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首页> 外文期刊>Scientia horticulturae >Application of Artificial Neural Networks to predict the final fruit weight and random forest to select important variables in native population of melon (Cucumis melo L.)
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Application of Artificial Neural Networks to predict the final fruit weight and random forest to select important variables in native population of melon (Cucumis melo L.)

机译:人工神经网络在预测最终果实重量中的应用,并通过随机森林选择甜瓜本地种群的重要变量(Cucumis melo L.)

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摘要

The estimation of the relation between the inconstant factors can be highly helpful for calculating the amount of variation of a particular character with respect to others. This paper aims to study the effects of different agronomic and phenologic factors on the total mass of melon fruit produced. The agronomic and phenologic factors which were considered during the study included, plant length, fruit weight, fruit length, fruit width, number of fruits per each plant, number of days to flowering, number of days to maturity, number of days to fruit formation, fruit cavity diameter and flesh diameter were the other characters under study. During the study, every plant was taken as a self-sustaining unit. The study explains a procedure to foretell the yield of melon by applying the Artificial Neural Networks or ANNs as a displaying instrument. In the study the accession Firoozi was calculated with high accuracy and efficacy (R-2 = 87%, EMP = 2.21 and MSD = 1.66). RF yield variable importance measures for each candidate predictor and in this study flesh diameter examined as effective variable in identifying the true predictor among the candidate predictors. (C) 2014 Elsevier B.V. All rights reserved.
机译:不确定因素之间的关系的估计对于计算特定字符相对于其他字符的变化量可能非常有帮助。本文旨在研究不同的农艺和物候因素对甜瓜果实总质量的影响。在研究过程中考虑的农艺学和物候因素包括:植物长度,果实重量,果实长度,果实宽度,每株植物的果实数,开花天数,成熟天数,果实形成天数,果腔直径和果肉直径是研究的其他特征。在研究过程中,每棵植物都被当作一个自我维持的单元。这项研究解释了通过应用人工神经网络或人工神经网络作为显示工具来预测瓜产量的程序。在这项研究中,费洛子的登录物具有很高的准确性和功效(R-2 = 87%,EMP = 2.21,MSD = 1.66)。每个候选预测变量的RF产量变量重要性衡量标准,在本研究中,将肉径作为确定候选预测变量中真正预测变量的有效变量。 (C)2014 Elsevier B.V.保留所有权利。

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