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Nutrient Diagnosis of Fertigated Prata and Cavendish Banana (

机译:生育Prata的营养诊断与卡瓦德香蕉(

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摘要

Fertigation management of banana plantations at a plot scale is expanding rapidly in Brazil. To guide nutrient management at such a small scale, genetic, environmental and managerial features should be well understood. Machine learning and compositional data analysis (CoDa) methods can measure the effects of feature combinations on banana yield and rank nutrients in the order of their limitation. Our objectives are to review ML and CoDa models for application at regional and local scales, and to customize nutrient diagnoses of fertigated banana at the plot scale. We documented 940 “Prata” and “Cavendish” plot units for tissue and soil tests, environmental and managerial features, and fruit yield. A Neural Network informed by soil tests, tissue tests and other features was the most proficient learner (AUC up to 0.827). Tissue nutrients were shown to have the greatest impact on model accuracy. Regional nutrient standards were elaborated as centered log ratio means and standard deviations of high-yield and nutritionally balanced specimens. Plot-scale diagnosis was customized using the closest successful factor-specific tissue compositions identified by the smallest Euclidean distance from the diagnosed composition using centered or isometric log ratios. Nutrient imbalance differed between regional and plot-scale diagnoses, indicating the profound influence of local factors on plant nutrition. However, plot-scale diagnoses require large, reliable datasets to customize nutrient management using ML and CoDa models.
机译:Banana种植园的灌溉管理在绘图规模中在巴西迅速扩展。为了指导如此小规模的营养管理,应得到很好的理解遗传,环境和管理特征。机器学习和组成数据分析(CODA)方法可以测量特征组合对香蕉产量的影响,并按其限制的顺序排列营养。我们的目标是审查ML和CODA模型,用于在区域和本地秤上申请,并以绘图规模定制水生香蕉的营养诊断。我们记录了940个“Prata”和“Cavendish”绘图单元,用于组织和土壤测试,环境和管理特征,以及果产量。通过土壤试验,组织试验和其他特征通知的神经网络是最精通的学习者(AUC至0.827)。显示组织营养物质对模型精度的影响最大。区域营养标准被阐述为中心的日志比率和高产和营养平衡标准的标准偏差。利用来自诊断的组合物的最小欧几里德距离的最近的成功因子特异性组织组合物定制了绘制规模的诊断,所述距离诊断的组合物使用居中或等距数对数。区域和情节诊断之间的营养不平衡不同,表明局部因素对植物营养的深远影响。但是,绘图规模诊断需要大量可靠的数据集来使用ML和CODA模型定制营养管理。

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