首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Data assimilation of high-resolution thermal and radar remote sensing retrievals for soil moisture monitoring in a drip-irrigated vineyard
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Data assimilation of high-resolution thermal and radar remote sensing retrievals for soil moisture monitoring in a drip-irrigated vineyard

机译:滴灌葡萄园土壤水分监测高分辨率热敏和雷达遥感检索的数据同化

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摘要

Efficient water use assessment and irrigation management is critical for the sustainability of irrigated agriculture, especially under changing climate conditions. Due to the impracticality of maintaining ground instrumentation over wide geographic areas, remote sensing and numerical model-based fine-scale mapping of soil water conditions have been applied for water resource applications at a range of spatial scales. Here, we present a prototype framework for integrating high-resolution thermal infrared (TIR) and synthetic aperture radar (SAR) remote sensing data into a soil-vegetation-atmosphere-transfer (SVAT) model with the aim of providing improved estimates of surface- and root-zone soil moisture that can support optimized irrigation management strategies. Specifically, remotely-sensed estimates of water stress (from TIR) and surface soil moisture retrievals (from SAR) are assimilated into a 30-m resolution SVAT model over a vineyard site in the Central Valley of California, U.S. The efficacy of our data assimilation algorithm is investigated via both the synthetic and real data experiments. Results demonstrate that a particle filtering approach is superior to an ensemble Kalman filter for handling the nonlinear relationship between model states and observations. In addition, biophysical conditions such as leaf area index are shown to impact the relationship between observations and states and must therefore be represented accurately in the assimilation model. Overall, both surface and root-zone soil moisture predicted via the SVAT model are enhanced through the assimilation of thermal and radar-based retrievals, suggesting the potential for improving irrigation management at the agricultural sub-field-scale using a data assimilation strategy.
机译:有效的水使用评估和灌溉管理对于灌溉农业的可持续性至关重要,特别是在不断变化的气候条件下。由于在广泛的地理区域维持地面仪器的不切实性,遥感和基于数值模型的土壤水条件的微尺度映射已经应用于一系列空间尺度的水资源应用。在这里,我们提出了一种用于将高分辨率热红外(TIR)和合成孔径雷达(SAR)遥感数据集成到土壤 - 植被 - 气氛转移(SVAT)模型中集成的原型框架,其目的是提供改进的表面估计 - 和根区土壤水分,可支持优化的灌溉管理策略。具体而言,远程感测的水分压力(从TIR)和表面土壤水分检索(来自SAR)的估计被同化在加利福尼亚中央山谷的葡萄园遗址上的30米分辨率的SVAT模型中,我们是我们的数据同化的效果通过合成和实际数据实验研究了算法。结果表明,用于处理模型状态和观察之间的非线性关系的集合Kalman滤波器优于粒子滤波方法。此外,示出了诸如叶面积指数的生物物理条件,以影响观察和状态之间的关系,因此必须在同化模型中准确地表示。总的来说,通过SVAT模型预测的表面和根区域土壤水分通过同化热和基于雷达的检索来增强,建议使用数据同化策略改善农业子场规模的灌溉管理的可能性。

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