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Evaluation of a cosmic-ray neutron sensor network for improved land surface model prediction

机译:改进陆地模型预测宇宙射线中子传感器网络的评价

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In situ soil moisture sensors provide highly accurate but very local soil moisture measurements, while remotely sensed soil moisture is strongly affected by vegetation and surface roughness. In contrast, cosmic-ray neutron sensors (CRNSs) allow highly accurate soil moisture estimation on the field scale which could be valuable to improve land surface model predictions. In this study, the potential of a network of CRNSs installed in the 2354 km(2) Rur catchment (Germany) for estimating soil hydraulic parameters and improving soil moisture states was tested. Data measured by the CRNSs were assimilated with the local ensemble transform Kalman filter in the Community Land Model version 4.5. Data of four, eight and nine CRNSs were assimilated for the years 2011 and 2012 (with and without soil hydraulic parameter estimation), followed by a verification year 2013 without data assimilation. This was done using (i) a regional high-resolution soil map, (ii) the FAO soil map and (iii) an erroneous, biased soil map as input information for the simulations. For the regional soil map, soil moisture characterization was only improved in the assimilation period but not in the verification period. For the FAO soil map and the biased soil map, soil moisture predictions improved strongly to a root mean square error of 0.03 cm(3) cm(-3) for the assimilation period and 0.05 cm(3) cm(-3) for the evaluation period. Improvements were limited by the measurement error of CRNSs (0.03 cm(3) cm(-3)). The positive results obtained with data assimilation of nine CRNSs were confirmed by the jackknife experiments with four and eight CRNSs used for assimilation. The results demonstrate that assimilated data of a CRNS network can improve the characterization of soil moisture content on the catchment scale by updating spatially distributed soil hydraulic parameters of a land surface model.
机译:原位土壤湿度传感器提供高精度但非常局部的土壤湿度测量,而远程感测的土壤水分受植被和表面粗糙度的影响。相反,宇宙射线中子传感器(CRNSS)允许高度准确的土壤水分估算对现场规模来说,这可能是有价值的,可以有价值改善陆地面模型预测。在这项研究中,测试了在2354公里(2)RUR集水区(德国)中安装的CRNS网络的潜力用于估算土壤液压参数和改善土壤水分状态。通过CRNSS测量的数据在社区土地模型版本4.5中使用本地集合变换卡尔曼滤波器同化。 2011年和2012年的四年,八个和九个蠕虫的数据(有没有土壤液压参数估计),随后没有数据同化的验证年度。这是使用(i)区域高分辨率土壤图(ii)粮农组织土壤图和(iii)一个错误,偏见的土壤图作为模拟的输入信息。对于区域土壤图,土壤水分表征仅在同化期内得到改善,但不在验证期内得到改善。对于粮农组织土壤图和偏见的土壤图,土壤水分预测强烈地改善了同化周期的0.03cm(3)厘米(-3)的根均方误差,为0.05厘米(3)厘米(3)厘米(-3)评估期。通过CRNSS的测量误差(0.03cm(3)厘米(-3))的测量误差有限。通过用于同化的四个和八个蠕虫的胶卷实验证实了用数据同化获得的阳性结果。结果表明,通过更新陆地表面模型的空间分布的土壤液压参数,CRNS网络的同化数据可以通过更新空间分布的土壤液压参数来改善集距材含量的表征。

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