The radiative transfer equations are well known, but radiation parametrizations in atmospheric models are computationally expensive. A promising tool for accelerating parametrizations is the use of machine learning techniques. In this study, we develop a machine learning-based parametrization for the gaseous optical properties by training neural networks to emulate a modern radiation parametrization (RRTMGP). To minimize computa- tional costs, we reduce the range of atmospheric conditions for which the neural networks are applicable and use machine-specific optimized BLAS functions to accelerate matrix computations. To generate training data, we use a set of randomly perturbed atmospheric profiles and calculate optical properties using RRTM...
To retrieve aerosol properties from satellite measurements of the oxygen A-band in the near-infrared...
A new approach based on a synergetic combination of statistical/machine learning and deterministic m...
inn this paper, we present three algorithms for aerosol parameters retrieval from TROPOMI measuremen...
We propose a novel machine learning algorithm for simulating radiative transfer. Our algorithm is ba...
Context. Computing spectra from 3D simulations of stellar atmospheres when allowing for departures f...
For the majority of the particles in the atmosphere, calculations of scattering energy loss are incr...
Hyperspectral observations have become one of the most popular and powerful methods for atmospheric ...
Synthetic spectra calculated from model solar atmospheres are central to our understanding of the co...
The Bidirectional Reflectance Distribution Function (BRDF) defines the anisotropy of surface reflect...
Physically-based radiative transfer models (RTMs) help in understanding the processes occurring on t...
A new approach based on a synergetic combination of statistical/machine learning and deterministic m...
This paper reports on the development of a neural network (NN) model for instantaneous and accurate ...
International audienceThe physical structure and properties of protoplanetary disks are typically de...
Visible–shortwave infrared imaging spectroscopy provides valuable remote measurements of Earth's sur...
International audienceA neural network (NN) model is trained with a database widely used in the aero...
To retrieve aerosol properties from satellite measurements of the oxygen A-band in the near-infrared...
A new approach based on a synergetic combination of statistical/machine learning and deterministic m...
inn this paper, we present three algorithms for aerosol parameters retrieval from TROPOMI measuremen...
We propose a novel machine learning algorithm for simulating radiative transfer. Our algorithm is ba...
Context. Computing spectra from 3D simulations of stellar atmospheres when allowing for departures f...
For the majority of the particles in the atmosphere, calculations of scattering energy loss are incr...
Hyperspectral observations have become one of the most popular and powerful methods for atmospheric ...
Synthetic spectra calculated from model solar atmospheres are central to our understanding of the co...
The Bidirectional Reflectance Distribution Function (BRDF) defines the anisotropy of surface reflect...
Physically-based radiative transfer models (RTMs) help in understanding the processes occurring on t...
A new approach based on a synergetic combination of statistical/machine learning and deterministic m...
This paper reports on the development of a neural network (NN) model for instantaneous and accurate ...
International audienceThe physical structure and properties of protoplanetary disks are typically de...
Visible–shortwave infrared imaging spectroscopy provides valuable remote measurements of Earth's sur...
International audienceA neural network (NN) model is trained with a database widely used in the aero...
To retrieve aerosol properties from satellite measurements of the oxygen A-band in the near-infrared...
A new approach based on a synergetic combination of statistical/machine learning and deterministic m...
inn this paper, we present three algorithms for aerosol parameters retrieval from TROPOMI measuremen...