We introduce a new technique based on artificial neural networks which enable us to make accurate predictions for the spectral energy distributions (SEDs) of large samples of galaxies, at wavelengths ranging from the far-ultraviolet (UV) to the submillimetre (sub-mm) and radio. The neural net is trained to reproduce the SEDs predicted by a hybrid code comprised of the galform semi-analytical model of galaxy formation, which predicts the full star formation and galaxy merger histories, and the grasil spectro-photometric code, which carries out a self-consistent calculation of the SED, including absorption and emission of radiation by dust. Using a small number of galaxy properties predicted by galform, the method reproduces the luminosities ...
This thesis will concentrate on the effect that dust grains, within the interstellar medium of galax...
We present a technique for the estimation of photometric redshifts based on feed-forward neural netw...
We present a technique for the estimation of photometric redshifts based on feed-forward neural netw...
We introduce a new technique based on artificial neural networks which enable us to make accurate pr...
The spectral energy distribution (SED) of galaxies is a complex function of the star formation histo...
We present a self-consistent model of the spectral energy distributions (SEDs) of spiral g...
We explore the prospects of predicting emission-line features present in galaxy spectra given broad-...
Context. Dust plays an important role in shaping a galaxy’s spectral energy distribution (SED). It a...
We present a new evolutionary model for predicting the far-uv-to-submillimeter properties of the gal...
Context. The ultraviolet (UV) to sub-millimetre spectral energy distribution of galaxies can be roug...
Large surveys have been performed from the ultraviolet (UV) to the far-infrared (FIR). Some galaxies...
(abridged) We present STARDUST, a new self-consistent modelling of the spectral energy distributions...
Jets from supermassive black holes in the centers of active galaxies are the most powerful persisten...
We present Starduster, a supervised deep learning model that predicts the multi-wavelength SED from ...
We present a novel way of using neural networks (NN) to estimate the redshift distri-bution of a gal...
This thesis will concentrate on the effect that dust grains, within the interstellar medium of galax...
We present a technique for the estimation of photometric redshifts based on feed-forward neural netw...
We present a technique for the estimation of photometric redshifts based on feed-forward neural netw...
We introduce a new technique based on artificial neural networks which enable us to make accurate pr...
The spectral energy distribution (SED) of galaxies is a complex function of the star formation histo...
We present a self-consistent model of the spectral energy distributions (SEDs) of spiral g...
We explore the prospects of predicting emission-line features present in galaxy spectra given broad-...
Context. Dust plays an important role in shaping a galaxy’s spectral energy distribution (SED). It a...
We present a new evolutionary model for predicting the far-uv-to-submillimeter properties of the gal...
Context. The ultraviolet (UV) to sub-millimetre spectral energy distribution of galaxies can be roug...
Large surveys have been performed from the ultraviolet (UV) to the far-infrared (FIR). Some galaxies...
(abridged) We present STARDUST, a new self-consistent modelling of the spectral energy distributions...
Jets from supermassive black holes in the centers of active galaxies are the most powerful persisten...
We present Starduster, a supervised deep learning model that predicts the multi-wavelength SED from ...
We present a novel way of using neural networks (NN) to estimate the redshift distri-bution of a gal...
This thesis will concentrate on the effect that dust grains, within the interstellar medium of galax...
We present a technique for the estimation of photometric redshifts based on feed-forward neural netw...
We present a technique for the estimation of photometric redshifts based on feed-forward neural netw...