基于人工神经网络的东北松林拟合关系建模。和高尔夫球。

O. G. M. Guera, José Antônio Aleixo da Silva, R. Ferreira, H. B. Medel, D. Lazo
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引用次数: 1

摘要

本研究比较了回归模型和人工神经网络(ANN)在拟合关系建模中的性能,并分析了ANN类型和样本量对ANN性能的影响。该数据库由65个500 m²的圆形样地组成,其中测量了古巴Macurije森林公司加勒比松(Pinus caribaea var. caribaea)人工林2538棵树的胸径- DBH (cm)和总高度- Ht (m)。研究分三个阶段进行:i)传统的拟合模型与s型增长模型的拟合;ii)对人工神经网络进行训练,并将所选人工神经网络与所选回归模型进行比较;iii)采用5 × 2全随机试验设计,以样本量(N)和人工神经网络类型(R)为因子,分析样本量和人工神经网络类型对树高估计精度的影响。结果表明,估算树高的最佳方程为Gompertz方程。人工神经网络MLP 1-4-1和MLP 8- 1- 1优于所选方程(Gompertz)。多层感知器人工神经网络产生了更准确的估计,其性能受样本量的影响较小。
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ARTIFICIAL NEURAL NETWORKS FOR MODELING HYPSOMETRIC RELATIONSHIPS OF Pinus caribaea Morelet var. caribaea Barr. & Golf.
The present study was carried out to compare the performances of regression models and Artificial Neural  Networks (ANNs) in hypsometric relationships modeling and to analyze the influence of ANN type  and sample size on ANN performance. The database was consisted by 65 circular plots of 500 m² in which  Diameter at Breast Height - DBH (cm) and Total Height - Ht (m) of 2538 trees were measured in plantations of Pinus caribaea var. caribaea in Macurije forest company, Cuba. The study was carried out in three  stages: i) Fit of traditional hypsometric models and sigmoidal growth models; ii) ANNs training and comparison of the selected ANN with the regression model selected; iii) Analysis of sample size and ANN type influences on the estimates precision by means of a completely random experimental design with 5x2 factorial arrangement, with the factors sample size (N) and ANN type (R). The results indicated that the best equation to estimate trees heights was that of Gompertz. The ANNs MLP 1-4-1 and MLP 8-4-1 were superior to the selected equation (Gompertz). Multi-Layer Perceptron ANNs generated more accurate estimates and their performances were less influenced by the sample size.
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来源期刊
Revista Brasileira de Biometria
Revista Brasileira de Biometria Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
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