DocumentCode :
1791598
Title :
In-situ visualization and computational steering for large-scale simulation of turbulent flows in complex geometries
Author :
Hong Yi ; Rasquin, Michel ; Jun Fang ; Bolotnov, Igor A.
Author_Institution :
Renaissance Comput. Inst., Univ. of North Carolina, Chapel Hill, NC, USA
fYear :
2014
fDate :
27-30 Oct. 2014
Firstpage :
567
Lastpage :
572
Abstract :
Large-scale simulations conducted on supercomputers such as leadership-class computing facilities allow researchers to simulate and study complex problems with high fidelity, and thus have become indispensable in diverse areas of science and engineering. These high-fidelity simulations generate vast amount of data which is becoming more and more difficult to transform into knowledge using traditional visual analysis approaches. For instance, there are tremendous challenges in analyzing big data produced by high-fidelity simulations in order to gain meaningful insight into complex phenomena such as turbulent two-phase flows. The traditional workflow, which consists in conducting simulations on supercomputers and recording enormous raw simulation data to disk for further post-processing and visualization, is no longer a viable approach due to prohibitive cost of disk access and considerable amount of time spent on data transfer. Visual Analytics approaches for big data have to be researched and employed to address the problem of knowledge discovery from such large-scale simulations. One approach to tackle this issue is to couple a numerical simulation with in-situ visualization so that the post-processing and visualization occurs while the simulation is running. This in-situ approach minimizes data storage by extracting and visualizing important features of the data directly within the simulation without saving the raw data to disk. In addition, in-situ visualization allows users to steer the simulation by adjusting input parameters while the simulation is ongoing. In this paper, we present our approach for in-situ visualization of simulation data generated by massively parallel finite-element computational fluid dynamics solver (PHASTA) instrumented and linked with ParaView Catalyst. We demonstrate our in-situ visualization and simulation steering capability with a fully resolved turbulent flow through 2×2 reactor subchannel complex geometry. In addition, we- present results from our in-situ visualization for turbulent flow simulations conducted on the supercomputers Cray XK7 “Titan” at Oak Ridge National Laboratory and IBM BlueGene/Q “Mira” at Argonne National Laboratory up to 32,768 cores and examine the overhead of in-situ visualization and its effect on code performance.
Keywords :
channel flow; computational fluid dynamics; data analysis; data visualisation; finite element analysis; flow simulation; flow visualisation; mainframes; parallel machines; turbulence; two-phase flow; Argonne National Laboratory; IBM BlueGene-Q Mira; Oak Ridge National Laboratory; complex geometries; computational steering; data storage; in-situ visualization; large-scale turbulent flow simulation; leadership-class computing facilities; numerical simulation; parallel finite element computational fluid dynamics solver; paraview catalyst; reactor subchannel complex geometry; supercomputers Cray XK7 Titan; traditional visual analysis; turbulent two-phase flow; visual analytics; Adaptation models; Computational modeling; Data models; Data visualization; Numerical models; Pipelines; Visualization;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Big Data (Big Data), 2014 IEEE International Conference on
Conference_Location :
Washington, DC
Type :
conf
DOI :
10.1109/BigData.2014.7004275
Filename :
7004275
Link To Document :
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