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Hyperspectral band selection and modeling of soil organic matter content in a forest using the Ranger algorithm

机译:使用Ranger算法的森林中土壤有机质含量的高光谱带选择和建模

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Effective soil spectral band selection and modeling methods can improve modeling accuracy. To establish a hyperspectral prediction model of soil organic matter (SOM) content, this study investigated a forested Eucalyptus plantation in Huangmian Forest Farm, Guangxi, China. The Ranger and Lasso algorithms were used to screen spectral bands. Subsequently, models were established using four algorithms: partial least squares regression, random forest (RF), a support vector machine, and an artificial neural network (ANN). The optimal model was then selected. The results showed that the modeling accuracy was higher when band selection was based on the Ranger algorithm than when it was based on the Lasso algorithm. ANN modeling had the best goodness of fit, and the model established by RF had the most stable modeling results. Based on the above results, a new method is proposed in this study for band selection in the early phase of soil hyperspectral modeling. The Ranger algorithm can be applied to screen the spectral bands, and ANN or RF can then be selected to construct the prediction model based on different datasets, which is applicable to establish the prediction model of SOM content in red soil plantations. This study provides a reference for the remote sensing of soil fertility in forests of different soil types and a theoretical basis for developing portable equipment for the hyperspectral measurement of SOM content in forest habitats.
机译:有效的土壤光谱频带选择和建模方法可以提高建模精度。本研究研究了土壤有机物(SOM)含量的高光谱预测模型,研究了中国黄跨森林农场的森林桉树种植园。 Ranger和套索算法用于筛选光谱带。随后,使用四种算法建立模型:部分最小二乘回归,随机森林(RF),支持向量机和人工神经网络(ANN)。然后选择最佳模型。结果表明,当频带选择基于游侠算法时,建模精度越高,而不是基于套索算法。 ANN建模具有最佳良好的健康,RF建立的模型具有最稳定的建模结果。基于上述结果,在本研究中提出了一种新方法,用于土壤高光谱建模早期阶段的带选择。 Ranger算法可以应用于筛选光谱频带,然后可以选择ANN或RF基于不同的数据集来构造预测模型,这适用于在红土园中建立SOM含量的预测模型。本研究为森林栖息地偏远地区的森林森林森林中土壤肥力的遥感,以及开发森林栖息地中SOM含量高光谱测量的理论依据。

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