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Analysis of Large Scale Spatial Variability of Soil Moisture Using a Geostatistical Method

机译:用地统计方法分析土壤水分的大规模空间变异性

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摘要

Spatial and temporal soil moisture dynamics are critically needed to improve the parameterization for hydrological and meteorological modeling processes. This study evaluates the statistical spatial structure of large-scale observed and simulated estimates of soil moisture under pre- and post-precipitation event conditions. This large scale variability is a crucial in calibration and validation of large-scale satellite based data assimilation systems. Spatial analysis using geostatistical approaches was used to validate modeled soil moisture by the Agriculture Meteorological (AGRMET) model using in situ measurements of soil moisture from a state-wide environmental monitoring network (Oklahoma Mesonet). The results show that AGRMET data produces larger spatial decorrelation compared to in situ based soil moisture data. The precipitation storms drive the soil moisture spatial structures at large scale, found smaller decorrelation length after precipitation. This study also evaluates the geostatistical approach for mitigation for quality control issues within in situ soil moisture network to estimates at soil moisture at unsampled stations.
机译:迫切需要时空土壤水分动力学,以改善水文和气象建模过程的参数化。这项研究评估了在降水前后事件条件下大规模观测和模拟估算的土壤水分的统计空间结构。这种大规模的可变性对于大规模基于卫星的数据同化系统的校准和验证至关重要。农业气象(AGRMET)模型使用地统计方法进行空间分析,以验证模型化的土壤水分,该模型使用了来自全州环境监测网络(Oklahoma Mesonet)的土壤水分的原位测量。结果表明,与基于土壤水分的原位数据相比,AGRMET数据产生了更大的空间去相关性。降水暴雨带动了土壤水分空间结构的大规模发展,降水后去相关长度变短。这项研究还评估了缓解原地土壤水分网络内质量控制问题的地统计学方法,以估算未采样站的土壤水分。

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