Examining WRF's Sensitivity to Contemporary Land-Use Datasets across the Contiguous United States Using Dynamical Downscaling.

J Appl Meteorol Climatol

National Exposure Research Laboratory, Environmental Protection Agency, Research Triangle Park, North Carolina.

Published: November 2018

AI Article Synopsis

  • Land-use representation is essential for modeling air-surface interactions that impact weather and climate, particularly in the Noah LSM part of the WRF Model.
  • The study investigates the effects of different land-use datasets (USGS vs. NLCD) on long-term weather simulations, finding that the WRF-NLCD simulation generally produces lower precipitation and warmer temperatures but increases the frequency of hot days.
  • Despite the observed sensitivity to land-use changes, this impact is smaller than the overall model error, suggesting that while relevant, the effects of land-use representation are not the dominant factor in the simulations.

Article Abstract

Land-use (LU) representation plays a critical role in simulating air-surface interactions that affect meteorological conditions and regional climate. In the Noah LSM within the WRF Model, LU categories are used to set the radiative properties of the surface and to influence exchanges of heat, moisture, and momentum between the air and land surface. Previous literature examined the sensitivity of WRF simulations to LU using short-term meteorological modeling approaches. Here, the sensitivity to LU representation is studied using continental-scale dynamical downscaling, which typically uses longer temporal and larger spatial scales. Two LU datasets, the U.S. Geological Survey (USGS) dataset and the 2006 National Land Cover Dataset (NLCD), are utilized in 3-yr dynamically downscaled WRF simulations over a historical period. Precipitation and 2-m air temperature are evaluated against observation-based datasets for simulations covering the contiguous United States. The WRF-NLCD simulation tends to produce lower precipitation than the WRF-USGS run, with slightly warmer mean monthly temperatures. However, WRF-NLCD results in more notable increases in the frequency of hot days [i.e., days with temperature >90°F (32.2°C)]. These changes are attributable to reductions in forest and agricultural area in the NLCD relative to USGS. There is also subtle but important sensitivity to the method of interpolating LU data to the WRF grid in the model preprocessing. In all cases, the sensitivity resulting from changes in the LU is smaller than model error. Although this sensitivity is small, it persists across spatial and temporal scales.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7886310PMC
http://dx.doi.org/10.1175/JAMC-D-17-0328.1DOI Listing

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