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Dive into the research topics where Chaichalit Srisawat is active.

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Featured researches published by Chaichalit Srisawat.


Monthly Notices of the Royal Astronomical Society | 2013

Sussing merger trees: the Merger Trees Comparison Project

Chaichalit Srisawat; Alexander Knebe; Frazer R. Pearce; Aurel Schneider; Peter A. Thomas; Peter Behroozi; K. Dolag; Pascal J. Elahi; Jiaxin Han; John C. Helly; Yipeng Jing; Intae Jung; Jaehyun Lee; Yao Yuan Mao; Julian Onions; Vicente Rodriguez-Gomez; Dylan Tweed; Sukyoung K. Yi

Merger trees follow the growth and merger of dark-matter haloes over cosmic history. As well as giving important insights into the growth of cosmic structure in their own right, they provide an essential backbone to semi-analytic models of galaxy formation. This paper is the first in a series to arise from the Sussing Merger Trees Workshop in which 10 different tree-building algorithms were applied to the same set of halo catalogues and their results compared. Although many of these codes were similar in nature, all algorithms produced distinct results. Our main conclusions are that a useful merger-tree code should possess the following features: (i) the use of particle IDs to match haloes between snapshots; (ii) the ability to skip at least one, and preferably more, snapshots in order to recover subhaloes that are temporarily lost during merging; (iii) the ability to cope with (and ideally smooth out) large, temporary fluctuations in halo mass. Finally, to enable different groups to communicate effectively, we defined a common terminology that we used when discussing merger trees and we encourage others to adopt the same language. We also specified a minimal output format to record the results.


Monthly Notices of the Royal Astronomical Society | 2015

Major mergers going Notts: challenges for modern halo finders

Peter Behroozi; Alexander Knebe; Frazer R. Pearce; Pascal J. Elahi; Jiaxin Han; Hanni Lux; Yao-Yuan Mao; Stuart I. Muldrew; Doug Potter; Chaichalit Srisawat

Merging haloes with similar masses (i.e. major mergers) pose significant challenges for halo finders. We compare five halo-finding algorithms’ (ahf, hbt, rockstar, subfind, and velociraptor) recovery of halo properties for both isolated and cosmological major mergers. We find that halo positions and velocities are often robust, but mass biases exist for every technique. The algorithms also show strong disagreement in the prevalence and duration of major mergers, especially at high redshifts (z > 1). This raises significant uncertainties for theoretical models that require major mergers for, e.g. galaxy morphology changes, size changes, or black hole growth, as well as for finding Bullet Cluster analogues. All finders not using temporal information also show host halo and subhalo relationship swaps over successive timesteps, requiring careful merger tree construction to avoid problematic mass accretion histories. We suggest that future algorithms should combine phase-space and temporal information to avoid the issues presented.


Monthly Notices of the Royal Astronomical Society | 2014

SUSSING MERGER TREES: the influence of the halo finder

Santiago Avila; Alexander Knebe; Frazer R. Pearce; Aurel Schneider; Chaichalit Srisawat; Peter A. Thomas; Peter Behroozi; Pascal J. Elahi; Jiaxin Han; Yao Yuan Mao; Julian Onions; Vicente Rodriguez-Gomez; Dylan Tweed

Merger tree codes are routinely used to follow the growth and merger of dark matter haloes in simulations of cosmic structure formation. Whereas in Srisawat et. al. we compared the trees built using a wide variety of such codes, here we study the influence of the underlying halo catalogue upon the resulting trees. We observe that the specifics of halo finding itself greatly influences the constructed merger trees. We find that the choices made to define the halo mass are of prime importance. For instance, amongst many potential options different finders select self-bound objects or spherical regions of defined overdensity, decide whether or not to include substructures within the mass returned and vary in their initial particle selection. The impact of these decisions is seen in tree length (the period of time a particularly halo can be traced back through the simulation), branching ratio (essentially the merger rate of subhaloes) and mass evolution. We therefore conclude that the choice of the underlying halo finder is more relevant to the process of building merger trees than the tree builder itself. We also report on some built-in features of specific merger tree codes that (sometimes) help to improve the quality of the merger trees produced.


