We develop a machine learning based algorithm using a convolutional neural network (CNN) to identify low H I column density Lyα absorption systems (log NHI/cm−2 < 17) in the Lyα forest, and predict their physical properties, such as their H I column density (log NHI/cm−2), redshift (zHI), and Doppler width (bHI). Our CNN models are trained using simulated spectra (S/N ≃ 10), and we test their performance on high quality spectra of quasars at redshift z ∼ 2.5 − 2.9 observed with the High Resolution Echelle Spectrometer on the Keck I telescope. We find that ∼78% of the systems identified by our algorithm are listed in the manual Voigt profile fitting catalogue. We demonstrate that the performance of our CNN is stable and consistent for all si...
Eleven candidate damped Lyα absorption systems were identified in 27 spectra of the quasars from the...
We use hydrodynamic cosmological simulations to predict correlations between Lyα forest absorption a...
Full-physics cosmological simulations are powerful tools for studying the formation and evolution of...
Abstract We have updated and applied a convolutional neural network (CNN) machine-lea...
We have updated and applied a convolutional neural network (CNN) machine-learning model to discover ...
We present a pipeline based on a random forest classifier for the identification of high column dens...
High-redshift measurements of the baryonic acoustic oscillation (BAO) scale from large Lyα forest su...
We examine the Ly-alpha absorber population at z<0.3 detected in spectra of the QSOs PG0953+415 and ...
We describe techniques for comparing spectra extracted from cosmological simulations and observation...
Gaia DR3 provided the community with one million RVS spectra covering the CaII triplet region, simil...
We present a study of the Ly\alpha forest at z13.2, with a column density distribution f(N_HI) \prop...
International audienceWe have applied a convolutional neural network (CNN) to classify and detect qu...
We present the characteristics of the damped Lyα (DLA) systems found in data release DR16 of the ext...
We measure the matter power spectrum from 31 Ly alpha spectra spanning the redshift range of 1.6-3.6...
We explore how to mitigate the clustering distortions in Lyman α emitter (LAE) samples caused by the...
Eleven candidate damped Lyα absorption systems were identified in 27 spectra of the quasars from the...
We use hydrodynamic cosmological simulations to predict correlations between Lyα forest absorption a...
Full-physics cosmological simulations are powerful tools for studying the formation and evolution of...
Abstract We have updated and applied a convolutional neural network (CNN) machine-lea...
We have updated and applied a convolutional neural network (CNN) machine-learning model to discover ...
We present a pipeline based on a random forest classifier for the identification of high column dens...
High-redshift measurements of the baryonic acoustic oscillation (BAO) scale from large Lyα forest su...
We examine the Ly-alpha absorber population at z<0.3 detected in spectra of the QSOs PG0953+415 and ...
We describe techniques for comparing spectra extracted from cosmological simulations and observation...
Gaia DR3 provided the community with one million RVS spectra covering the CaII triplet region, simil...
We present a study of the Ly\alpha forest at z13.2, with a column density distribution f(N_HI) \prop...
International audienceWe have applied a convolutional neural network (CNN) to classify and detect qu...
We present the characteristics of the damped Lyα (DLA) systems found in data release DR16 of the ext...
We measure the matter power spectrum from 31 Ly alpha spectra spanning the redshift range of 1.6-3.6...
We explore how to mitigate the clustering distortions in Lyman α emitter (LAE) samples caused by the...
Eleven candidate damped Lyα absorption systems were identified in 27 spectra of the quasars from the...
We use hydrodynamic cosmological simulations to predict correlations between Lyα forest absorption a...
Full-physics cosmological simulations are powerful tools for studying the formation and evolution of...