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首页> 外文期刊>Sensors >Spectroscopic Determination of Aboveground Biomass in Grasslands Using Spectral Transformations, Support Vector Machine and Partial Least Squares Regression
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Spectroscopic Determination of Aboveground Biomass in Grasslands Using Spectral Transformations, Support Vector Machine and Partial Least Squares Regression

机译:光谱变换,支持向量机和偏最小二乘回归光谱法测定草原地上生物量

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Aboveground biomass (AGB) is one of the strategic biophysical variables of interest in vegetation studies. The main objective of this study was to evaluate the Support Vector Machine (SVM) and Partial Least Squares Regression (PLSR) for estimating the AGB of grasslands from field spectrometer data and to find out which data pre-processing approach was the most suitable. The most accurate model to predict the total AGB involved PLSR and the Maximum Band Depth index derived from the continuum removed reflectance in the absorption features between 916–1,120 nm and 1,079–1,297 nm (R2 = 0.939, RMSE = 7.120 g/m2). Regarding the green fraction of the AGB, the Area Over the Minimum index derived from the continuum removed spectra provided the most accurate model overall (R2 = 0.939, RMSE = 3.172 g/m2). Identifying the appropriate absorption features was proved to be crucial to improve the performance of PLSR to estimate the total and green aboveground biomass, by using the indices derived from those spectral regions. Ordinary Least Square Regression could be used as a surrogate for the PLSR approach with the Area Over the Minimum index as the independent variable, although the resulting model would not be as accurate.
机译:地上生物量(AGB)是植被研究中感兴趣的战略生物物理变量之一。这项研究的主要目的是评估支持向量机(SVM)和偏最小二乘回归(PLSR),以便根据现场光谱仪数据估算草地的AGB,并找出哪种数据预处理方法最合适。预测总AGB的最准确模型涉及PLSR和最大带深指数,该最大带深指数是从916–1,120 nm至1,079–1,297 nm之间的吸收特征中连续去除的反射率得出的(R 2 = 0.939, RMSE = 7.120 g / m 2 )。关于AGB的绿色部分,从连续去除光谱得出的最小指数面积提供了最准确的整体模型(R 2 = 0.939,RMSE = 3.172 g / m 2 < / sup>)。通过使用从那些光谱区域得出的指标,确定合适的吸收特征对提高PLSR评估地上总生物量和绿色地上生物量的性能至关重要。普通最小二乘回归可以用作PLSR方法的替代,以最小覆盖面积指数作为自变量,尽管结果模型可能不那么准确。

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