Leaf area estimation in Coffea canephora genotypes by neural networks and multiple regression
Data
2024-07-19
Título da Revista
ISSN da Revista
Título de Volume
Editor
Departamento de Engenharia Agrícola - UFCG
Resumo
Leaf area data from coffee plants are important for studies and analyses of grain yield, physiology, adaptation to environmental conditions, and cultural management. The objective of this study was to predict leaf area of coffee plants using artificial neural networks and compare the efficiency of this methodology with multiple regression models. Forty-three genotypes of similar reproduction and age were evaluated, testing 14 types of multiple regression equations from combinations of leaf length and width. The backpropagation algorithm was used to develop multilayer perceptron neural networks; several combinations were tested between two activation functions of the intermediate layer (hidden layer) and the number of neurons in this layer. The best fitting results in the artificial neural network modeling were found with the sigmoid activation function and three neurons in the hidden layer (R² = 0.990 and RMSE = 2.855 in the training phase). Considering the errors (RMSE, MAE, and MAPE) and the coefficient of determination as criteria for best fit, the artificial neural network models better estimated the leaf area in the training and validation phases. Therefore, the artificial neural network methodology can be used as alternative for estimating leaf area of coffee plants.
Descrição
Palavras-chave
Statistical models, Artificial intelligence, Backpropagation, Leaf length and width
Citação
VITÓRIA, E. L. et al. Leaf area estimation in Coffea canephora genotypes by neural networks and multiple regression. Revista Brasileira de Engenharia Agrícola e Ambiental, Campina Grande, v. 28, n. 9, p. 01-08, sep. 2024.