1 / 24

Modeling Power Evolution of Classical Double Radio Galaxies

This dissertation talk explores the impact of radio galaxies on the cosmological history of the universe, specifically their effects on galaxy formation, evolution, and star formation. The aim is to model the individual and cosmological evolution of radio galaxies and compare model predictions with observations.

murraysusan
Download Presentation

Modeling Power Evolution of Classical Double Radio Galaxies

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. Modeling the Power Evolution of Classical Double Radio Galaxies over Cosmological Scales Dissertation Talk Paramita Barai Dept. of Physics & Astronomy Georgia State University AAS 207th Meeting – Washington, DC 9 January 2006

  2. Motivation • To probe impact of Radio Galaxies (RGs) on the cosmological history of universe • Expanding RGs affected galaxy formation & evolution during the quasar era (1.5 < z < 3) • Trigger star formation Rees – 1989; Gopal-Krishna & Wiita – 2001 • Spread metals and magnetic field into IGM • How much volume of the Relevant Universe (baryonic filaments only) do radio lobes occupy? • Aim: Model individual & cosmological evolution of RGs P. Barai, GSU

  3. Procedures • Semi-analytical models for RG dynamics & power evolution • Compare model predictions with observations • Extensive Statistical test quantifying the success of a model in predicting RG evolution • Choose best model, estimate physical implications Compare model predictions with observations • Virtual (pseudo) Radio Surveys -- Monte Carlo Simulations P. Barai, GSU

  4. Dynamics: Kaiser & Alexander 1997, MNRAS, 286, 215 Power: KDA: Kaiser, Dennett-Thorpe & Alexander 1997, MNRAS, 292, 723 BRW: Blundell, Rawlings & Willott 1999, AJ, 117, 677 MK: Manolakou & Kirk 2002, A&A, 391, 127 K2000: Kaiser 2000, A&A, 362, 447 BRW-modified: Vary hotspot size MK-modified: Vary hotspot size Observables: z, P, D,  Low freq. -- 151 MHz: isotropic lobe emission, negligible Doppler boosting Flux-limited, complete radio surveys from Cambridge catalogs: 3CRR 6CE 7CRS Models & Observations P. Barai, GSU

  5. Radio Sky Simulation (BRW)via Multi-dimensional Monte Carlo • RG population generated from early z • Random distribution functions in z, jet power (Q0), age (tage) • Each source’s P, D evolved according to model • At tage, find what flux reaches earth now (from redshift z) • If flux > survey limit, then RG is detected • Populations for 3C, 6C and 7C surveys  from same ensemble by  its size in ratio to the sky area of each survey • Ensemble size 106 – 107  50-200 detected in virtual surveys

  6. tbir, tage, (zobs), Q0 For each source Sources born every 106 years – from z = 10  tbir TMaxAge = 500 Myr Sources distributed uniformly within comoving cosmological volume  tage Jet power distribution if, Qmin < Q0 < Qmax Qmin = 5  1037 W Qmax = 5  1042 W x = 2.6 Redshift distribution z0 = 2.2 z0 = 0.6 Initial RG Population Generation P. Barai, GSU

  7. Radio Luminosity Function (Willott et. al. 2001) P. Barai, GSU

  8. Ambient medium power-law density profile BRW & MK 0 = 1.6710–23 kg m–3  = 1.5 a0 = 10 kpc KDA 0 = 7.210–22 kg m–3  = 1.9 a0 = 2 kpc Size / Total separation between hotspots t : Age of source Q0 : Power of each jet Radio Galaxy Dynamical Evolution P. Barai, GSU

  9. Cylindrical jets move out & accelerate particles (e–' s) at termination shocks Transport of relativistic particles (e– 's) from head to lobe, where they emit (in radio) via synchrotron mechanism Power Losses: Adiabatic loss (as source expands) Inverse Compton scattering off CMB photons Synchrotron radiation BUT key aspects of the models are different Each model ~ 10 parameters Results sensitive to 4–5 of them Energy distribution KDA, MK: Single power-law BRW: break frequencies Adiabatic loss KDA: h.s. pressure  with t BRW: Constant h.s. size MK: Ad. losses in head compensated (by some turbulent re-acceleration process) during transport Shared Physics & Variations

