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A Case Study in the Visualization of Supernova Simulation Data Ed Bachta Visualization and Interactive Spaces Lab Overview Introduction Lagrangian-Eulerian Advection Software Design Results Future Work A Core-collapse Supernova Begins with a star of 8+ solar masses Eventually, fusion produces Fe in the core Pressure from fusion loses to gravitation Material falls inward, increasing density Neutrinos radiated at a rate of 1057 /s Strong force halts collapse Remaining material rebounds off the core Shock wave carries material away from the core Simulation Doug Swesty & Eric Myra, SUNY Stony Brook Exploring the role of convection Radiation hydro code scales to 1000s of procs 2 spatial dimensions (soon to be extended to 3) 20 groups of neutrinos at different energies Lagrangian-Eulerian Advection A process for visualizing vector fields, valid for unsteady flows Noise is advected along the flow, generating an image as output Results Single frames portray instantaneous flow Animations simulate motion of material in flow Vector plot LEA “Lagrangian-Eulerian Advection for Unsteady Flow Visualizaion” v Noise at t-1 Lagrangian step Eulerian step Particles seeded randomly each iteration Backward integration finds upstream cell Color of upstream cell advected forward Results blended temporally with bias toward most recent Jobard, Erlebacher, Hussaini (IEEE Vis & CG 2002 [8:3]) LEA Animated Applied to velocity Propagation of light and dark areas indicates direction of flow Areas where noise remains have near-zero velocities Software Vis modules provided by the Visualization Tool Kit (VTK) LEA filter for VTK developed at the Swiss National Supercomputing Centre Scripts programmed in Python Results Combination of LEA with: Scalar data representations Via colormaps Via iso-contours Vector data comparisons Via visualization of dot products LEA & Scalars Velocity & Entropy Shows the development of regions of high entropy in upper convective zones LEA & Iso-Contours LEA & Optical Depth The iso-contour where optical depth = 1 describes the surface of last scattering 1 8 2 3 Generated for each energy group Our results show that these contours vary with energy group and evolve along with the shock LEA & Dot Products Advective vs. Radiative NeutrinoFlux Radiative neutrino flux Advective neutrino flux Tendency to propagate outward Effect of convection Dot product indicates: “Constructive” flux “Destructive” flux Orthogonal flux Comparison Over Energy Comparison of Gradients Lagrangian multipliers: ∂rf (r) = λ ∂rg(r) Describes a set of points where the iso-contours of f(r) and g(r) are tangential A positive λ indicates parallel gradients A negative λ indicates anti-parallel gradients Very similar to our dot product analysis The dot product reveals orthogonal conditions Entropy & Temp. Using our visualization scheme, we can see: Where the gradients are || Where they are anti-|| Where they are orthogonal How this relates to the flow of a vector field Future Work Extending the framework to support iteration Developing new visualization techniques Enabling remote visualization Intended for batch processing Investigating Web Services