html5-img
1 / 17

Semi-Numerical Simulations of

Semi-Numerical Simulations of. HII Bubble Growth During. Reionization. August 14, 2008. Patrick Ho, SULI Program. Mentor: Marcelo Alvarez, SLAC KIPAC. Reionization. Recombination (z ~ 1100). Key phase transition in cosmological history: HI becomes HII.

napua
Télécharger la présentation

Semi-Numerical Simulations of

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Semi-Numerical Simulations of HII Bubble Growth During Reionization August 14, 2008 Patrick Ho, SULI Program Mentor: Marcelo Alvarez, SLAC KIPAC

  2. Reionization Recombination (z ~ 1100) • Key phase transition in cosmological history: HI becomes HII. • First star formation leads to HII “bubble growth” and eventually complete reionization. “First light” and beginning of reionization. (z < 14) Reionization completes. (z > 6)

  3. Motivation for Studying Reionization • Small-scale density fluctuations. • Structure formation and early stars. • Segue from relative homogeneity and primordial perturbations in CMB spectrum to modern-day complexity.

  4. Motivation for Reionization Simulations • Observational results: • Ly- measurements: • Gunn-Peterson trough: Very small amount of HI absorbs completely. • CMB Polarization: Fan et. al. 2000 Fan, Carilli, and Keating 2006 • Simulation can probe details regarding reionization history in between observational constraints. • Also investigate models and fit to constraints.

  5. Simulating Reionization • Brute force: N-body and radiative transfer simulations. • Computationally taxing. • Semi-analytical method (Zahn, et. al. 2006). • Calculate one set of values over domain: when does each position become ionizing? • Much more efficient. dt dt dt N3 N3 N3 N3

  6. Semi-Numerical Method • Ionization efficiency simplification: • Ionization condition (using Extended Press-Schechter theory for collapse fraction): • Extract from above; find earliest (maximum) redshift of reionization.

  7. Semi-Numerical Method • Simplified chart for algorithm: Input: density distribution derived from random Gaussian field. Read in values. Calculate values at each point and thus at each point for a range of smoothing scales. Look up values for each point and find earliest value. Output as time of reionization for that point.

  8. Our Simulation • Ultimate aim is efficiency for testing parameter space of model. • Radiative transfer simulations prohibitively slow, must use semi-numerical method. • Our simulation: tree code, calculates smoothed overdensity in real space. • Vs. FFT k-space smoothing, optimal for use with Graphics Processing Unit (GPU). • On a single CPU, code runs ~10-15 minutes. • In other simulations, GPU has provided 10-100x increase in speed.

  9. Results: Cross correlation • Comparison of our tree code to existing FFT code. • Cross correlation coefficient, measure of similarity between sets of data. • Where power spectrum:

  10. Results: Cross Correlationcont’d • Very well correlated, insensitive to ionization efficiency, smoothing scale resolution.

  11. Results: Cross Correlationcont’d • Illustration of effect of parameters: minimum scale Rmin has a profound effect on correlation on small scales.

  12. Results: Cross Correlationcont’d • Comparison of FFT-based (left) and real-space (right) simulations, from z = 16.0 to z = 8.3.

  13. Results: HII Bubble Evolution • HII region formation under conditions: z = 28.9 z = 21.6 z = 18.8 z = 16.9 z = 14.5 z = 12.3

  14. Results: HII Bubble Evolution

  15. Conclusions and Future work • Conclusions: • Simulation successfully produces results corresponding very closely to output of previous simulations. • Simulation optimized sufficiently to run relatively efficiently. • Sampling of parameter space so far shows little effect on accuracy from ionization efficiency or resolution in smoothing scales; but large effect from minimum scale Rmin. • (Near) Future work: • Continue sampling parameter space for efficiency and accuracy. • Compile code for GPU. • Increase from 1283 to 2563, 5123, even 10243 sized domains. • Sample parameter space for investigating reionization physics.

  16. Acknowledgements • Thanks to Marcelo Alvarez for his mentorship; Matt Turk for his help. • Thanks to Steve Rock, Farah Rahbar, and Susan Schultz for their stewardship of the SULI program. • Thanks to the DOE Office of Science and SLAC for sponsoring the program.

  17. Happy (21st!) Birthday Ted

More Related