Monthly Notices of the Royal Astronomical Society | 2014

The life and death of cosmic voids

P. M. Sutter; Pascal J. Elahi; Bridget Falck; Julian Onions; Nico Hamaus; Alexander Knebe; Chaichalit Srisawat; Aurel Schneider

We investigate the formation, growth, merger history, movement, and destruction of cosmic voids detected via the watershed transform code VIDE in a cosmological N-body dark matter {\Lambda}CDM simulation. By adapting a method used to construct halo merger trees, we are able to trace individual voids back to their initial appearance and record the merging and evolution of their progenitors at high redshift. For the scales of void sizes captured in our simulation, we find that the void formation rate peaks at scale factor 0.3, which coincides with a growth in the void hierarchy and the emergence of dark energy. Voids of all sizes appear at all scale factors, though the median initial void size decreases with time. When voids become detectable they have nearly their present-day volumes. Almost all voids have relatively stable growth rates and suffer only infrequent minor mergers. Dissolution of a void via merging is very rare. Instead, most voids maintain their distinct identity as annexed subvoids of a larger parent. The smallest voids are collapsing at the present epoch, but void destruction ceases after scale factor 0.3. In addition, voids centers tend to move very little, less than 0.01 of their effective radii per ln a, over their lifetimes. Overall, most voids exhibit little radical dynamical evolution; their quiet lives make them pristine probes of cosmological initial conditions and the imprint of dark energy.


Monthly Notices of the Royal Astronomical Society | 2014

Sussing merger trees: the impact of halo merger trees on galaxy properties in a semi-analytic model

Jaehyun Lee; Sukyoung K. Yi; Pascal J. Elahi; Peter A. Thomas; Frazer R. Pearce; Peter Behroozi; Jiaxin Han; John C. Helly; Intae Jung; Alexander Knebe; Yao Yuan Mao; Julian Onions; Vicente Rodriguez-Gomez; Aurel Schneider; Chaichalit Srisawat; Dylan Tweed

A halo merger tree forms the essential backbone of a semi-analytic model for galaxy formation and evolution. Recent studies have pointed out that extracting merger trees from numerical simulations of structure formation is non-trivial; different tree building algorithms can give differing merger histories. These differences should be carefully understood before merger trees are used as input for models of galaxy formation. We investigate the impact of different halo merger trees on a semi-analytic model. We find that the z = 0 galaxy properties in our model show differences between trees when using a common parameter set. The star formation history of the universe and the properties of satellite galaxies can show marked differences between trees with different construction methods. Independently calibrating the semi-analytic model for each tree can reduce the discrepancies between the z = 0 global galaxy properties, at the cost of increasing the differences in the evolutionary histories of galaxies. Furthermore, the underlying physics implied can vary, resulting in key quantities such as the supernova feedback efficiency differing by factors of 2. Such a change alters the regimes where star formation is primarily suppressed by supernovae. Therefore, halo merger trees extracted from a common halo catalogue using different, but reliable, algorithms can result in a difference in the semi-analytic model. Given the uncertainties in galaxy formation physics, however, these differences may not necessarily be viewed as significant.


Monthly Notices of the Royal Astronomical Society | 2015

Non-linear bias of cosmological halo formation in the early universe

Kyungjin Ahn; Ilian T. Iliev; Paul R. Shapiro; Chaichalit Srisawat

We present estimates of the non-linear bias of cosmological halo formation, spanning a wide range in the halo mass from ∼105 to ∼1012 M⊙, based upon both a suite of high-resolution cosmological N-body simulations and theoretical predictions. The halo bias is expressed in terms of the mean bias and stochasticity as a function of local overdensity (δ), under different filtering scales, which is realized as the density of individual cells in uniform grids. The sampled overdensities span a range wide enough to provide the fully non-linear bias effect on the formation of haloes. A strong correlation between δ and halo population overdensity δh is found, along with sizable stochasticity. We find that the empirical mean halo bias matches, with good accuracy, the prediction by the peak-background split method based on the excursion set formalism, as long as the empirical, globally averaged halo mass function is used. Consequently, this bias formalism is insensitive to uncertainties caused by varying halo-identification schemes, and can be applied generically. We also find that the probability distribution function of biased halo numbers has wider distribution than the pure Poisson shot noise, which is attributed to the sub-cell-scale halo correlation. We explicitly calculate this correlation function and show that both overdense and underdense regions have positive correlation, leading to stochasticity larger than the Poisson shot noise in the range of haloes and halo-collapse epochs we study.


