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Monitoring tree moisture using an estimation algorithm applied to SAR data from BOREAS

机译:使用估计算法监测树木水分,该算法应用于BOREAS的SAR数据

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During several field campaigns in spring and summer of 1994, the NASA/JPL airborne synthetic aperture radar (AIRSAR) collected data over the southern and northern study sites of BOREAS. Among the areas over which radar data were collected was the young jack pine (YJP) tower site in the south, which is generally characterized as having short (2-4 m) but closely spaced trees with a dense crown layer. In this work, the AIRSAR data over this YJP stand from six different dates were used, and the dielectric constant and hence the moisture content of its branch layer components were estimated. The approach was to first derive a parametric scattering model from a numerical discrete-component forest model, which is possible if the predominant scattering mechanism can be identified. Here, a classification algorithm was used for this purpose, concentrating on areas where the volume scattering mechanism from the branch layer dominates. The unknown parameters mere taken to be the real and imaginary parts of the dielectric constant, from which the moisture content can be derived. Once the parametric model was derived, a nonlinear estimation algorithm was employed to retrieve the model parameters from SAR data. This algorithm is iterative, and takes the statistical properties of the data and unknown parameters into account. The inversion process was first verified using synthetic data. It was observed that the algorithm is robust with respect to the a priori estimate. The estimation algorithm was then applied to AIRSAR data of BOREAS. The results show how the environmental conditions affected the moisture state of this forest stand over a period of six months. It is observed that canopy moisture increased during the thaw season, was stable starting from the end of the thaw season throughout most of the growing season, after which a period of dry-down was observed at the end of the growing season.
机译:在1994年春季和夏季的几次野战中,NASA / JPL机载合成孔径雷达(AIRSAR)收集了BOREAS南部和北部研究地点的数据。在收集雷达数据的区域中,南部是年轻的杰克松(YJP)塔站,通常以矮树(2-4 m)但间隔紧密,树冠密实的树木为特征。在这项工作中,使用了来自YJP站的六个不同日期的AIRSAR数据,并估计了介电常数及其分支层成分的水分含量。该方法是首先从数字离散成分森林模型中导出参数化散射模型,如果可以识别出主要的散射机制,这是可能的。此处,为此目的使用了分类算法,重点关注分支层的体积散射机制占主导的区域。未知参数仅是介电常数的实部和虚部,可以从中得出水分含量。推导参数模型后,将使用非线性估计算法从SAR数据中检索模型参数。该算法是迭代的,并考虑了数据的统计属性和未知参数。首先使用合成数据验证了反演过程。观察到该算法相对于先验估计是鲁棒的。然后将估计算法应用于BOREAS的AIRSAR数据。结果表明,在六个月的时间内,环境条件如何影响该森林的水分状况。观察到在解冻季节冠层水分增加,从整个生长季节的解冻季节结束开始稳定,此后在生长季节结束时观察到干燥期。

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