Using Morphology to understand Galaxy Evolution across the Dwarf and Massive-Galaxy Regimes
Abstract
The morphological properties of galaxies are important tracers of the physical processes, e.g. minor/major
mergers, gas accretion and tidal interactions, that have shaped their evolution. This thesis first studies
the morphological and structural properties of dwarf galaxies (which remain relatively unexplored
compared to massive galaxies). It then explores the measurement of morphology using unsupervised
machine learning (UML) algorithms, which will become important in the forthcoming era of peta and
exascale surveys that will dominate the astrophysical landscape in the future.
I use a complete, unbiased sample of 257 dwarf (108 M⊙ < M⋆ < 109.5 M⊙) galaxies at z < 0.08, in the
COSMOS field, to study the morphological mix of the dwarf population in low-density environments.
Visual inspection of extremely deep optical images reveals three principal morphological classes: 43
and 45 per cent of dwarfs exhibit the traditional ‘early-type’ (elliptical/S0) and ‘late-type’ (spiral) morphologies
respectively, while 10 per cent populate a ‘featureless’ class, that lacks both the central light
concentration seen in early-types and any spiral structure. This class is missing in the massive-galaxy
regime. Compared to their massive counterparts, dwarf early-types show a much lower incidence of
interactions, are significantly less concentrated and share similar rest-frame colours as dwarf late-types.
This suggests that the formation histories of early-types is different in the dwarf and massive regimes.
While massive early-types are likely shaped by interactions, their dwarf counterparts are shaped more
by secular processes. This study suggests that featureless dwarfs in low-density environments are created
via internal baryonic feedback, rather than by environmental processes. Finally, I show that while
interacting dwarfs can be identified using the asymmetry parameter, it is challenging to cleanly separate
early and late-type dwarfs using traditional morphological parameters, such as ‘CAS’, M20 and the Gini
coefficient (unlike in the massive-galaxy regime).
I proceed by using 211 out of the 257 dwarf described above to study their structural properties: effective
radii (Re), effective surface brightnesses (μe) and colour profiles and gradients. I explore these properties
as a function of stellar mass and the three principal dwarf morphological types (early-type galaxies
(ETGs), late-type galaxies (LTGs) and featureless systems). The median effective radii of LTGs and
featureless galaxies are factors of ∼2 and ∼1.2 larger than the ETGs. While the median effective brightness
of the ETGs and LTGs is similar, the featureless class is much fainter. Dwarfs residing within the
‘UDG’ region in μe vs Re space are a continuous extension of the galaxy population towards lower values
of effective brightness, indicating that UDGs are not a distinct class of objects. While massive ETGs
typically exhibit negative or flat colour gradients, dwarf ETGs show positive colour gradients (bluer
centres). The growth of ETGs changes from being ‘outside-in’ to ‘inside out’ as I move from the dwarf
to the massive regime. The colour gradients of dwarf and massive LTGs are, however, similar. I show
that, compared to their non-interacting counterparts, interacting dwarfs are larger, bluer at all radii and
exhibit similar median effective surface brightness, suggesting that interactions enhance star formation
across the entire galaxy.
Forthcoming ‘Big data’ surveys (e.g. LSST/SKA), which will produce peta and exabyte volumes of
data will become the new ‘normal’ in the coming decades. These volumes will make morphological
classification using traditional methods (e.g. direct visual inspection, as used in the first two chapters)
impractical. Even semi-automated techniques, e.g. supervised machine learning with training sets built
via visual inspection, may be difficult, because of the time-consuming nature of creating these sets.
However, UML, does not require training on labelled data, making it ideal for galaxy morphological
classification for large surveys.
Here I present an UML algorithm, that utilizes hierarchical clustering and growing neural gas networks
to group together survey image patches with similar visual properties, followed by a clustering of objects
(e.g. galaxies) that are reconstructed from these patches. I implement the algorithm on the Deep layer
(27 deg2) of the Hyper Suprime-Cam Subaru-Strategic-Program, to reduce a population of hundreds of
thousands of galaxies to a small number (∼150) of morphological clusters, which exhibit high purity.
These clusters, rather than individual galaxies, can then be rapidly benchmarked via visual inspection and
classified into typical morphological types. Using these morphological clusters, I successfully reproduce
known trends of galaxy properties as a function of morphological type, which demonstrates the efficacy
of the method.
Finally, I study 108 blue, low-mass ellipticals (which have a median stellar mass of 108.7 M⊙) at z <
0.3 in the COSMOS field, which have been autonomously detected by the algorithm described above.
How elliptical galaxies form is a key question in observational cosmology. While the formation of
massive ellipticals is strongly linked to mergers, the low mass (M⋆/M⊙ < 109.5) regime remains less
well explored. In particular, studying elliptical populations when they are blue, and therefore rapidly
building stellar mass, offers strong constraints on their formation. Visual inspection of the deep optical
HSC images indicates that less than 3 per cent of these systems have visible tidal features, a factor of 2
less than the incidence of tidal features in a control sample of galaxies with the same distribution of stellar
mass and redshift. This suggests that the star formation activity in these objects is not driven by mergers
or interactions but by secular gas accretion (i.e. steady gas accretion over Gyr timescales). I show
that these blue ellipticals reside in low-density environments, further away from nodes and large-scale
filaments than other galaxies. At similar stellar masses and environments, blue ellipticals outnumber
their normal (red) counterparts by a factor of 2. Thus, these systems are likely progenitors of not only
normal ellipticals at similar stellar mass but, given their high star formation rates, also of ellipticals at
higher stellar masses. Secular gas accretion, therefore, likely plays a significant (and possibly dominant)
role in the stellar assembly of elliptical galaxies in the low mass regime.
Publication date
2024-08-08Funding
Default funderDefault project
Other links
http://hdl.handle.net/2299/28489Metadata
Show full item recordThe following license files are associated with this item:
Related items
Showing items related by title, author, creator and subject.
-
The H alpha galaxy survey. I. The galaxy sample, H alpha narrow-band observations and star formation parameters for 334 galaxies
James, P.A.; Shane, N.S.; Beckman, J.E.; Cardwell, A.; Collins, C.A.; Etherton, J.; de Jong, R.S.; Fathi, K.; Knapen, J.; Peletier, R.F.; Percival, S.M.; Pollacco, D.L.; Seigar, M.S.; Stedman, S. (2004)We discuss the selection and observations of a large sample of nearby galaxies, which we are using to quantify the star formation activity in the local Universe. The sample consists of 334 galaxies across all Hubble types ... -
On the Key Processes that Drive Galaxy Evolution: the Role of Galaxy Mergers, Accretion, Local Environment and Feedback in Shaping the Present-Day Universe
Martin, Garreth (2019-07-17)The study of galaxy evolution is a fundamental discipline in modern astrophysics, dealing with how and why galaxies of all types evolve over time. The diversity of present-day galaxies is a reflection of the processes ... -
The Physical Processes that Drive Galaxy Evolution - from Massive Galaxies to the Dwarf Regime
Jackson, Ryan (2021-09-25)The study of galaxy formation and evolution is a cornerstone in astrophysics, as galaxies connect together all scales of the Universe. The physical processes that govern galaxies therefore needs to be fully understood if ...