  10. P. Barai, GSU

  11. Kolmogorov – Smirnov (K–S) test: Find probability, P(K-S) that the quantities of model and observation are drawn from same cumulative distribution population Add the P’s for P, D, z, for the 3 surveys in ratio of the square root of the number detected in a survey: P[P, D, z], P[P, 2D, z] Statistics from several runs (with different initial random seeds) considered for each parameter variation Varied many parameters for each model to possible alternative values Most significant improvement with: x = 3.0 TMaxAge = 150 Myr (KDA & MK) = 250 Myr (BRW) Statistical Test P. Barai, GSU

  12. Parameters of KDA, BRW, MK Models Giving Best Results P. Barai, GSU

  13. P. Barai, GSU

  14. P. Barai, GSU

  15. P. Barai, GSU

  16. P. Barai, GSU

  17. P. Barai, GSU

  18. P. Barai, GSU

  19. Results on Original Models • Some models give acceptable fits for P, D, z • No good  fit by any model or variations considered so far • Detection number ratio: MK, KDA, BRW • K-S stat values: MK & KDA > BRW • Overall best – MK • Best (least bad) fits model parameters  • x=3.0, TMaxAge = 150, 250 Myr KDA, BRW: • Less dense ambient medium • More efficient acceleration and injection from h.s. to lobes MK: • Contribution from particles of higher & lower energies

  20. Kaiser (2000) proposed modification to KDA: Different ratio of hotspot to lobe pressure I have produced modifications to both BRW and MK: Hot spot size grows as source ages rhs vs. D data Jeyakumar & Saikia 2000, MNRAS, 311, 397 Quadratic fit gave least 2 K2000: too flat P -D tracks, worse statistics P[P, D, z]=0.282, P[P, 2D, z]=0.562 BRW-modified: better K-S stats after introducing growing hotspot size Mean P[P, D, z] = 1.927 Mean P[P, 2D, z] = 2.273 MK-modified: results comparable to or worse than MK default P[P, D, z]=1.72, P[P, 2D, z]=2.34 Modifications to the Models

  21. P. Barai, GSU

  22. Environment density becomes constant after ISM-IGM boundary Redshift evolution of ambient medium density 0, a0,  changes with z Incorporate Doppler-boosted core and jet emission to predict total power emitted See if same models can be used to match larger, deeper radio survey catalogs: NVSS, WENSS, FIRST Poster: session 25, Kimball et al. Adopt best model  Compute the volume fraction of the relevant universe filled by radio lobes Discuss cosmological impact of expanding RGs Current Work & Future Plans

  23. Summary • Made quantitative comparisons between models of RG evolution using our extensive simulations and K-S test based statistical analysis • Some published models give acceptable fits to P, D, z of radio surveys 3C, 6C, 7C • Modified models can give improved fits and will be extended to deeper radio surveys P. Barai, GSU

  24. References • Blundell K.M., Rawlings S. & Willott C.J. 1999, AJ, 117, 677 (BRW) • Gopal-Krishna & Wiita P.J. 2001, ApJ, 560, L115 • Jeyakumar S. & Saikia D.J. 2000, MNRAS, 311, 397 • Kaiser C.R. & Alexander P. 1997, MNRAS, 286, 215 • Kaiser C.R., Dennett-Thorpe J. & Alexander P. 1997, MNRAS, 292, 723 (KDA) • Kaiser C.R. 2000, A&A, 362, 447 (K2000) • Manolakou K. & Kirk J.G. 2002, A&A, 391, 127 (MK) • Rees M.J. 1989, MNRAS, 239, 1P P. Barai, GSU

More Related