Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil

Detalhes bibliográficos
Ano de defesa: 2019
Autor(a) principal: OLIVEIRA, Cinthia Pereira de lattes
Orientador(a): FERREIRA, Rinaldo Luiz Caraciolo
Banca de defesa: Não Informado pela instituição
Tipo de documento: Tese
Tipo de acesso: Acesso aberto
Idioma: por
Instituição de defesa: Universidade Federal Rural de Pernambuco
Programa de Pós-Graduação: Programa de Pós-Graduação em Ciências Florestais
Departamento: Departamento de Ciência Florestal
País: Brasil
Palavras-chave em Português:
Área do conhecimento CNPq:
Link de acesso: http://www.tede2.ufrpe.br:8080/tede2/handle/tede2/8215
Resumo: With the growing environmental concern about climate change in recent years, there has been more demand for efficient alternatives using indirect methods for studies of biomass quantification and forest carbon stock. This work aimed to obtain estimates of biomass and carbon by means of data from conventional forest inventory and LiDAR technology in a dry forest. In the first segment, data were collected from 507 trees distributed among 14 species and 12 genera in an area under forest management with predominantly Caatinga vegetation and characterized by shrub vegetation, located in the municipality of Floresta, in the state of Pernambuco. The green weight above the soil (stem and branches), total and commercial heights and base diameter (0.30 cm of the soil level) were measured for each individual, as well as values of wood density, aiming to adjust and validate three allometric simple regression models (the base diameter as an explanatory variable) and five multiple regression models (explanatory variables: Db, total height and wood density). Two selected local equations were compared with generic pantropical equations and applied to the sample trees of this study. Biomass predictions were performed considering the inventory data of live trees in two areas with different usage histories; one with a history of major disturbance (correntão) and one with less disturbance (transposition). Among the biomass models tested, the Schumacher-Hall logarithms and the Chave-Model I presented better performance. There was a significant improvement in the pantropical models when height and density variables were included; the largest prediction errors were generated by equations of simple local and pantropical inputs. In the second segment, we used conventional forest inventory data from two areas together with LiDAR overfly data, generating local biomass estimates from a developed local equation and the carbon contents obtained from local species. With the data from LiDAR technology, the metrics were extracted from its cloud of points and were used as the independent variable. Next, three types of models were analyzed for data analysis for constructing the allometric models of biomass and carbon per hectare: Multiple Linear Regression with Major Components - PCA, Multiple Linear Regression and Multiple Linear Regression with Stepwise. The generated equations were analyzed by comparing statistical criteria. After selection of the best biomass and carbon equation, the carbon estimates were calculated by area evaluated at the plot level. Both the TAGB and TAGC models of best fit was the Multiple Linear Regression with Stepwise, therefore concluding that the LiDAR data can be used for estimating the biomass and total carbon in a dry tropical forest, as proven by an adjustment considered in the employed models with good correlation between the LiDAR metrics.
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spelling FERREIRA, Rinaldo Luiz CaracioloSILVA, José Antônio Aleixo daSILVA, Emanuel Araújohttp://lattes.cnpq.br/8148643000907549OLIVEIRA, Cinthia Pereira de2019-09-24T12:30:07Z2019-02-26OLIVEIRA, Cinthia Pereira de. Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil. 2019. 106 f. Tese (Programa de Pós-Graduação em Ciências Florestais) -Universidade Federal Rural de Pernambuco, Recife.http://www.tede2.ufrpe.br:8080/tede2/handle/tede2/8215With the growing environmental concern about climate change in recent years, there has been more demand for efficient alternatives using indirect methods for studies of biomass quantification and forest carbon stock. This work aimed to obtain estimates of biomass and carbon by means of data from conventional forest inventory and LiDAR technology in a dry forest. In the first segment, data were collected from 507 trees distributed among 14 species and 12 genera in an area under forest management with predominantly Caatinga vegetation and characterized by shrub vegetation, located in the municipality of Floresta, in the state of Pernambuco. The green weight above the soil (stem and branches), total and commercial heights and base diameter (0.30 cm of the soil level) were measured for each individual, as well as values of wood density, aiming to adjust and validate three allometric simple regression models (the base diameter as an explanatory variable) and five multiple regression models (explanatory variables: Db, total height and wood density). Two selected local equations were compared with generic pantropical equations and applied to the sample trees of this study. Biomass predictions were performed considering the inventory data of live trees in two areas with different usage histories; one with a history of major disturbance (correntão) and one with less disturbance (transposition). Among the biomass models tested, the Schumacher-Hall logarithms and the Chave-Model I presented better performance. There was a significant improvement in the pantropical models when height and density variables were included; the largest prediction errors were generated by equations of simple local and pantropical inputs. In the second segment, we used conventional forest inventory data from two areas together with LiDAR overfly data, generating local biomass estimates from a developed local equation and the carbon contents obtained from local species. With the data from LiDAR technology, the metrics were extracted from its cloud of points and were used as the independent variable. Next, three types of models were analyzed for data analysis for constructing the allometric models of biomass and carbon per hectare: Multiple Linear Regression with Major Components - PCA, Multiple Linear Regression and Multiple Linear Regression with Stepwise. The generated equations were analyzed by comparing statistical criteria. After selection of the best biomass and carbon equation, the carbon estimates were calculated by area evaluated at the plot level. Both the TAGB and TAGC models of best fit was the Multiple Linear Regression with Stepwise, therefore concluding that the LiDAR data can be used for estimating the biomass and total carbon in a dry tropical forest, as proven by an adjustment considered in the employed models with good correlation between the LiDAR metrics.Nos últimos anos, com a crescente preocupação ambiental quanto às mudanças climáticas, existe a procura por alternativas eficientes em métodos indiretos para estudos da quantificação da biomassa e do estoque de carbono florestal. Este trabalho teve como objetivo obter estimativas de biomassa e carbono por meio de dados advindos de inventário florestal convencional e tecnologia LiDAR em uma floresta seca. No primeiro capítulo, os dados foram coletados a partir de 507 árvores distribuídas entre 14 espécies e 12 gêneros em uma área submetida ao manejo florestal, localizada no município de Floresta, no estado de Pernambuco, com vegetação predominantemente de Caatinga, caracterizada por uma vegetação arbustivo–arbórea. De cada indivíduo, foram mensurados o peso verde acima do solo (fuste e galhos), alturas total e comercial e diâmetro da base (0,30 cm do nível do solo), assim como valores de densidade da madeira, visando o ajuste e a validação de três modelos alométricos de regressão simples (o diâmetro da base como variável explicativa) e cinco de regressão múltipla (variáveis explicativas: o Db, altura total e densidade da madeira). Duas equações locais selecionadas foram comparadas com equações genéricas pantropicais e aplicadas às árvores amostra deste estudo. As predições de biomassa foram realizadas considerando os dados do inventário de árvores vivas em duas áreas com diferentes históricos de uso, uma com histórico de perturbação maior (correntão) e outra com menos perturbação (transposição). Entre os modelos de biomassa testados, logaritmos de Schumacher-Hall e Chave – Modelo I apresentaram melhor desempenho. Nos modelos pantropicais, houve melhora significativa quando as variáveis altura e densidade foram incluídas; os maiores erros de previsão foram gerados pelas equações de simples entradas locais e pantropicais. No segundo capítulo, utilizamos dados de inventário florestal convencional de duas áreas juntamente com dados do sobrevoo LiDAR, sendo geradas estimativas locais de biomassa a partir de uma equação local desenvolvida e os teores de carbono obtidos de espécies locais. Com dados da tecnologia LiDAR, extraíram-se as métricas da sua nuvem de pontos e foram utilizadas como variável independe. Para a construção dos modelos alométricos de biomassa e carbono por hectare, abordaram-se três tipos de modelos para a análise de dados: Regressão linear múltipla com Componentes Principais – PCA, Regressão linear múltipla e Regressão linear múltipla com Stepwise, as equações geradas foram analisadas por meio de comparações de critérios estatísticos. Após a seleção da melhor equação para biomassa e para carbono, geraram-se as estimativas de carbono por área avaliando a nível de parcela. O modelo tanto de TAGB quanto o de TAGC de melhor ajuste foi o de Regressão linear múltipla com Stepwise, concluindo, então, que os dados LiDAR podem ser usados para a estimativa de biomassa e carbono total em floresta tropical seca, comprovado por um ajuste considerado nos modelos empregados, havendo uma boa correlação entre as métricas do LiDAR.Submitted by Mario BC (mario@bc.ufrpe.br) on 2019-09-24T12:30:07Z No. of bitstreams: 1 Cinthia Pereira de Oliveira.pdf: 2638342 bytes, checksum: 000a1454788e806f1573f3345d8972a8 (MD5)Made available in DSpace on 2019-09-24T12:30:07Z (GMT). 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dc.title.por.fl_str_mv Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil
dc.title.alternative.eng.fl_str_mv Biomass and carbon by means of conventional inventory and LiDAR in dry forest in Northeast Brazil
title Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil
spellingShingle Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil
OLIVEIRA, Cinthia Pereira de
Biomassa
Carbono
Floresta seca
Inventário florestal
Sensoriamento remoto
CIENCIAS AGRARIAS::RECURSOS FLORESTAIS E ENGENHARIA FLORESTAL
title_short Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil
