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Improvement of land surface model simulations over India via data assimilation of satellite-based soil moisture products

机译:通过卫星土壤水分产品的数据同化改进印度土地面模拟模型模拟

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Realistic representation of surface states using the land surface model (LSM) is extremely challenging owing to human-induced changes and uncertainty in forcing data. In this study, we focus on two crucial objectives pertaining to hydrology namely (a) to understand the ability of different soil moisture (SM) products to improve simulation of unmodeled irrigation processes through data assimilation process, and (b) to learn the feasibility of these SM products to correct the spatial surface soil moisture artifacts caused due to error in precipitation forcing. The utility of SM products evaluated in the present study are retrieved from different satellite sensors and algorithms such as the active satellite-based the Advanced Scatterometer (ASCAT), merged SM from European Space Agency Climate Change Initiative (ESA CCI V4.2) and the latest passive microwave-based SMOS INRA-CESBIO (SMOS-IC) SM product. The results presented for three years (2010, 2011 and 2012) suggest that assimilation of ASCAT and CCI based products effectively captures the SM changes due to irrigation. Similarly, it corrects the spatial artifacts caused due to precipitation errors. However, the single sensor based products have a limitation in spatial samples per day which is critical to capture dynamic SM products over a larger area. Hence, blended products are more effective on a larger area to capture the dynamics in a more effective manner at daily temporal resolutions.
机译:由于在迫使数据中的人为诱导的变化和不确定性,使用陆地表面模型(LSM)的现实表达极为挑战。在这项研究中,我们专注于与水文有关的两个重要目标,即(a)通过数据同化过程来了解不同土壤湿度(SM)产品的能力,以改善未拼接的灌溉过程的模拟,(b)以学习可行性这些SM产品校正由于沉淀强制误差引起的空间表面土壤水分伪影。在本研究中评价的SM产品的效用从不同的卫星传感器和算法中检索,例如基于活动卫星的先进散射计(ASCAT),来自欧洲空间机构气候变化倡议(ESA CCI V4.2)和基于最新的被动微波的SMOS INRA-CESBIO(SMOS-IC)SM产品。结果介绍了三年(2010年,2011年和2012年)建议,ASCAT和CCI产品的同化有效地捕获了由于灌溉而变化。同样,它校正由于降水误差引起的空间伪影。然而,基于单个传感器的产品在每天的空间样本中有一个限制,这对于捕获更大区域的动态SM产品至关重要。因此,混合产品在更大的区域上更有效地以日常时间分辨率更有效地捕获动力学。

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