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首页> 外文期刊>Journal of hydrometeorology >Estimates of Global Surface Hydrology and Heat Fluxes from the Community Land Model (CLM4.5) with Four Atmospheric Forcing Datasets
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Estimates of Global Surface Hydrology and Heat Fluxes from the Community Land Model (CLM4.5) with Four Atmospheric Forcing Datasets

机译:来自社区土地模型(CLM4.5)的全球地表水文学和热通量估算,带有四个大气强迫数据集

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Global land surface hydrology and heat fluxes can be estimated by running a land surface model (LSM) driven by the atmospheric forcing dataset. Previous multimodel studies focused on the impact of different LSMs on model results. Here the sensitivity of the Community Land Model, version 4.5 (CLM4.5), results to the atmospheric forcing dataset is documented. Together with the model default global forcing dataset (CRU-NCEP, hereafter CRUNCEP), three newly developed, reanalysis-based, near-surface meteorological datasets (i.e., MERRA, CFSR, and ERA-Interim) with the precipitation adjusted by the Global Precipitation Climatology Project monthly product were used to drive CLM4.5. All four simulations were run at 0.5 degrees x0.5 degrees grids from 1979 to 2009 with the identical initialization. The simulated monthly surface hydrology variables, fluxes, and the forcing datasets were then evaluated against various observation-based datasets (soil moisture, runoff, snow depth and water equivalent, and flux tower measurements). To partially avoid the mismatch between model gridbox values and point measurements, three approaches were taken. The model simulations based on three newly constructed forcing datasets are overall better than the simulation from CRUNCEP, in particular for soil moisture and snow quantities. The ensemble mean from the CLM4.5 simulations using the four forcing datasets is generally superior to individual simulations, and the ensemble mean latent and sensible heat fluxes over global land (60 degrees S-90 degrees N) are 42.8 and 40.3 W m(-2), respectively. The differences in both precipitation and other atmospheric forcing variables (e.g., air temperature and downward solar radiation) contribute to the differences in simulated results. The datasets are available from the authors for further evaluation and for various applications.
机译:可以通过运行由大气强迫数据集驱动的地表模型(LSM)来估算全球地表水文和热通量。先前的多模型研究关注于不同LSM对模型结果的影响。这里记录了社区土地模型版本4.5(CLM4.5)对大气强迫数据集的敏感性。与模型默认的全球强迫数据集(CRU-NCEP,以下称CRUNCEP)一起,使用重新开发的三个新近地表气象数据集(即MERRA,CFSR和ERA-Interim),通过全球降水量调整了降水量气候学项目每月产品用于驱动CLM4.5。从1979年到2009年,所有四个模拟都在0.5度x0.5度的网格上运行,并且初始化相同。然后,针对各种基于观测的数据集(土壤湿度,径流,积雪深度和水当量以及流量塔测量值)评估了模拟的每月地面水文学变量,通量和强迫数据集。为了部分避免模型网格框值和点测量值之间的不匹配,采用了三种方法。基于三个新构建的强迫数据集的模型仿真总体上比CRUNCEP的仿真更好,特别是在土壤湿度和积雪量方面。使用四个强迫数据集进行的CLM4.5模拟得出的集合平均数通常要优于单个模拟,并且全球陆地(北纬60度至90度)的合计平均潜热通量和显热通量分别为42.8和40.3 W m(- 2)。降水量和其他大气强迫变量(例如,气温和向下的太阳辐射)的差异会导致模拟结果的差异。这些数据集可从作者那里获得,以进行进一步评估和用于各种应用。

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