Campbell Patrick C, Bash Jesse O, Herwehe Jerold A, Gilliam Robert C, Li Dan
National Academies/National Research Council (NRC) Fellowship Participant at National Exposure Research Laboratory, U.S. Environmental Protection Agency, Research Triangle Park, North Carolina, USA.
Now at Center for Spatial Information Science and Systems/Cooperative Institute for Satellite Earth System Studies, George Mason University.
J Geophys Res Atmos. 2020 Aug 8;125(15). doi: 10.1029/2019JD032093.
Parameterization of subgrid-scale variability of land cover characterization (LCC) is an active area of research, and can improve model performance compared to the dominant (i.e., most abundant tile) approach. The "Noah" land surface model implementation in the global Model for Predictions Across Scales-Atmosphere (MPAS-A), however, only uses the dominant LCC approach that leads to oversimplification in regions of highly heterogeneous LCC (e.g., urban/suburban settings). Thus, in this work we implement a subgrid tiled approach as an option in MPAS-A, version 6.0, and assess the impacts of tiled LCC on meteorological predictions for two gradually refining meshes (92-25 and 46-12 km) focused on the conterminous U.S for January and July 2016. Compared to the dominant approach, results show that using the tiled LCC leads to pronounced global changes in 2-m temperature (July global average change ~ -0.4 K), 2-m moisture, and 10-m wind speed for the 92-25 km mesh. The tiled LCC reduces mean biases in 2-m temperature (July U.S. average bias reduction ~ factor of 4) and specific humidity in the central and western U.S. for the 92-25 km mesh, improves the agreement of vertical profiles (e.g., temperature, humidity, and wind speed) with observed radiosondes; however, there is increased bias and error for incoming solar radiation at the surface. The inclusion of subgrid LCC has implications for reducing systematic temperature biases found in numerical weather prediction models, particularly those that employ a dominant LCC approach.
土地覆盖特征(LCC)的次网格尺度变率参数化是一个活跃的研究领域,与主导(即最丰富的瓦片)方法相比,它可以提高模型性能。然而,全球跨尺度大气预测模型(MPAS-A)中实施的 “诺亚” 陆面模型仅使用主导LCC方法,这在LCC高度异质的区域(例如城市/郊区环境)会导致过度简化。因此,在这项工作中,我们在MPAS-A 6.0版本中实现了一种次网格瓦片方法作为选项,并评估了瓦片LCC对2016年1月和7月聚焦于美国本土的两个逐渐细化的网格(92-25和46-12公里)气象预测的影响。与主导方法相比,结果表明,对于92-25公里的网格,使用瓦片LCC会导致2米温度(7月全球平均变化约-0.4K)、2米湿度和10米风速出现明显的全球变化。瓦片LCC降低了92-25公里网格在美国中部和西部2米温度的平均偏差(7月美国平均偏差减少约4倍)和比湿,改善了垂直剖面(例如温度、湿度和风速)与观测探空仪的一致性;然而,地表入射太阳辐射的偏差和误差有所增加。纳入次网格LCC对于减少数值天气预报模型中发现的系统性温度偏差具有重要意义,特别是那些采用主导LCC方法的模型。