Monthly Notices of the Royal Astronomical Society | 2017

nIFTy Cosmology: the clustering consistency of galaxy formation models

Arnau Pujol; Ramin A. Skibba; E. Gaztanaga; Andrew J. Benson; Jeremy Blaizot; Richard G. Bower; J. Carretero; Francisco J. Castander; Andrea Cattaneo; Sofía A. Cora; Darren J. Croton; Weiguang Cui; Daniel Cunnama; Gabriella De Lucia; Julien Devriendt; Pascal J. Elahi; Andreea S. Font; Fabio Fontanot; Juan Garcia-Bellido; Ignacio D. Gargiulo; Violeta Gonzalez-Perez; John C. Helly; Bruno M. B. Henriques; Alexander Knebe; Jaehyun Lee; Gary A. Mamon; Pierluigi Monaco; Julian Onions; Nelson D. Padilla; Frazer R. Pearce

We present a clustering comparison of 12 galaxy formation models [including semi-analytic models (SAMs) and halo occupation distribution (HOD) models] all run on halo catalogues and merger trees extracted from a single Λ cold dark matter N-body simulation. We compare the results of the measurements of the mean halo occupation numbers, the radial distribution of galaxies in haloes and the two-point correlation functions (2PCF). We also study the implications of the different treatments of orphan (galaxies not assigned to any dark matter subhalo) and non-orphan galaxies in these measurements. Our main result is that the galaxy formation models generally agree in their clustering predictions but they disagree significantly between HOD and SAMs for the orphan satellites. Although there is a very good agreement between the models on the 2PCF of central galaxies, the scatter between the models when orphan satellites are included can be larger than a factor of 2 for scales smaller than 1 h−1 Mpc. We also show that galaxy formation models that do not include orphan satellite galaxies have a significantly lower 2PCF on small scales, consistent with previous studies. Finally, we show that the 2PCF of orphan satellites is remarkably different between SAMs and HOD models. Orphan satellites in SAMs present a higher clustering than in HOD models because they tend to occupy more massive haloes. We conclude that orphan satellites have an important role on galaxy clustering and they are the main cause of the differences in the clustering between HOD models and SAMs.


Monthly Notices of the Royal Astronomical Society | 2018

Cosmic CARNage I: on the calibration of galaxy formation models

Alexander Knebe; Frazer R. Pearce; Violeta Gonzalez-Perez; Peter A. Thomas; Andrew J. Benson; Rachel Asquith; Jeremy Blaizot; Richard G. Bower; J. Carretero; Francisco J. Castander; Andrea Cattaneo; Sofía A. Cora; Darren J. Croton; Weiguang Cui; Daniel Cunnama; Julien Devriendt; Pascal J. Elahi; Andreea S. Font; Fabio Fontanot; Ignacio D. Gargiulo; John C. Helly; Bruno M. B. Henriques; Jaehyun Lee; Gary A. Mamon; Julian Onions; Nelson D. Padilla; Chris Power; Arnau Pujol; Andrés N. Ruiz; Chaichalit Srisawat

We present a comparison of nine galaxy formation models, eight semi-analytical, and one halo occupation distribution model, run on the same underlying cold dark matter simulation (cosmological box of comoving width 125h−1 Mpc, with a dark-matter particle mass of 1.24 × 109h−1M⊙) and the same merger trees. While their free parameters have been calibrated to the same observational data sets using two approaches, they nevertheless retain some ‘memory’ of any previous calibration that served as the starting point (especially for the manually tuned models). For the first calibration, models reproduce the observed z = 0 galaxy stellar mass function (SMF) within 3σ. The second calibration extended the observational data to include the z = 2 SMF alongside the z ∼ 0 star formation rate function, cold gas mass, and the black hole–bulge mass relation. Encapsulating the observed evolution of the SMF from z = 2 to 0 is found to be very hard within the context of the physics currently included in the models. We finally use our calibrated models to study the evolution of the stellar-to-halo mass (SHM) ratio. For all models, we find that the peak value of the SHM relation decreases with redshift. However, the trends seen for the evolution of the peak position as well as the mean scatter in the SHM relation are rather weak and strongly model dependent. Both the calibration data sets and model results are publicly available.


