基于遥感的森林冠层氮含量估算

IF 0.6 4区 物理与天体物理 Q4 OPTICS
Yang Xi-guang, Yu Ying, Huang Haijun, Fan Wenyi
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引用次数: 5

摘要

利用高光谱数据估算叶片和冠层氮含量。利用基于BP神经网络高斯误差函数的改进模型Erf-BP建立了叶片氮含量的遥感估算模型。然后根据几何光学模型原理,推导了冠层光谱降尺度到叶片光谱的尺度转换函数。利用这些关系从Hyperion影像的冠层反射率降尺度到叶片光谱进行叶片氮含量估算。最后,利用森林结构参数叶面积指数(LAI)从叶片水平获取冠层氮含量。结果表明,Erf-BP最佳。测试准确率为76.8597%的神经网络模型包含8个隐藏层神经元。利用尺度转换函数估算670nm和865nm的冠层光谱,模型光谱与观测值的相关系数(R-2)分别为0.5203和0.4117。叶片氮含量估计值与实测值的相关系数为0.7019。该方法为更快速、准确地估算叶片和冠层氮素提供了参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of forest canopy nitrogen content based on remote sensing
Hypespectral data was used to estimate leaf and canopy nitrogen content. Erf-BP, an improved model based on the Gaussian error function of BP neural network, was used to develop remote sensing models for estimating leaf nitrogen content. Then the scaling conversion function during downscales from canopy to leaf spectral was derived according to principles of geometric optics model. These relations were used during downscales from the canopy reflectance of Hyperion image to leaf spectral for leaf nitrogen content estimation. Finally, forest structural parameter leaf area index (LAI) was used to obtain canopy nitrogen content from leaf level. The results showed that the best Erf-BP. neural network model with testing accuracy of 76.8597% includes 8 neurons in hidden layer. Using scaling conversion function to estimate canopy spectra at 670nm and 865nm, correlations (R-2) between modeling spectra and measurements were 0.5203 and 0.4117 respectively. Correlation coefficient between estimated leaf nitrogen content and measurements was 0.7019. This method provides a good reference for more rapid and accurate estimation of leaf and canopy nitrogen.
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来源期刊
CiteScore
1.20
自引率
14.30%
发文量
4258
审稿时长
2.9 months
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