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Integrating Environmental and in situ Hyperspectral Remote Sensing Variables for Grass Nitrogen Estimation in Savannah Ecosystems

机译:在大草原生态系统中为草氮估计集成环境和原位高光谱遥感变量

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Information about the distribution of grass nitrogen (N) concentration is crucial in understanding rangeland vitality and facilitates effective management of wildlife and livestock. A challenge in estimating grass N concentration using remote sensing in savannah ecosystems is that these areas are characterised by heterogeneity in edaphic, topographic and climatic factors. The objective is to test the utility of integrating environmental variables and in situ hyperspectral remote sensing variables for predicting grass N concentration along a land use gradient in the greater Kruger National Park. Data used include i) environmental variables, ii) measured grass N concentration and iii) in situ measured hyperspectral spectra. Non-linear partial least square regression was used. Results showed that several environmental variables were important for N estimation. Integrating environmental variables with in situ hyperspectral variables increased grass N estimation accuracy. The study demonstrated the importance of integrated modelling for savannah ecosystem state assessment.
机译:有关草氮(N)浓度分布的信息对于了解仰光活力至关重要,促进野生动物和牲畜的有效管理。在Savannah生态系统中使用遥感估算草N浓度的挑战是这些领域的特征在于辅助性,地形和气候因子的异质性。目的是测试整合环境变量和原位高光谱遥感变量的效用,以预测沿着克鲁格国家公园的土地利用梯度预测草N浓度。使用的数据包括I)环境变量,ii)测量的草N浓度和III)原位测量的高光谱光谱。使用非线性部分最小二乘回归。结果表明,几种环境变量对于n估计很重要。将环境变量与原位高光谱变量集成,增加了草N估计精度。该研究表明,综合建模对大草原生态系统评估的重要性。

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