We have updated and applied a convolutional neural network (CNN) machine-learning model to discover and characterize damped Lyα systems (DLAs) based on Dark Energy Spectroscopic Instrument (DESI) mock spectra. We have optimized the training process and constructed a CNN model that yields a DLA classification accuracy above 99% for spectra that have signal-to-noise ratios (S/N) above 5 per pixel. The classification accuracy is the rate of correct classifications. This accuracy remains above 97% for lower S/N ≈1 spectra. This CNN model provides estimations for redshift and H i column density with standard deviations of 0.002 and 0.17 dex for spectra with S/N above 3 pixel-1. Also, this DLA finder is able to identify overlapping DLAs and sub-D...
We introduce QuasarNET, a deep convolutional neural network that performs classification and redshif...
We are applying various ML/DL techniques for the purpose of stellar spectroscopy. Having already ran...
| openaire: EC/H2020/676580/EU//NoMaDDeep learning methods for the prediction of molecular excitatio...
We have updated and applied a convolutional neural network (CNN) machine-learning model to discover ...
We have updated and applied a convolutional neural network (CNN) machine-learning model to discover ...
We present the characteristics of the damped Lyα (DLA) systems found in data release DR16 of the ext...
Pre-trained model for DTNN and CNN. related to 10.1002/advs.201801367 Pretrained DTNN model to pre...
We develop a machine learning based algorithm using a convolutional neural network (CNN) to identify...
One of the most compelling problems in physics today is understanding the nature of dark energy, a m...
International audienceWe present morphological classifications of ∼27 million galaxies from the Dark...
International audienceWe present the first reconstruction of dark matter maps from weak lensing obse...
Traditional estimators of the galaxy power spectrum and bispectrum are sensitive to the survey geome...
We introduce QuasarNET, a deep convolutional neural network that performs classification and redshif...
We are applying various ML/DL techniques for the purpose of stellar spectroscopy. Having already ran...
| openaire: EC/H2020/676580/EU//NoMaDDeep learning methods for the prediction of molecular excitatio...
We have updated and applied a convolutional neural network (CNN) machine-learning model to discover ...
We have updated and applied a convolutional neural network (CNN) machine-learning model to discover ...
We present the characteristics of the damped Lyα (DLA) systems found in data release DR16 of the ext...
Pre-trained model for DTNN and CNN. related to 10.1002/advs.201801367 Pretrained DTNN model to pre...
We develop a machine learning based algorithm using a convolutional neural network (CNN) to identify...
One of the most compelling problems in physics today is understanding the nature of dark energy, a m...
International audienceWe present morphological classifications of ∼27 million galaxies from the Dark...
International audienceWe present the first reconstruction of dark matter maps from weak lensing obse...
Traditional estimators of the galaxy power spectrum and bispectrum are sensitive to the survey geome...
We introduce QuasarNET, a deep convolutional neural network that performs classification and redshif...
We are applying various ML/DL techniques for the purpose of stellar spectroscopy. Having already ran...
| openaire: EC/H2020/676580/EU//NoMaDDeep learning methods for the prediction of molecular excitatio...