桉树高度关系的人工神经网络配置。

IF 0.5 4区 农林科学 Q4 FORESTRY
Jonas Elias Castro da Rocha, Marlon Roque Nogueira Junior, Ivaldo da Silva Tavares Júnior, Jianne Rafaela Mazzini de Souza, Lucas Sérgio de Sousa Lopes, Márcio Lopes da Silva
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引用次数: 2

摘要

本研究探讨了人工神经网络(ANNs)的激活算法和功能,以预测桉树的总高度,目的是为该变量推荐最佳的RNA配置。数据来自2888棵树。训练后的人工神经网络将胸径、克隆、年龄、年龄类别和直径类别作为输入变量。总高度是输出变量。在隐藏层和输出层结合了5种算法和6种激活函数,总共训练了18125个人工神经网络。采用线性相关(ŷy r)、平均误差的平方根(RMSE%)、偏差和ŷy r和RMSE%的直方图对人工神经网络进行评估。经过训练的ann得到的RMSE%范围为0.07% ~ 396.3%,ŷy r为-0.7130 ~ 0.9998。神经网络采用Neuro 4.0.6软件进行。除使用曼哈顿更新规则算法的人工神经网络外,验证中选择的最佳人工神经网络的configura o de redes neurais artificiais para rela o hipsomsamtrica de árvores de Eucalyptus spp.林业科学,49(132),e3706, 2021 2/11相关性大于0.97,RMSE%和偏差接近于零。反向传播算法、弹性传播算法、缩放共轭梯度算法和快速传播算法在高度建模中取得了满意的结果。逻辑激活函数和日志激活函数分别对隐藏层和输出层有效。在验证中,采用弹性传播算法的12-10-1网络结构精度最高,RMSE为0.067 m。另一方面,采用曼哈顿更新规则算法的12-14-1结构精度最低,RMSE为3.13 m。采用具有弹性传播算法和逻辑激活函数的12-10-1网络结构,可用于桉树总高度预测的训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Configuração de redes neurais artificiais para relação hipsométrica de árvores de Eucalyptus spp.
This study explores algorithms and functions of activation of artificial neural networks (ANNs) to predict the total height of Eucalyptus spp. The objective was to recommend the best RNA configurations for this variable. The data came from 2,888 trees. The trained ANNs presented DBH, clone, age, age class and diametric class as input variables. The total height was the output variable. Five algorithms and six activation functions were combined in the hidden and output layers, totaling 18,125 trained ANNs. ANNs were evaluated using linear correlation ( ŷy r ), square root of the average error (RMSE%), bias and histograms of ŷy r and RMSE%. The trained ANNs obtained RMSE% ranging from 0.07% to 396.3% and ŷy r of -0.7130 to 0.9998. The ANNs was performed using the Neuro 4.0.6 software. With the exception of ANN with the Manhattan Update Rule algorithm, the best ANN selected in the validation showed a Configuração de redes neurais artificiais para relação hipsométrica de árvores de Eucalyptus spp. Scientia Forestalis, 49(132), e3706, 2021 2/11 correlation above 0.97, and RMSE% and bias close to zero. The Backpropagation, Resilient Propagation, Scaled Conjugate Gradient and Quick Propagation algorithms presented satisfactory results in height modeling. The logistic and log activation functions are efficient for the hidden and output layers, respectively. In validation, the 12-10-1 network architecture with a Resilient Propagation algorithm showed the highest precision, with RMSE of 0.067 m. On the other hand, the architecture 12-14-1 with the Manhattan Update Rule algorithm resulted in the lowest precision, with RMSE of 3.13 m. The 12-10-1 network architecture, with Resilient Propagation algorithm and logistical activation function, can be used in the training for the prediction of the total height of Eucalyptus spp.
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来源期刊
Scientia Forestalis
Scientia Forestalis Agricultural and Biological Sciences-Forestry
CiteScore
1.00
自引率
0.00%
发文量
39
期刊介绍: Scientia Forestalis is a scientific publication of the IPEF – Institute of Forest Research and Studies, founded in 1968, as a nonprofit institution, in agreement with the LCF – Department of Forest Sciences of the ESALQ – Luiz de Queiroz College of Agriculture of the USP – São Paulo University. Scientia Forestalis, affiliated to the ABEC – Brazilian Association of Scientific Publishers, publishes four issues per year of original papers related to the several fields of the Forest Sciences. The Editorial Board is composed by the Editor, the Scientific Editors (evaluating the manuscript), and the Associated Editors (helping on the decision of acceptation or not of the manuscript, analyzed by the Peer-Reviewers.
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