首页> 外文期刊>Progress in Artificial Intelligence >Analysis of Cultivar-Specific Variability in Size-Related Leaf Traits and Modeling of Single Leaf Area in Three Medicinal and Aromatic Plants: Ocimum basilicum L., Mentha Spp., and Salvia Spp.
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Analysis of Cultivar-Specific Variability in Size-Related Leaf Traits and Modeling of Single Leaf Area in Three Medicinal and Aromatic Plants: Ocimum basilicum L., Mentha Spp., and Salvia Spp.

机译:三种药用植物尺寸相关叶状性状特性栽培品种特异性变异性分析及三种药用植物单叶面积的建模:OCimum Basilicum L.,Mentha SPP。和Salvia SPP。

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In this study, five allometric models were used to estimate the single leaf area of three well-known medicinal and aromatic plants (MAPs) species, namely basil (Ocimum basilicum L.), mint (Mentha spp.), and sage (Salvia spp.). MAPs world production is expected to rise up to 5 trillion US$ by 2050 and, therefore, there is a high interest in developing research related to this horticultural sector. Calibration of the models was obtained separately for three selected species by analyzing (a) the cultivar variability-i.e., 5 cultivars of basil (1094 leaves), 4 of mint (901 leaves), and 5 of sage (1103 leaves)-in the main two traits related to leaf size (leaf length, L, and leaf width, W) and (b) the relationship between these traits and single leaf area (LA). Validation of the chosen models was obtained for each species using an independent dataset, i.e., 487, 441, and 418 leaves, respectively, for basil (cv. 'Lettuce Leaf'), mint (cv. 'Comune'), and sage (cv. 'Comune'). Model calibration based on fast-track methodologies, such as those using one measured parameter (one-regressor models: L, W, L-2, and W-2) or on more accurate two-regressors models (L x W), allowed to achieve different levels of accuracy. This approach highlighted the importance of considering intra-specific variability before applying any models to a certain cultivar to predict single LA. Eventually, during the validation phase, although modeling of single LA based on W-2 showed a good fitting (R-basil(2) = 0.948; R-mint(2) = 0.963; R-sage(2) = 0.925), the distribution of the residuals was always unsatisfactory. On the other hand, two-regressor models (based on the product L x W) provided the best fitting and accuracy for basil (R-2 = 0.992; RMSE = 0.327 cm(2)), mint (R-2 = 0.998; RMSE = 0.222 cm(2)), and sage (R-2 = 0.998; RMSE = 0.426 cm(2)).
机译:在这项研究中,使用五种各种模型来估计三种众所周知的药物和芳香植物(地图)物种的单叶面积,即罗勒(Ocimum Basilicum L.),薄荷(Mentha SPP)和Sage(Salvia SPP 。)。地图世界生产预计将上升至2050美元,因此,对与此园艺行业相关的研究有很大兴趣。通过分析(a)含有三种选定物种的模型的校准通过分析(a)栽培品种 - 即5个罗勒(1094叶),4个薄荷(901叶)和5种Sage(1103叶)-in主要的两个特征与叶尺寸(叶长度,L和叶宽,w)和(b)这些性状与单叶面积(La)之间的关系。使用独立的数据集,即487,441和418叶(CV.'莴苣叶'),即487,441和418,薄荷(CV。'COMUNE')和SAGE的每个物种简历。'comune')。基于快速轨道方法的模型校准,例如使用一个测量参数的那些(单次回归型号:L,W,L-2和W-2)或更准确的双回收器模型(L X W),允许实现不同的准确度。这种方法强调了在将任何模型应用于某种品种以预测单一LA的情况下,考虑特定内变异性的重要性。最终,在验证阶段期间,尽管基于W-2的单级LA的建模显示出良好的配件(R-Basil(2)= 0.948; R-Mint(2)= 0.963; R-Sage(2)= 0.925),残留物的分布总是不令人满意。另一方面,双回收器模型(基于产品L X W)为罗勒提供了最佳的拟合和精度(R-2 = 0.992; RMSE = 0.327cm(2)),薄荷(R-2 = 0.998; RMSE = 0.222厘米(2))和SAGE(R-2 = 0.998; RMSE = 0.426cm(2))。

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