首页> 外文期刊>American-Eurasian Journal of Agricultural and Environmental Sciences >Comparison of Multiple Linear Regressions (MLR) and Artificial Neural Network (ANN) in Predicting the Yield Using its Components in the Hulless Barley
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Comparison of Multiple Linear Regressions (MLR) and Artificial Neural Network (ANN) in Predicting the Yield Using its Components in the Hulless Barley

机译:多元线性回归(MLR)和人工神经网络(ANN)使用无粒大麦中的成分预测产量的比较

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In this study 40 genotypes in a randomized complete block design with three replications for two years were planted in the region of Ardabil. The yield related data and its components over the years of the analysis of variance were combined.Results showed that there was a significant difference between genotypes and genotype interaction in the environment. MLR and ANN methods were used to predict yield in barley. The fitted model in a yield predicting linear regression method was as follows: ì Reg = 1.75 + 0.883 X1 + 0.05017X2 +1.984X3 Also, yield prediction based on multi-layer neural network (ANN) using the Matlab Perceptron type software with one hidden layer including 15 neurons and using algorithm after error propagation learning method and hyperbolic tangent function was implemented, in both methods absolute values of relative error as a deviation index in order to estimate and using duad t test of mean deviation index of the two estimates was examined. Results showed that in the ANN technique the mean deviation index of estimation significantly was one-third (1 / 3) of its rate in the MLR, because there was a significant interaction between genotype and environment and its impact on estimation by MLR method.Therefore, when the genotype environment interaction is significant, in the yield prediction in instead of the regression is recommended of a neural network approach due to high yield and more velocity in the estimation to be used
机译:在这项研究中,在Ardabil地区种植了40个基因型,采用随机完整区组设计,三年内重复进行了两年。结合多年分析中与产量相关的数据及其组成。结果表明,环境中基因型和基因型相互作用之间存在显着差异。 MLR和ANN方法用于预测大麦的产量。产量预测线性回归方法的拟合模型如下:ìReg = 1.75 + 0.883 X1 + 0.05017X2 + 1.984X3另外,使用Matlab Perceptron型软件基于多层神经网络(ANN)进行产量预测,其中一个隐藏层包含15个神经元,并在误差传播学习方法和双曲正切函数实施后使用算法,在两种方法中均以相对误差的绝对值作为偏差指数,以进行估计并使用两次估计的平均偏差指数的duad t检验。结果表明,在ANN技术中,由于基因型与环境之间存在显着的相互作用及其对MLR方法估计的影响,因此在MLR中估计的平均偏差指数显着约为其发生率的三分之一(1/3)。 ,当基因型环境相互作用显着时,建议使用神经网络方法进行产量预测而不是回归,因为要使用较高的产量和更高的估算速度

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