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首页> 外文期刊>Journal of hydrometeorology >A Note on Soil Moisture Memory and Interactions with Surface Climate for Different Vegetation Types in the La Plata Basin
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A Note on Soil Moisture Memory and Interactions with Surface Climate for Different Vegetation Types in the La Plata Basin

机译:拉普拉塔盆地不同植被类型的土壤水分记忆及其与表面气候的相互作用的注释

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This work examines the evolution of soil moisture initialization biases and their effects on seasonal forecasts depending on the season and vegetation type for a regional model over the La Plata basin in South America. WRF-Noah simulations covering multiple cases during a 2-yr period are designed to emphasize the conceptual nature of the simulations at the expense of the statistical significance of the results. Analysis of the surface climate shows that the seasonal predictive skill is higher when the model is initialized during the wet season and the initial soil moisture differences are small. Large soil moisture biases introduce large surface temperature biases, particularly for savanna, grassland, and cropland vegetation covers at any time of the year, thus introducing uncertainty in the surface climate. Regions with evergreen broadleaf forest have roots that extend to the deep layer whose moisture content affects the surface temperature through changes in the partitioning of the surface fluxes. The uncertainties of monthly maximum temperature can reach several degrees Celsius during the dry season in cases when 1) the soil is much wetter in the reanalysis than in the WRF-Noah equilibrium soil moisture and 2) the memory of the initial value is long because of scarce rainfall and low temperatures. This study suggests that responses of the atmosphere to soil moisture initialization depend on how the initial wet and dry conditions are defined, stressing the need to take into account the characteristics of a particular region and season when defining soil moisture initialization experiments.
机译:这项工作根据南美洲拉普拉塔盆地的区域模型,根据季节和植被类型,研究了土壤水分初始化偏差的演变及其对季节预报的影响。 WRF-Noah模拟涵盖2年期间的多个案例,旨在强调模拟的概念性质,但会牺牲结果的统计意义。对地表气候的分析表明,当模型在雨季期间初始化且初始土壤水分差异较小时,季节预测能力更高。较大的土壤湿度偏差会引入较大的表面温度偏差,尤其是在一年中的任何时候针对热带稀树草原,草原和农田植被覆盖而言,因此都会带来地表气候的不确定性。常绿阔叶林地区的根部延伸到深层,其水分通过表面通量分配的变化而影响表面温度。在以下情况下,在以下情况下,干旱季节每月最高温度的不确定性可能达到几摄氏度:1)重新分析的土壤比WRF-Noah平衡土壤湿度的土壤更湿润,并且2)由于以下原因,初始值的存储时间较长:稀少的降雨和低温。这项研究表明,大气对土壤湿度初始化的响应取决于如何定义初始的湿润和干燥条件,从而在定义土壤湿度初始化实验时强调需要考虑特定区域和季节的特征。

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