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Enhancing performance and scalability of data transfer across sliding grid interfaces for time-accurate unsteady simulations of multistage turbomachinery flows

机译:增强跨滑动网格接口的数据传输的性能和可伸缩性,以进行时间精确的多级涡轮机械流动的不稳定模拟

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High fidelity simulations of the flow phenomena around complex geometries for turbomachinery applications require fluid solvers to run on ever increasing processor counts. For fully unsteady predictions in rotor-stator systems most of CFD codes employ the sliding interface technique. However, the scalability and efficiency of current sliding grid parallel implementations are significantly constrained by the computation and communication imbalances. They are associated with data transfer across discrete nonmatching interfaces. To prepare for the challenges at extreme scales in this paper we attempt to redesign the algorithm in such a way that it maintains the scalability of the original CFD code on static grids. In the proposed parallel implementation the cell containment search and interpolation workloads are balanced by employing a deterministic geometric decomposition on an intermediate "rendezvous" set of processes. Rapidly changing dynamic communication patterns induced by the grids relative motion are handled with a sparse communication protocol. The scaling behavior and performance of the developed technique are analyzed using realistic test cases on two different computing systems. (C) 2015 Rolls-Royce Plc. Published by Elsevier Ltd. All rights reserved.
机译:对于涡轮机械应用,围绕复杂几何形状的流动现象进行高保真模拟需要流体求解器在不断增加的处理器数量上运行。对于转子-定子系统中的完全不稳定的预测,大多数CFD代码都采用了滑动界面技术。但是,当前的滑动网格并行实现的可伸缩性和效率受到计算和通信不平衡的极大限制。它们与离散的不匹配接口上的数据传输相关联。为了应对极端挑战,我们尝试重新设计算法,使其在静态网格上保持原始CFD代码的可伸缩性。在提出的并行实现中,通过在中间的“集合”过程集上采用确定性的几何分解来平衡小区包含搜索和内插工作量。由网格相对运动引起的快速变化的动态通信模式可以通过稀疏通信协议来处理。在两个不同的计算系统上使用实际的测试用例分析了已开发技术的缩放行为和性能。 (C)2015罗尔斯·罗伊斯公司。由Elsevier Ltd.出版。保留所有权利。

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