的实验数据一致。还显示,与36英特尔Xeon E5-2680V3 CPU的Jupiter Code相比,4 NVIDIA Tesla V100 GPU上的AMR的CityLBM代码给出了6.7倍的解决方案时间。结果表明,基于AMR的LBM是有希望加速极度热对流模拟。

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