The temporal and spatial scale dependent relation of Convective Available Potential Energy (CAPE) and precipitation is investigated. Using the COSMO-REA6 data set, we ask which of the standard machine learning algorithms: perceptron, support vector machine, decision tree, random forest, k-nearest neighbor and a simple kept deep neural network algorithm can best relate these two variables. Then, we concentrate on decision trees and evaluate the relation of CAPE and precipitation across different scales. We investigate temporal resolutions of 1 hour to 24 hours and horizontal resolutions of 6 km up to 768 km. Regarding ten CAPE and two precipitation classes we find accuracy scores mostly of about 0.7 across all scales. Taking the Dynamic Stat...
One way of reducing the uncertainty involved in determining the radiative forcing of climate change ...
Meteorological phenomena is an area in which a large amount of data is generated and where it is mor...
Statistical models were developed for downscaling reanalysis data to monthly precipitation at 48 obs...
Identifying dynamical and physical mechanisms controlling variability of convective precipitation is...
The memory of convective precipitation is estimated via the analysis of the convective parameters co...
©2018. The Authors. The parameterization of moist convection contributes to uncertainty in climate m...
Convective available potential energy (CAPE), a metric associated with severe weather, is expected t...
ABSTRACT: The memory of convective precipitation is estimated via the analysis of the convective par...
The relationship between atmospheric stability, measured as CAPE, and deep precipitating convection ...
An object‐based evaluation method using a pattern recognition algorithm (i.e., classification trees)...
Convective Available Potential Energy (CAPE) and Convective Inhibition (CIN) play a dominant role in...
© 2021 by the authors. Licensee MDPI, Basel, Switzerland.The machine learning algorithms application...
Shallow and deep learning of extreme rainfall events from convective atmospheres Summary This repo...
This study explores the potential of the Deep Learning (DL) approach to develop a model for basin-sc...
The machine learning algorithms application in atmospheric sciences along the Earth System Models ha...
One way of reducing the uncertainty involved in determining the radiative forcing of climate change ...
Meteorological phenomena is an area in which a large amount of data is generated and where it is mor...
Statistical models were developed for downscaling reanalysis data to monthly precipitation at 48 obs...
Identifying dynamical and physical mechanisms controlling variability of convective precipitation is...
The memory of convective precipitation is estimated via the analysis of the convective parameters co...
©2018. The Authors. The parameterization of moist convection contributes to uncertainty in climate m...
Convective available potential energy (CAPE), a metric associated with severe weather, is expected t...
ABSTRACT: The memory of convective precipitation is estimated via the analysis of the convective par...
The relationship between atmospheric stability, measured as CAPE, and deep precipitating convection ...
An object‐based evaluation method using a pattern recognition algorithm (i.e., classification trees)...
Convective Available Potential Energy (CAPE) and Convective Inhibition (CIN) play a dominant role in...
© 2021 by the authors. Licensee MDPI, Basel, Switzerland.The machine learning algorithms application...
Shallow and deep learning of extreme rainfall events from convective atmospheres Summary This repo...
This study explores the potential of the Deep Learning (DL) approach to develop a model for basin-sc...
The machine learning algorithms application in atmospheric sciences along the Earth System Models ha...
One way of reducing the uncertainty involved in determining the radiative forcing of climate change ...
Meteorological phenomena is an area in which a large amount of data is generated and where it is mor...
Statistical models were developed for downscaling reanalysis data to monthly precipitation at 48 obs...