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首页> 外文期刊>Hydrology and Earth System Sciences Discussions >Correction of systematic model forcing bias of CLM using assimilation of cosmic-ray Neutrons and land surface temperature: a study in the Heihe Catchment, China
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Correction of systematic model forcing bias of CLM using assimilation of cosmic-ray Neutrons and land surface temperature: a study in the Heihe Catchment, China

机译:矫正宇宙射线中子和陆地温度同化校正CLM偏差的校正:中国黑河集水区研究

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The recent development of the non-invasive cosmic-ray soil moisture sensing technique fills the gap between point-scale soil moisture measurements and regional-scale soil moisture measurements by remote sensing. A cosmic-ray probe measures soil moisture for a footprint with a diameter of ~ 600 m (at sea level) and with an effective measurement depth between 12 and 76 cm, depending on the soil humidity. In this study, it was tested whether neutron counts also allow correcting for a systematic error in the model forcings. A lack of water management data often causes systematic input errors to land surface models. Here, the assimilation procedure was tested for an irrigated corn field (Heihe Watershed Allied Telemetry Experimental Research – HiWATER, 2012) where no irrigation data were available as model input although for the area a significant amount of water was irrigated. In the study, the measured cosmic-ray neutron counts and Moderate-Resolution Imaging Spectroradiometer (MODIS) land surface temperature (LST) products were jointly assimilated into the Community Land Model (CLM) with the local ensemble transform Kalman filter. Different data assimilation scenarios were evaluated, with assimilation of LST and/or cosmic-ray neutron counts, and possibly parameter estimation of leaf area index (LAI). The results show that the direct assimilation of cosmic-ray neutron counts can improve the soil moisture and evapotranspiration (ET) estimation significantly, correcting for lack of information on irrigation amounts. The joint assimilation of neutron counts and LST could improve further the ET estimation, but the information content of neutron counts exceeded the one of LST. Additional improvement was achieved by calibrating LAI, which after calibration was also closer to independent field measurements. It was concluded that assimilation of neutron counts was useful for ET and soil moisture estimation even if the model has a systematic bias like neglecting irrigation. However, also the assimilation of LST helped to correct the systematic model bias introduced by neglecting irrigation and LST could be used to update soil moisture with state augmentation.
机译:无侵入性宇宙射线水分传感技术最近的发展填补了点尺度土壤水分测量和区域规模土壤湿度测量之间的差距。宇宙射线探针测量占地面积的土壤水分,直径为〜600米(在海平面),有效的测量深度在12到76厘米之间,这取决于土壤湿度。在这项研究中,测试中子计数是否还允许在模型强制上进行系统误差。缺乏水管理数据通常会导致陆地表面模型的系统输入误差。在此,对灌溉玉米田进行了同化程序(黑河流域盟友遥测实验研究 - HIWATER,2012),在没有作为模型输入的灌溉数据,尽管对于该区域灌溉大量的水。在该研究中,用局部集合变换卡尔曼滤波器将测量的宇宙射线中子计数和适度分辨率的成像分光辐射器(MODIS)陆地温度(LST)陆地温度(LST)陆地温度(LST)产物共同同化到社区陆地模型(CLM)中。评估不同的数据同化方案,同化LST和/或宇宙射线中子计数,以及叶面积指数(LAI)的参数估计。结果表明,宇宙射线中子计数的直接同化可显着改善土壤水分和蒸散蒸腾(ET)估计,纠正灌溉量的信息。中子计数和LST的联合同化可以进一步提高ET估计,但中子计数的信息含量超过了LST之一。通过校准莱校准,校准后的额外改进也更接近独立的现场测量。结论是,即使该模型具有忽略灌溉等系统偏见,中子计数的同化也可用于ET和土壤湿度估计。然而,LST的同化也有助于纠正通过忽视灌溉和LST引入的系统模型偏差,可用于更新具有国家增强的土壤水分。

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