On the ability of Sentinel-1 backscatter to detect soil moisture and vegetation changes caused by irrigation fluxes over the Po River Valley (Italy)

S. Modanesi, C. Massari, A. Gruber, L. Brocca, H. Lievens, R. Morbidelli, Gabrielle J. M. De Lannoy
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Abstract

Worldwide, the amount of water used for agricultural purposes is rising because of an increasing food demand. In this context, the detection and quantification of irrigation is crucial, but the availability of ground observations is limited. Therefore, an increasing number of studies are focusing on the use of models and satellite data to detect and quantify irrigation. For instance, the parameterization of irrigation in large scale Land Surface Models (LSM) is improving, but it is still characterized by simplifying assumptions, such as the lack of dynamic crop information, the extent of irrigated areas, and the mostly unknown timing and amount of irrigation. Remote sensing observations offer an opportunity to fill this gap as they are directly affected by, and hence potentially able to detect, irrigation. Therefore, combining models and satellite information through data assimilation can offer a viable way to quantify the water used for irrigation.

The aim of this study is to test how well modelled soil moisture and vegetation estimates from the Noah-MP LSM, with or without irrigation parameterization in the NASA Land Information System (LIS), are able to mimic in situ observations or to capture the signal of high-resolution Sentinel-1 backscatter observations in an irrigated area. The experiments were carried out over select sites in the Po river Valley, an important agricultural area in Northern Italy. To prepare for a data assimilation system, Level-1 Sentinel-1 backscatter observations, aggregated and sampled onto the 1 km EASE-v2 grid, were used to calibrate a Water Cloud Model (WCM) using simulated soil moisture and Leaf Area Index estimates. The WCM was calibrated with and without activating an irrigation scheme in Noah-MP. Results demonstrate that the use of the irrigation scheme provides the optimal calibration of the WCM, confirming the ability of Sentinel-1 to track the impact of human activities on the water cycle. Additionally, a first data assimilation experiment demonstrates the potential of Sentinel-1 backscatter observations to correct errors in Land Surface Model (LSM) simulations that are caused by unmodelled or wrongly modelled irrigation.

关于Sentinel-1背向散射探测波河流域灌溉通量引起的土壤湿度和植被变化的能力(意大利)
在世界范围内,由于粮食需求的增加,用于农业目的的水量正在上升。在这方面,灌溉的检测和量化是至关重要的,但是地面观测的可用性是有限的。因此,越来越多的研究集中于利用模型和卫星数据来探测和量化灌溉。例如,大尺度陆地表面模型(LSM)中的灌溉参数化正在改进,但其特征仍然是假设简化,例如缺乏动态作物信息,灌溉面积的范围,以及大部分未知的灌溉时间和数量。遥感观测提供了一个填补这一空白的机会,因为它们直接受到灌溉的影响,因此有可能探测到灌溉。因此,通过数据同化将模型与卫星信息相结合,可以提供一种量化灌溉用水量的可行方法。本研究的目的是测试在NASA土地信息系统(LIS)中有或没有灌溉参数化的情况下,诺亚- mp LSM模拟的土壤湿度和植被估计是否能够很好地模拟现场观测或捕获高分辨率Sentinel-1背向散射观测在灌溉区的信号。实验是在意大利北部重要的农业区波河流域选定的地点进行的。为了准备数据同化系统,利用1 km EASE-v2网格上的Level-1 Sentinel-1后向散射观测数据进行汇总和采样,利用模拟的土壤湿度和叶面积指数估算值对水云模型(WCM)进行校准。在Noah-MP中,WCM在激活灌溉方案和不激活灌溉方案的情况下进行校准。结果表明,灌溉方案的使用提供了WCM的最佳校准,证实了Sentinel-1跟踪人类活动对水循环影响的能力。此外,第一次数据同化实验表明,Sentinel-1背向散射观测数据有可能纠正陆地表面模型(LSM)模拟中由未建模或错误模拟的灌溉造成的误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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