Downscaling near-surface atmospheric fields with multi-objective Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Misc{journals/corr/ZerennerVFS14,
-
author = "Tanja Zerenner and Victor Venema and
Petra Friederichs and Clemens Simmer",
-
title = "Downscaling near-surface atmospheric fields with
multi-objective Genetic Programming",
-
year = "2014",
-
keywords = "genetic algorithms, genetic programming",
-
volume = "abs/1407.1768",
-
bibdate = "2014-08-01",
-
bibsource = "DBLP,
http://dblp.uni-trier.de/db/journals/corr/corr1407.html#ZerennerVFS14",
-
URL = "http://arxiv.org/abs/1407.1768",
-
abstract = "The coupling of models for the different components of
the Soil-Vegetation-Atmosphere-System is required to
investigate component interactions and feedback
processes. However, the component models for
atmosphere, land-surface and subsurface are usually
operated at different resolutions in space and time
owing to the dominant processes. The computationally
often more expensive atmospheric models, for instance,
are typically employed at a coarser resolution than
land-surface and subsurface models. Thus up- and
downscaling procedures are required at the interface
between the atmospheric model and the
land-surface/subsurface models. We apply
multi-objective Genetic Programming (GP) to a training
data set of high-resolution atmospheric model runs to
learn equations or short programs that reconstruct the
fine-scale fields (e.g., 400 m resolution) of the
near-surface atmospheric state variables from the
coarse atmospheric model output (e.g., 2.8 km
resolution). Like artificial neural networks, GP can
flexibly incorporate multivariate and nonlinear
relations, but offers the advantage that the solutions
are human readable and thus can be checked for physical
consistency. Using the Strength Pareto Approach for
multi-objective fitness assignment allows us to
consider multiple characteristics of the fine-scale
fields during the learning procedure",
-
notes = "see \cite{Zerenner:2016:EMS}",
- }
Genetic Programming entries for
Tanja Zerenner
Victor Venema
Petra Friederichs
Clemens Simmer
Citations