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Sensitivity of convective precipitation forecasts to soil moisture and vegetation.

机译:对流降水预报对土壤水分和植被的敏感性。

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摘要

Land surface properties play a major role in convective precipitation events through impacting the amount of surface evaporation which results in changes to near surface temperature and humidity. This study examines the effects of using soil moisture data from the North American Regional Reanalysis (NARR) and the Soil Moisture Ocean Salinity Satellite (SMOS) on short term weather forecasts using the Weather Research and Forecasting Model (WRF).;SMOS soil moisture data were compared to in-situ observations and it was found that although they captured the spatial variation in soil moisture, the actual measurements had a dry bias of roughly 0.10 m3/m 3. Large differences existed between the in-situ observations, even for probes only a few meters apart. Observations from different sensors within a SMOS footprint differed from each other by a larger amount than they differed from the SMOS retrieval. Removing the mean and normalizing the data brought the in-situ observations into better agreement with each other and with SMOS but they still contained substantial differences.;WRF sensitivity experiments demonstrated that changes to initial values of soil moisture resulted in no significant changes in precipitation. However, more of an impact was seen when the vegetation was changed, with barren vegetation yielding a substantial decrease in precipitation. Adding soil moisture resulted in significant changes to 2 m temperature and dewpoint relative to the control runs for each vegetation type. However, it was found that convective available potential energy and moist static energy change little, as the temperature and humidity impacts on these variables cancel each other out, which explain the limited precipitation response.;SMOS data resulted in no significant changes in precipitation forecasts but had some impacts on temperature and humidity forecasts. However, because these results were not seen in all cases, no definitive conclusions about the usefulness of SMOS for high resolution numerical modeling can be made at this time. These results provide major implications for future satellite missions such as Soil Moisture Active Passive showing that experiments using true data assimilation methods which give only partial weight to satellite data may also not provide significant improvements to weather forecasts.
机译:土地表面特性通过影响表面蒸发量而在对流降水事件中起主要作用,这会导致近地表温度和湿度发生变化。本研究使用天气研究和预报模型(WRF)研究了使用北美区域再分析(NARR)和土壤水分海洋盐分卫星(SMOS)的土壤水分数据对短期天气预报的影响。将其与原位观测值进行比较,发现尽管它们捕获了土壤水分的空间变化,但实际测量值的干偏值约为0.10 m3 / m3。即使在探头之间,原位观测值之间也存在较大差异。相距仅几米。在SMOS覆盖范围内,来自不同传感器的观测值彼此之间的差异大于与SMOS检索所产生的差异。去除均值并对数据进行归一化可以使原位观测彼此之间以及与SMOS更好地吻合,但是它们仍然存在实质性差异。WRF敏感性实验表明,土壤湿度初始值的变化不会导致降水的显着变化。但是,当改变植被时,会看到更多的影响,贫瘠的植被会导致降水量大大减少。相对于每种植被类型的对照运行,增加土壤水分导致2 m温度和露点发生显着变化。然而,发现对流可用势能和湿静能变化不大,因为温度和湿度对这些变量的影响相互抵消,这解释了有限的降水响应。; SMOS数据未使降水预报发生重大变化,但对温度和湿度的预测有一些影响。但是,由于并非在所有情况下都可以看到这些结果,因此目前尚无法得出有关SMOS对高分辨率数值建模的实用性的明确结论。这些结果对未来的卫星任务(如土壤水分主动无源)提供了重要的启示,表明使用仅对卫星数据部分权重的真实数据同化方法进行的实验也可能不会显着改善天气预报。

著录项

  • 作者

    Collow, Thomas William.;

  • 作者单位

    Rutgers The State University of New Jersey - New Brunswick.;

  • 授予单位 Rutgers The State University of New Jersey - New Brunswick.;
  • 学科 Atmospheric Sciences.;Meteorology.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 140 p.
  • 总页数 140
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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