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Scalability Study on Large-scale Parallel Finite element Computing in PANDA Frame
Fan, XuanHua ; Wu, Rui-an ; Chen, Pu
2012
关键词Large-scale parallel computing Finite element Scalability preconditioned conjugate gradient method Speedup ratio
DOI10.4028/www.scientific.net/AMM.117-119.489
英文摘要A Finite-element parallel computing frame-PANDA and its implementation processes are introduced. To validate the parallel performance of the PANDA frame, a series of tests were carried out to obtain the computing scale and the speedup ratios. First, three different large-scale freedom degree models (i.e. 1.83 million, 7 million and 10 million) of a typical engineering clamp were created in MSC.Patran and were translated into geometric-grid files that can be identified in PANDA frame. Second, Linear static parallel computations of the three cases were successfully carried out on large parallel computers with preconditioned conjugate gradient methods in PANDA frame. The speedup ratios of the three cases were obtained with a maximum process number of 64. The results show that the PANDA frame is competent for carrying out large-scale parallel computing of 10 million freedom degrees. In each scale, the parallel computing is nearly linearly accelerated along with the increase of process numbers, moreover, a super-linear speedup appears in some cases. The speedup curves show that the linear degree increases when the computing scale enlarges. The influence of different communication bandwidths on computing efficiency was also discussed. All the testing results indicate that the PANDA frame has excellent parallel performance and favorable computing scalability.; Engineering, Manufacturing; Mechanics; EI; CPCI-S(ISTP); 0
语种英语
内容类型会议论文
源URL[http://ir.pku.edu.cn/handle/20.500.11897/406060]  
专题工学院
推荐引用方式
GB/T 7714
Fan, XuanHua,Wu, Rui-an,Chen, Pu. Scalability Study on Large-scale Parallel Finite element Computing in PANDA Frame[C]. 见:.
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