High-resolution cosmological hydrodynamic simulations are currently limited to relatively small volumes due to their computational expense. However, much larger volumes are required to probe rare, overdense environments, and measure clustering statistics of the large scale structure. Typically, zoom simulations of individual regions are used to study rare environments, and semi-analytic models and halo occupation models applied to dark matter only (DMO) simulations are used to study the Universe in the large-volume regime. We propose a new approach, using a machine learning framework to explore the halo-galaxy relationship in the periodic EAGLE simulations, and zoom C-EAGLE simulations of galaxy clusters. We train a tree based machine learn...
We present a scheme to extend the halo mass resolution of dark matter N-body simulations. The method...
We investigate the internal structure and density profiles of halos of mass $10^{10}-10^{14}~M_\odot...
We present a novel machine learning method for predicting the baryonic properties of dark matter onl...
High-resolution cosmological hydrodynamic simulations are currently limited to relatively small volu...
© 2021 The Author(s) Published by Oxford University Press on behalf of Royal Astronomical Society. T...
This is a pre-copyedited, author-produced PDF of an article accepted for publication in Monthly Noti...
We investigate the internal structure and density profiles of haloes of mass 1010–1014 M⊙ in the Evo...
The EAGLE simulation suite has previously been used to investigate the relationship between the stel...
We present a cosmological hydrodynamical simulation of a 1013 M⊙ galaxy group and its environment (o...
To extract information from the clustering of galaxies on non-linear scales, we need to model the co...
We investigate the internal structure and density profiles of haloes of mass 1010–1014 M⊙ in the Evo...
The eagle simulation suite has previously been used to investigate the relationship between the stel...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
We present a scheme to extend the halo mass resolution of dark matter N-body simulations. The method...
We investigate the internal structure and density profiles of halos of mass $10^{10}-10^{14}~M_\odot...
We present a novel machine learning method for predicting the baryonic properties of dark matter onl...
High-resolution cosmological hydrodynamic simulations are currently limited to relatively small volu...
© 2021 The Author(s) Published by Oxford University Press on behalf of Royal Astronomical Society. T...
This is a pre-copyedited, author-produced PDF of an article accepted for publication in Monthly Noti...
We investigate the internal structure and density profiles of haloes of mass 1010–1014 M⊙ in the Evo...
The EAGLE simulation suite has previously been used to investigate the relationship between the stel...
We present a cosmological hydrodynamical simulation of a 1013 M⊙ galaxy group and its environment (o...
To extract information from the clustering of galaxies on non-linear scales, we need to model the co...
We investigate the internal structure and density profiles of haloes of mass 1010–1014 M⊙ in the Evo...
The eagle simulation suite has previously been used to investigate the relationship between the stel...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
We present a scheme to extend the halo mass resolution of dark matter N-body simulations. The method...
We investigate the internal structure and density profiles of halos of mass $10^{10}-10^{14}~M_\odot...
We present a novel machine learning method for predicting the baryonic properties of dark matter onl...