Monthly Notices of the Royal Astronomical Society | 2016

Sussing merger trees: stability and convergence

Yang Wang; Frazer R. Pearce; Alexander Knebe; Aurel Schneider; Chaichalit Srisawat; Dylan Tweed; Intae Jung; Jiaxin Han; John C. Helly; Julian Onions; Pascal J. Elahi; Peter A. Thomas; Peter Behroozi; Sukyoung K. Yi; Vicente Rodriguez-Gomez; Yao Yuan Mao; Yipeng Jing; Weipeng Lin

Merger trees are routinely used to follow the growth and merging history of dark matter haloes and subhaloes in simulations of cosmic structure formation. Srisawat et al. compared a wide range of merger-tree-building codes. Here we test the influence of output strategies and mass resolution on tree-building. We find that, somewhat surprisingly, building the tree from more snapshots does not generally produce more complete trees; instead, it tends to shorten them. Significant improvements are seen for patching schemes that attempt to bridge over occasional dropouts in the underlying halo catalogues or schemes that combine the halo-finding and tree-building steps seamlessly. The adopted output strategy does not affect the average number of branches (bushiness) of the resultant merger trees. However, mass resolution has an influence on both main branch length and the bushiness. As the resolution increases, a halo with the same mass can be traced back further in time and will encounter more small progenitors during its evolutionary history. Given these results, we recommend that, for simulations intended as precursors for galaxy formation models where of the order of 100 or more snapshots are analysed, the tree-building routine should be integrated with the halo finder, or at the very least be able to patch over multiple adjacent snapshots.


Monthly Notices of the Royal Astronomical Society | 2018

Cosmic CARNage II: the evolution of the galaxy stellar mass function in observations and galaxy formation models

Rachel Asquith; Frazer R. Pearce; Omar Almaini; Alexander Knebe; Violeta Gonzalez-Perez; Andrew J. Benson; Jeremy Blaizot; J. Carretero; Francisco J. Castander; Andrea Cattaneo; Sofía A. Cora; Darren J. Croton; Julien Devriendt; Fabio Fontanot; Ignacio D. Gargiulo; W. G. Hartley; Bruno M. B. Henriques; Jaehyun Lee; Gary A. Mamon; Julian Onions; Nelson D. Padilla; Chris Power; Chaichalit Srisawat; Adam R. H. Stevens; Peter A. Thomas; Cristian A. Vega-Martínez; Sukyoung K. Yi

We present a comparison of the observed evolving galaxy stellar mass functions with the predictions of eight semi-analytic models and one halo occupation distribution model. While most models are able to fit the data at low redshift, some of them struggle to simultaneously fit observations at high redshift. We separate the galaxies into ‘passive’ and ‘star-forming’ classes and find that several of the models produce too many low-mass star-forming galaxies at high redshift compared to observations, in some cases by nearly a factor of 10 in the redshift range 2.5 < z < 3.0. We also find important differences in the implied mass of the dark matter haloes the galaxies inhabit, by comparing with halo masses inferred from observations. Galaxies at high redshift in the models are in lower mass haloes than suggested by observations, and the star formation efficiency in low-mass haloes is higher than observed. We conclude that many of the models require a physical prescription that acts to dissociate the growth of low-mass galaxies from the growth of their dark matter haloes at high redshift.

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Alexander Knebe

Autonomous University of Madrid

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Julian Onions

University of Nottingham

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Pascal J. Elahi

University of Western Australia

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Dylan Tweed

Shanghai Jiao Tong University

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Jiaxin Han

Chinese Academy of Sciences

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