Downscaling Near-Surface Atmospheric Fields With Multi-Objective Genetic Programming

GECCO '17: Genetic and Evolutionary Computation Conference Berlin Germany July, 2017(2016)

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摘要
We present a new Genetic Programming based method to derive downscaling rules (i.e., functions or short programs) generating realistic high-resolution fields of atmospheric state variables near the surface given coarser-scale atmospheric information and high-resolution information on land surface properties. Such downscaling rules can be applied in coupled subsurface-land surface-atmosphere simulations or to generate high-resolution atmospheric input data for offline applications of land surface and subsurface models. Multiple features of the high-resolution fields, such as the spatial distribution of subgrid-scale variance, serve as objectives. The downscaling rules take an interpretable form and contain on average about 5 mathematical operations. The method is applied to downscale 10 m-temperature fields from 2.8 km to 400 m grid resolution. A large part of the spatial variability is reproduced, also in stable nighttime situations, which generate very heterogeneous near-surface temperature fields in regions with distinct topography. (C) 2016 The Authors. Published by Elsevier Ltd.
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关键词
Statistical downscaling,Disaggregation,Evolutionary computation,Machine learning,Pareto optimality,Coupled modeling
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