Investigating the response of land–atmosphere interactions and feedbacks to spatial representation of irrigation in a coupled modeling framework
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Published:2023-07-26
Issue:14
Volume:27
Page:2787-2805
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ISSN:1607-7938
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Container-title:Hydrology and Earth System Sciences
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language:en
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Short-container-title:Hydrol. Earth Syst. Sci.
Author:
Lawston-Parker PatriciaORCID, Santanello Jr. Joseph A., Chaney Nathaniel W.
Abstract
Abstract. The transport of water, heat, and momentum from the surface to the
atmosphere is dependent, in part, on the characteristics of the land surface.
Along with the model physics, parameterization schemes, and parameters
employed, land datasets determine the spatial variability in land surface
states (i.e., soil moisture and temperature) and fluxes. Despite the
importance of these datasets, they are often chosen out of convenience or
owing to regional limitations, without due assessment of their impacts on model
results. Irrigation is an anthropogenic form of land heterogeneity that has
been shown to alter the land surface energy balance, ambient weather, and
local circulations. As such, irrigation schemes are becoming more prevalent
in weather and climate models, with rapid developments in dataset
availability and parameterization scheme complexity. Thus, to address
pragmatic issues related to modeling irrigation, this study uses a
high-resolution, regional coupled modeling system to investigate the impacts
of irrigation dataset selection on land–atmosphere (L–A) coupling using a
case study from the Great Plains Irrigation Experiment (GRAINEX) field
campaign. The simulations are assessed in the context of irrigated vs.
nonirrigated regions, subregions across the irrigation gradient, and
sub-grid-scale process representation in coarser-scale models. The results
show that L–A coupling is sensitive to the choice of irrigation dataset and
resolution and that the irrigation impact on surface fluxes and near-surface
meteorology can be dominant, conditioned on the details of the irrigation
map (e.g., boundaries and heterogeneity), or minimal. A consistent finding
across several analyses was that even a low percentage of irrigation
fraction (i.e., 4 %–16 %) can have significant local and downstream
atmospheric impacts (e.g., lower planetary
boundary layer, PBL, height), suggesting that the representation
of boundaries and heterogeneous areas within irrigated regions is
particularly important for the modeling of irrigation impacts on the
atmosphere in this model. When viewing the simulations presented here as a
proxy for “ideal” tiling in an Earth-system-model-scale grid box, the results
show that some “tiles” will reach critical nonlinear moisture and PBL thresholds that could be important for clouds and
convection, implying that heterogeneity resulting from irrigation should be
taken into consideration in new sub-grid L–A exchange
parameterizations.
Funder
National Oceanic and Atmospheric Administration
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences,General Engineering,General Environmental Science
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