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首页> 外文期刊>Computers and Electronics in Agriculture >Assessment of generalized allometric models for aboveground biomass estimation: A case study in Australia
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Assessment of generalized allometric models for aboveground biomass estimation: A case study in Australia

机译:用于地上生物量估计的广义同传模型的评估 - 以澳大利亚为例

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This paper aims to assess the performance of generalized aboveground biomass (AGB) allometric models in the Australian context by investigating the correlation between the AGB estimates and the lidar-based individual tree parameters. A hybrid tree segmentation algorithm is proposed to segment an airborne lidar point cloud into individual trees. Although the diameter at breast height (DBH) of a tree is a crucial parameter for the AGB estimation, a typical airborne lidar data contains only a few points representing partial DBH, hence a localized DBH regression model is proposed. Principal component analysis is applied to examine the multicollinearity in the input variables and ridge regression is applied to remove the less important variables. Four machine learning techniques, namely random forest, support vector regression, multilayer perceptron and radial basis function, are applied to generate AGB regression models. The qualities of the calibrated AGB models are assessed by calculating the adjusted-coefficient-of-determination, leave-one-out cross-validation, the Akaike information criterion, normalized-mean-square-error and the model efficiency index. The test results indicate that the random forest-based AGB model outperforms other machine learning techniques. It is concluded that, if the environmental conditions of tree samples resemble the study region, the generalized AGB allometric model would perform well with the tree samples regardless of their geographical context.
机译:本文旨在通过调查AGB估计与基于激光雷达的单一树参数之间的相关性来评估澳大利亚语境中广义上述生物量(AGB)同种模型的性能。提出了一种混合树分段算法,将空气传播的激光雷云段分成单独的树木。尽管树的乳房高度(DBH)处的直径是AGB估计的关键参数,但是典型的空中LIDAR数据仅包含几个代表部分DBH的点,因此提出了一种局部DBH回归模型。应用主成分分析来检查输入变量中的多色性,并且应用脊回归以消除不太重要的变量。四种机器学习技术,即随机森林,支持向量回归,多层erceptron和径向基函数,用于生成AGB回归模型。通过计算调整系数,左右交叉验证,Akaike信息标准,归一化 - 平方误差和模型效率指数来评估校准的AGB模型的质量。测试结果表明,随机林的AGB模型优于其他机器学习技术。结论是,如果树样本的环境条件类似于研究区,则无论其地理背景如何,广义AGB各种模型将与树样本相吻合。

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