• DocumentCode
    1365244
  • Title

    Feature-Based Statistical Analysis of Combustion Simulation Data

  • Author

    Bennett, J.C. ; Krishnamoorthy, V. ; Shusen Liu ; Grout, R.W. ; Hawkes, E.R. ; Chen, J.H. ; Shepherd, J. ; Pascucci, V. ; Bremer, P.-T.

  • Author_Institution
    Sandia Nat. Labs., Albuquerque, NM, USA
  • Volume
    17
  • Issue
    12
  • fYear
    2011
  • Firstpage
    1822
  • Lastpage
    1831
  • Abstract
    We present a new framework for feature-based statistical analysis of large-scale scientific data and demonstrate its effectiveness by analyzing features from Direct Numerical Simulations (DNS) of turbulent combustion. Turbulent flows are ubiquitous and account for transport and mixing processes in combustion, astrophysics, fusion, and climate modeling among other disciplines. They are also characterized by coherent structure or organized motion, i.e. nonlocal entities whose geometrical features can directly impact molecular mixing and reactive processes. While traditional multi-point statistics provide correlative information, they lack nonlocal structural information, and hence, fail to provide mechanistic causality information between organized fluid motion and mixing and reactive processes. Hence, it is of great interest to capture and track flow features and their statistics together with their correlation with relevant scalar quantities, e.g. temperature or species concentrations. In our approach we encode the set of all possible flow features by pre-computing merge trees augmented with attributes, such as statistical moments of various scalar fields, e.g. temperature, as well as length-scales computed via spectral analysis. The computation is performed in an efficient streaming manner in a pre-processing step and results in a collection of meta-data that is orders of magnitude smaller than the original simulation data. This meta-data is sufficient to support a fully flexible and interactive analysis of the features, allowing for arbitrary thresholds, providing per-feature statistics, and creating various global diagnostics such as Cumulative Density Functions (CDFs), histograms, or time-series. We combine the analysis with a rendering of the features in a linked-view browser that enables scientists to interactively explore, visualize, and analyze the equivalent of one terabyte of simulation data. We highlight the utility of this new framework for combustion s- ience; however, it is applicable to many other science domains.
  • Keywords
    chemically reactive flow; combustion; flow simulation; interactive systems; meta data; mixing; numerical analysis; rendering (computer graphics); statistical analysis; turbulence; astrophysics; climate modeling; combustion science; combustion simulation data; cumulative density function; data streaming; direct numerical simulation; feature based statistical analysis; geometrical features; histograms; interactive analysis; large scale scientific data; linked view browser; merge trees; meta data collection; molecular mixing process; molecular reactive process; nonlocal entities; spectral analysis; time series; transport process; turbulent combustion; turbulent flow; Data mining; Data models; Feature extraction; Information analysis; Statistical analysis; Data analysis; Data exploration; Multi-variate Data.; Statistics; Topology; Visualization in Physical Sciences and Engineering;
  • fLanguage
    English
  • Journal_Title
    Visualization and Computer Graphics, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1077-2626
  • Type

    jour

  • DOI
    10.1109/TVCG.2011.199
  • Filename
    6064945