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Nutrient Diagnosis of Eucalyptus at the Factor-Specific Level Using Machine Learning and Compositional Methods

机译:采用机器学习和组成方法对因子特异性水平的桉树营养诊断

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摘要

Brazil is home to 30% of the world’s trees. The seedlings are fertilized at plantation to support biomass production until canopy closure. Thereafter, fertilization is guided by state standards that may not apply at the local scale where myriads of growth factors interact. Our objective was to customize the nutrient diagnosis of young trees down to factor-specific levels. We collected 1861 observations across eight clones, 48 soil types, and 148 locations in southern Brazil. Cutoff diameter between low- and high-yielding specimens at breast height was set at 4.3 cm. The random forest classification model returned a relatively uninformative area under the curve (AUC) of 0.63 using tissue compositions only, and an informative AUC of 0.78 after adding local features. Compared to nutrient levels from quartile compatibility intervals of nutritionally balanced specimens at high-yield level, state guidelines appeared to be too high for Mg, B, Mn, and Fe and too low for Cu and Zn. Moreover, diagnosis using concentration ranges collapsed in the multivariate Euclidean hyper-space by denying nutrient interactions. Factor-specific diagnosis detected nutrient imbalance by computing the Euclidean distance between centered log-ratio transformed compositions of defective and successful neighbors at a local scale. Downscaling regional nutrient standards may thus fail to account for factor interactions at a local scale. Documenting factors at a local scale requires large datasets through close collaboration between stakeholders.
机译:巴西是世界上30%的树木的家。幼苗在种植园受精,以支持生物质产生,直至冠层闭合。此后,施肥是由国家标准指导,这些标准可能不适用于当地规模,其中Myriad的增长因素互动。我们的目标是定制年轻树木的营养诊断到具体化特定水平。我们在巴西南部的八个克隆,48种土壤类型和148个地点收集了1861种观察结果。在乳房高度的低屈服标本之间的截止直径设定为4.3厘米。随机森林分类模型在添加组织组合物中返回0.63的曲线(AUC)下的相对无关区域,并在添加局部特征后的0.78的信息AUC。与高产水平的营养平衡标本的四分位数相容性间隔相比,态度指南对于Mg,B,Mn和Fe,对于Cu和Zn而言,似乎太高。此外,使用浓度范围的诊断通过否定营养相互作用,在多变量欧几里德超空间中塌陷。通过计算以当地规模计算缺陷和成功邻居的偏心和成功的邻居的成分之间的欧几里德距离来检测因子特异性诊断检测营养不平衡。因此,缩小区域营养标准可能无法考虑在本地规模处的因子相互作用。通过利益相关者之间的密切合作,本地规模的记录因素需要大型数据集。

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