Non-linear growth models for tree species used for forest restoration in Brazilian Amazon Arc of Deforestation

Author:

Terra Marcela de Castro Nunes Santos1ORCID,Lima Marcos Gabriel Braz de1ORCID,Santos Juliano de Paulo dos1ORCID,Cordeiro Natielle Gomes1ORCID,Pereira Kelly Marianne Guimarães2ORCID,Dantas Daniel1ORCID,Calegario Natalino1ORCID,Botelho Soraya Alvarenga1ORCID

Affiliation:

1. Universidade Federal de Lavras, Departamento de Ciências Florestais

2. Universidade Federal de Lavras, Departamento de Ecologia e Conservação

Abstract

The large amount of degraded areas and productive potential of the legal reserves in Brazil make restoration an environmental demand and a commercial opportunity. We modelled the diameter growth as a function of age of eight tree species in restoration plantations in the Brazilian Amazon. From 14 years of annual forest inventory data, for each species, we tested variations of logistic function: simple logistic, logistic with covariant (plant area at the time of planting), logistic with random effect, logistic with random effect and covariant. Amongst the studied species, Schizolobium parahyba var. amazonicum, Tectona grandis and Simarouba amara showed the highest growth rates while Cordia alliodora, Cedrela odorata and three species of the genus Handroanthus showed slower growth. The gains from using the covariant in modeling were small for both fixed and mixed-effect models. Gains from the inclusion of the random effect were substantial. Mixed-effect models had the best performance in modeling the growth of the species. Our results provide basis for a critical view of the criteria and possibilities for degraded areas restoration and management practices in legal reserves of the Amazon. An economic analysis is required to ensure the viability of these areas’ sustainable exploitation.

Funder

Fundação de Amparo à Pesquisa do Estado de Mato Grosso

Coordenação de Aperfeiçoamento de Pessoal de Nível Superior

Publisher

Embrapa Florestas

Subject

General Medicine

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