International audienceA neural network (NN) model is trained with a database widely used in the aerosol remote sensing community to rapidly predict the single-scattering optical properties of spheroidal dust particles. Analytical solutions for their Jacobians with respect to microphysical properties are derived based on the functional form of the NN. The Jacobian predictions are improved by adding Jacobians from a linearized T-matrix model into the training. Out-of-database testing implies that NN-based predictions perform better than the business-as-usual method that interpolates optical properties from the database. Independent validation further demonstrates the efficacy of the NN-based predictions by reducing computational costs while m...
© 2016 Elsevier LtdMultilayer perceptron neural networks with one, two and three inputs are built to...
It is imperative that the observable metrics of land and atmospheric systems (i. e., soil moisture a...
Abstract — In many applications of the neural networks, predicting the conditional average of the ta...
This respository includes the data used in the paper "Analytical prediction of scattering properties...
This respository includes the data used in the paper "Prediction and linearization of scattering pro...
For the majority of the particles in the atmosphere, calculations of scattering energy loss are incr...
In this paper, the use of a neural network algorithm for the retrieval of the aerosol properties fro...
To study the aerosols in the atmosphere is an important aspect for getting a better understanding of...
Context. Determining properties of dust that formed in and around supernovae from observations remai...
Aerosols are an integral part of Earth's climate system and their effect on climate makes this field...
© 2018 Springer-Verlag. This is a post-peer-review, pre-copyedit version of a paper published in Art...
The radiative transfer equations are well known, but radiation parametrizations in atmospheric model...
Dust storms are known to have adverse effects on public health. Atmospheric dust loading is also one...
inn this paper, we present three algorithms for aerosol parameters retrieval from TROPOMI measuremen...
Quantitative measurements of aerosol absorptive properties, e.g., the absorbing aerosol optical dept...
© 2016 Elsevier LtdMultilayer perceptron neural networks with one, two and three inputs are built to...
It is imperative that the observable metrics of land and atmospheric systems (i. e., soil moisture a...
Abstract — In many applications of the neural networks, predicting the conditional average of the ta...
This respository includes the data used in the paper "Analytical prediction of scattering properties...
This respository includes the data used in the paper "Prediction and linearization of scattering pro...
For the majority of the particles in the atmosphere, calculations of scattering energy loss are incr...
In this paper, the use of a neural network algorithm for the retrieval of the aerosol properties fro...
To study the aerosols in the atmosphere is an important aspect for getting a better understanding of...
Context. Determining properties of dust that formed in and around supernovae from observations remai...
Aerosols are an integral part of Earth's climate system and their effect on climate makes this field...
© 2018 Springer-Verlag. This is a post-peer-review, pre-copyedit version of a paper published in Art...
The radiative transfer equations are well known, but radiation parametrizations in atmospheric model...
Dust storms are known to have adverse effects on public health. Atmospheric dust loading is also one...
inn this paper, we present three algorithms for aerosol parameters retrieval from TROPOMI measuremen...
Quantitative measurements of aerosol absorptive properties, e.g., the absorbing aerosol optical dept...
© 2016 Elsevier LtdMultilayer perceptron neural networks with one, two and three inputs are built to...
It is imperative that the observable metrics of land and atmospheric systems (i. e., soil moisture a...
Abstract — In many applications of the neural networks, predicting the conditional average of the ta...