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Cosmological N-Body Simulation - Topology of Large scale Structure. CCP 2006. 8. 29. Changbom Park with Juhan Kim (Korea Institute for Advanced Study) & J. R. Gott (Princeton) , J. Dubinski (CITA). History of Universe. Theme: Origin & Formation Mechanism of Cosmic Structures.
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Cosmological N-Body Simulation- Topology of Large scale Structure CCP 2006. 8. 29 Changbom Park with Juhan Kim (Korea Institute for Advanced Study) & J. R. Gott (Princeton), J. Dubinski (CITA)
Theme: Origin & Formation Mechanism of Cosmic Structures 1. Want to know Origin – primordial density fluctuations from inflation Formation Mechanism – galaxies form at peaks in density field smoothed over galactic scale? 2. Time is ripe Large redshift surveys of galaxies High precision measurements of 1. Relations among internal physical properties 2. Relations between internal properties and spatial & temporal environments
CfA1986 SDSS2006
h-1Mpc SDSS galaxies (Park et al. 2005, ApJ, 633, 11)
Effects ofNL Gravitational Evolution, Biasing, & Redshift Space Distortionon galaxy clustering & properties Cosmological N-Body Simulation For PRECISION COMPARISONbetween cosmological models with observations
Cosmological N-Body Simulation Requirement for galaxy formation study 1. Several times larger than largest survey >> 1000 h-1Mpc : for LSS formation + galaxy formation, velocity field * SDSS[2006] ~ 500 h-1Mpc * Hubble Depth S.[2015] ~ 2000 h-1Mpc 2. Should resolve objects with <<1011 h-1Msun (~ M*+2) : mean separation < 0.2 h-1Mpc currently 0.2~2000Mpc Number of particles > 50003~ 100003 will do! (100~1000 billion =10~100* current maximum)
Cosmological N-Body Simulation Progresses • ~ 104 CPUs • > 1010 particles Log N=0.2(Y-1970)+2
TreePM Code1 About Code 1. Long range (r>4 pixels, PM) + Short range(PM+Tree) G-forces 2. Tree generation in each slab & in each cube of 43 pixels 3. Min. # of particles for tree generation – Direct P2 if #(cube) < Ntree 4. Memory : ~3 x [16] x words per particle * 16 per particle: index2, position3, velocity3, acceleration3, mass1, softening length, computational work measurement, pointer * factor ~3 for memory imbalance * Buffer zone particles
TreePM Gravitational Force Tree + PM PM Gaussian Smoothed RG=0.9 pixels PM Force
TreePM Code2 Advantages 1. O(N log N) Tree operations for short range force – unlike P3M 2. Periodic boundary condition solved by PM – unlike Tree 3. No need to build a global tree – force correction only out to 4 pixels 4. Local Trees Parallelizable by domain decomposition (time) & disposable local trees keeping trees in 8x8xnz pixels (memory)
Parallelization 1. PM part 2. Tree part : Domain slabs of equal thickness : Domain slabs of equal # of tree force interactions & Buffer zone particles
TreePM Code3 5. Accuracy : ~ 0.5% RMS error in acceleration for θ=1 6. Performance
CPU time per step 10243 particles Regular backup & Pre-halo finding calculation
Load balance 10243 particles # of particles in domain slabs / homogeneous distribution
ΛCDM Simulations(Kim & Park 2004. 7) TreePM code GOTPM (Dubinski, Kim, Park 2003) 20483 mesh (initial condition) 20483 CDM particles 1024 & 5632 h-1Mpc size boxes 50 & 275 h-1kpc force resolutions * Using IBM SP3 at KISTI, 128 CPUs, 900 Gbytes, FOR PRECISION COMPARISON between cosmological models & real universe
Growth of Structures from initial Density Fluctuations 11.8b 13.7b t=0 7.7b
Dark Halo Identification (Kim& Park 2006: ΛCDM1024 h-1Mpc) Physically Self-Bound Halos Halo centers - local density peaks Binding E wrt local halo centers Tidal radii of subhalos wrt bigger halos Halos with >=53 particles (5x1011 M⊙)
Topology study 1. Gaussianity of the linear (primordial) density field predicted by simple inflationary scenarios 2. Topology of galaxy distribution at NL scales sensitive to cosmological parameters & to galaxy formation mechanism 3. Direct Intuitive meaning Large ScalesSmall Scales Primordial Gaussianity Galaxy Formation Cosmological Parameters
Genus– A Measure of Topology • Definition G = # of holes - # of isolated regions in iso-density contour surfaces = 1/4π·∫S κ dA (Gauss-Bonnet Theorem) [ex. G(sphere)=-1, G(torus)=0, ] : 2 holes – 1 body = +1 • Gaussian Field Genus/unit volume g(ν) = A (1-ν2) exp(- ν2/2) where ν=(ρ- ρb)/ ρbσ & A=1/(2π)2 <k2/3>3/2 if P(k)~kn, A RG3 =[8√2π2]-1 *[(n+3)/3]3/2
Clusters Bubbles HDM • Non-Gaussian Field (Toy models) (Weinberg, Gott & Melott 1987)
Non-Gaussianity: Genus-related statistics 1. Shift parameter : 2. Asymmetry parameters :AC, AV 3. Amplitude drop : RAAobs/APS RA AC Av
Biased Formation of Galaxies L-dependence of 1 & 2 point distribution, but also topology ! (Park et al. 2005)
Topology of LSS can be explained by GF models? LCDM1024 Matter field can’t ! void splitting void percolation Merger Halo formation (Park, Kim et al. 2005)
Probably yes! Topology of LSS can be explained by GF models? (Park et al. 2005) ~1 & Little evolution at low z HOD model for VL : sample Mr<-19.5 Direction of evolution ! <Nsat> = (M/M1)α for M>Mmin where logMmin=11.76, log M1=13.15, α=1.13 Mergers of halos AV < 1 !
Comparison of topology: SDSS vs CDM SDSS & 6 h-1Mpc scale; Kim+Park(o) & Springel(x)
Future of Cosmological N-Body Simulation 1. Useful for cosmology & galaxy formation study (until star formation can be properly simulated by radiative hydro-codes) 2. Need to reach # of particles >> 50003~ 100003 (10~100 current maximum) Dynamic range for other studies * Internal properties & environment: 1kpc ~ 100 Mpc * Galactic structure & star formation : 0.1pc ~ 100kpc