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Mapping near-surface soil moisture in a Mediterranean agroforestry ecosystem using Cosmic-Ray Neutron Probe and Sentinel-1 Data

机译:使用宇宙射线中子探头和哨照-1数据在地中海农业遗产生态系统中绘制近地表土壤水分

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Accurate near-surface soil moisture (θ; ~ 5 cm) estimation is one of the most crucial challenges in agricultural management and hydrological studies. This study aims to map θ at high spatiotemporal resolution (17 m grid size, satellite overpass of 6 days) in a small-scale agroforestry experimental site (~ 30 ha) in southern Italy. The observation period is from November 2018 until March 2019. We employed an ensemble machine-learning method based on Random Forest (RF) to map θ. This RF method is based on three input data types: i) Sentinel-1 (S1) Synthetic Aperture Radar (SAR) measurements, ii) terrain features, and iii) supporting values of sparse point-scale θ simulated in HYDRUS-1D. We propose two different approaches to obtain supporting θ simulations via inverse modeling in HYDRUS-1D. The first approach is based on θ simulated in HYDRUS-1D, which was calibrated on soil moisture data monitored at two soil depths of 15 cm and 30 cm over 20 positions belonging to the SoilNet wireless sensor network installed in the experimental site. The second approach is based on the downscaling of field-scale θ simulated in HYDRUS-1D which was calibrated on Cosmic-Ray Neutron Probe (CRNP) data. The field-scale θ was downscaled in order to obtain sparse point-scale supporting θ over the same 20 positions by using the physical-empirical Equilibrium Moisture from Topography (EMT) model. The CRNP-based approach performed similarly to the one based on SoilNet data. Therefore, this study highlights the enormous potential for modeling reliable θ maps by integrating soft data such as S1 SAR-based measurements, topographic information, and CRNP data, having the advantage of being non-invasive and easy to maintain.
机译:准确的近地面土壤水分(θ;〜5cm)估计是农业管理和水文研究中最重要的挑战之一。本研究旨在在意大利南部的小规模农学生实验部位(〜30公顷)的小时空分辨率(17米网格尺寸,卫星立交桥6天)下映射θ。观察期为2018年11月至2019年3月。我们使用基于随机林(RF)的集合机器学习方法来映射θ。该RF方法基于三种输入数据类型:i)Sentinel-1(S1)合成孔径雷达(SAR)测量,II)地形特征和III)在Hydrus-1D中模拟稀疏点刻度θ的支持值。我们提出了两种不同的方法来通过氢气-1d中的反向建模获得支持θ模拟。第一种方法是基于液体模拟的θ,该θ在水分数据上被校准,在5厘米的土壤深度,30厘米的土壤水分数据上校准,超过20厘米的20个位置,在于在实验部位安装的粪便无线传感器网络。第二种方法是基于在康复-1D中模拟的场尺度θ的缩小,其在宇宙射线中子探针(CRNP)数据上校准。通过使用来自地形(EMT)模型的物理经验均衡水分,缩小场刻度θ逐渐缩小,以便通过地形(EMT)模型的物理经验均衡水分在相同的20个位置上获得稀疏点刻度θ。基于CRNP的方法与基于粪便数据的方法类似地执行。因此,本研究突出了通过集成了基于S1 SAR的测量,地形信息和CRNP数据的软数据来建模可靠θ映射的巨大潜力,其具有非侵入性且易于维护的优点。

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