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Constraining a physically based Soil-Vegetation-Atmosphere Transfer model with surface water content and thermal infrared brightness temperature measurements using a multiobjective approach

机译:使用多目标方法使用地表水分和红外热亮度温度测量约束基于物理的土壤-植被-大气转移模型

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摘要

This article reports on a multiobjective approach which is carried out on the physically based Soil-Vegetation-Atmosphere Transfer (SVAT) model. This approach is designed for (1) analyzing the model sensitivity to its input parameters under various environmental conditions and (2) assessing input parameters through the combined assimilation of the surface water content and the thermal infrared brightness temperature. To reach these goals, a multiobjective calibration iterative procedure (MCIP) is applied on the Simple Soil Plant Atmosphere Transfer-Remote Sensing (SiSPAT-RS) model. This new multiobjective approach consists of performing successive contractions of the feasible parameter space with the multiobjective generalized sensitivity analysis algorithm. Results show that the MCIP is an original and pertinent approach both for improving model calibration (i.e., reducing the a posteriori preferential ranges) and for driving a detailed SVAT model using various calibration data. The usefulness of the water content of the upper 5 cm and the thermal infrared brightness temperature for retrieving quantitative information about the main input surface parameters is also underlined. This study opens perspectives in the combined assimilation of various multispectral remotely sensed observations, such as passive microwaves and thermal infrared signals.
机译:本文报告了一种基于物理的土壤-植被-大气转移(SVAT)模型的多目标方法。此方法设计用于(1)在各种环境条件下分析模型对其输入参数的敏感度,以及(2)通过表面水分和红外热亮度温度的组合同化来评估输入参数。为了实现这些目标,将多目标校准迭代过程(MCIP)应用于简单土壤植物大气迁移-遥感(SiSPAT-RS)模型。这种新的多目标方法包括使用多目标广义灵敏度分析算法对可行参数空间进行连续收缩。结果表明,MCIP是改进模型校准(即减小后验优先范围)和使用各种校准数据驱动详细的SVAT模型的原始且相关的方法。还强调了上部5 cm的水分含量和热红外亮度温度对于检索有关主要输入表面参数的定量信息的有用性。这项研究为各种多光谱遥感观测(例如无源微波和热红外信号)的组合同化开辟了前景。

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