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Prediction of ‘Gigante’ cactus pear yield by morphological characters and artificial neural networks

机译:利用形态特征和人工神经网络预测“巨人”仙人掌梨的产量

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Estimating cactus pear yield is important for the planning of small and medium rural producers, especially in environments with adverse climatic conditions, such as the Brazilian semi-arid region. The objective of this study was to evaluate the potential of artificial neural networks (ANN) for predicting yield of ‘Gigante’ cactus pear, and determine the most important morphological characters for this prediction. The experiment was conducted in the Instituto Federal Baiano, Guanambi campus, Bahia, Brazil, in 2009 to 2011. The area used is located at 14?° 13’ 30” S and 42?° 46’ 53” W, and its altitude is 525 m. Six vegetative agronomic characters were evaluated in 500 plants in the third production cycle. The data were subjected to ANN analysis using the R software. Ten network architectures were trained 100 times to select the one with the lowest mean square error for the validation data. The networks with five neurons in the middle layer presented the best results. Neural networks with coefficient of determination (R2) of 0.87 were adjusted for sample validation, assuring the generalization potential of the model. The morphological characters with the highest relative contribution to yield estimate were total cladode area, plant height, cladode thickness and cladode length, but all characters were important for predicting the cactus pear yield. Therefore, predicting the production of cactus pear with high precision using ANN and morphological characters is possible.
机译:估算仙人掌梨的产量对于规划中小型农村生产者非常重要,尤其是在气候条件不利的环境中,例如巴西半干旱地区。这项研究的目的是评估人工神经网络(ANN)预测“巨人”仙人掌梨产量的潜力,并确定该预测最重要的形态特征。该实验于2009年至2011年在巴西巴伊亚州瓜纳比姆市的联邦Baiano研究所进行。所用区域位于14°°13'30“ S和42°°46'53” W,其高度为525米在第三个生产周期中,在500株植物中评估了六个营养农艺性状。使用R软件对数据进行ANN分析。对十种网络体系结构进行了100次训练,以选择验证数据均方误差最低的一种。在中间层有五个神经元的网络表现出最好的结果。调整确定系数(R2)为0.87的神经网络进行样本验证,以确保模型的泛化潜力。对产量估算的相对贡献最大的形态特征是总枝叶面积,株高,枝叶厚度和枝叶长度,但是所有这些特征对于预测仙人掌梨的产量都很重要。因此,利用人工神经网络和形态特征预测仙人掌梨的产量是可能的。

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