SAMPLING PROCESSES FOR Carapa guianensis AUBL. IN THE AMAZON

Cerne

Endereço:
Departamento de Ciências Florestais, Universidade Federal de Lavras, Caixa Postal 3037
Lavras / MG
0
Site: http://www.dcf.ufla.br/cerne
Telefone: (35) 3829-1706
ISSN: 1047760
Editor Chefe: Gilvano Ebling Brondani
Início Publicação: 31/05/1994
Periodicidade: Trimestral

SAMPLING PROCESSES FOR Carapa guianensis AUBL. IN THE AMAZON

Ano: 2018 | Volume: 24 | Número: 3
Autores: Diego dos Santos Vieira, Marcio Leles Romarco de Oliveira, João Ricardo Vasconcellos Gama, Bruno Lafetá Oliveira, Anna Karyne Costa Rego, Talita Godinho Bezerra
Autor Correspondente: Diego dos Santos Vieira | [email protected]

Palavras-chave: Adaptive cluster sampling, Simple random sampling, Systematic sampling

Resumos Cadastrados

Resumo Inglês:

The objective of this study was to analyze the adaptive cluster sampling (ACS), simple random sampling (SRS) and systematic sampling (SS) processes to obtain the number of ha-1 trees of Carapa guianensis Aubl. in the Amazon. The data were obtained through 100% inventory and sampling simulations, considering a DBH ≥ 25 cm, a sampling intensity of 4%, a maximum error of 10% and plots of 0.09, 0.16 and 0.25 ha. The last two sizes were only used to analyze their effect on the ACS estimators. The processes were evaluated for accuracy, precision (E%) and confi dence interval (CI), while the mean ha-1 of the processes were compared with that of the 100% inventory by the Z test. The ACS process showed no signifi cant difference between its average ha-1 trees and the 100% inventory, and it was also the most accurate and the only one whose CI was true. However, it presented a fi nal sample intensity 3.6 times greater than the simple and systematic random samplings, in addition to E% above 10%, which makes it unacceptable, legally, and economically unfeasible. The other processes had densities signifi cantly higher than the 100% inventory, with sample intensities lower than ACS and E% lower than 10%, making them legally viable. The use of larger plots in the ACS implies larger clusters and a greater tendency to underestimate the number of trees, resulting in larger sample errors and less accuracy