title_full Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil
title_fullStr Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil
title_full_unstemmed Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil
title_sort Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil
author OLIVEIRA, Cinthia Pereira de
author_facet OLIVEIRA, Cinthia Pereira de
author_role author
dc.contributor.advisor1.fl_str_mv FERREIRA, Rinaldo Luiz Caraciolo
dc.contributor.advisor-co1.fl_str_mv SILVA, José Antônio Aleixo da
dc.contributor.advisor-co2.fl_str_mv SILVA, Emanuel Araújo
dc.contributor.authorLattes.fl_str_mv http://lattes.cnpq.br/8148643000907549
dc.contributor.author.fl_str_mv OLIVEIRA, Cinthia Pereira de
contributor_str_mv FERREIRA, Rinaldo Luiz Caraciolo
SILVA, José Antônio Aleixo da
SILVA, Emanuel Araújo
dc.subject.por.fl_str_mv Biomassa
Carbono
Floresta seca
Inventário florestal
Sensoriamento remoto
topic Biomassa
Carbono
Floresta seca
Inventário florestal
Sensoriamento remoto
CIENCIAS AGRARIAS::RECURSOS FLORESTAIS E ENGENHARIA FLORESTAL
dc.subject.cnpq.fl_str_mv CIENCIAS AGRARIAS::RECURSOS FLORESTAIS E ENGENHARIA FLORESTAL
description With the growing environmental concern about climate change in recent years, there has been more demand for efficient alternatives using indirect methods for studies of biomass quantification and forest carbon stock. This work aimed to obtain estimates of biomass and carbon by means of data from conventional forest inventory and LiDAR technology in a dry forest. In the first segment, data were collected from 507 trees distributed among 14 species and 12 genera in an area under forest management with predominantly Caatinga vegetation and characterized by shrub vegetation, located in the municipality of Floresta, in the state of Pernambuco. The green weight above the soil (stem and branches), total and commercial heights and base diameter (0.30 cm of the soil level) were measured for each individual, as well as values of wood density, aiming to adjust and validate three allometric simple regression models (the base diameter as an explanatory variable) and five multiple regression models (explanatory variables: Db, total height and wood density). Two selected local equations were compared with generic pantropical equations and applied to the sample trees of this study. Biomass predictions were performed considering the inventory data of live trees in two areas with different usage histories; one with a history of major disturbance (correntão) and one with less disturbance (transposition). Among the biomass models tested, the Schumacher-Hall logarithms and the Chave-Model I presented better performance. There was a significant improvement in the pantropical models when height and density variables were included; the largest prediction errors were generated by equations of simple local and pantropical inputs. In the second segment, we used conventional forest inventory data from two areas together with LiDAR overfly data, generating local biomass estimates from a developed local equation and the carbon contents obtained from local species. With the data from LiDAR technology, the metrics were extracted from its cloud of points and were used as the independent variable. Next, three types of models were analyzed for data analysis for constructing the allometric models of biomass and carbon per hectare: Multiple Linear Regression with Major Components - PCA, Multiple Linear Regression and Multiple Linear Regression with Stepwise. The generated equations were analyzed by comparing statistical criteria. After selection of the best biomass and carbon equation, the carbon estimates were calculated by area evaluated at the plot level. Both the TAGB and TAGC models of best fit was the Multiple Linear Regression with Stepwise, therefore concluding that the LiDAR data can be used for estimating the biomass and total carbon in a dry tropical forest, as proven by an adjustment considered in the employed models with good correlation between the LiDAR metrics.
publishDate 2019
dc.date.accessioned.fl_str_mv 2019-09-24T12:30:07Z
dc.date.issued.fl_str_mv 2019-02-26
dc.type.status.fl_str_mv info:eu-repo/semantics/publishedVersion
dc.type.driver.fl_str_mv info:eu-repo/semantics/doctoralThesis
format doctoralThesis
status_str publishedVersion
dc.identifier.citation.fl_str_mv OLIVEIRA, Cinthia Pereira de. Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil. 2019. 106 f. Tese (Programa de Pós-Graduação em Ciências Florestais) -Universidade Federal Rural de Pernambuco, Recife.
dc.identifier.uri.fl_str_mv http://www.tede2.ufrpe.br:8080/tede2/handle/tede2/8215
identifier_str_mv OLIVEIRA, Cinthia Pereira de. Biomassa e carbono por meio de inventário convencional e LiDAR em floresta seca no Nordeste do Brasil. 2019. 106 f. Tese (Programa de Pós-Graduação em Ciências Florestais) -Universidade Federal Rural de Pernambuco, Recife.
url http://www.tede2.ufrpe.br:8080/tede2/handle/tede2/8215
dc.language.iso.fl_str_mv por
language por
dc.relation.program.fl_str_mv 6708762392030887359
dc.relation.confidence.fl_str_mv 600
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dc.rights.driver.fl_str_mv info:eu-repo/semantics/openAccess
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dc.publisher.none.fl_str_mv Universidade Federal Rural de Pernambuco
dc.publisher.program.fl_str_mv Programa de Pós-Graduação em Ciências Florestais
dc.publisher.initials.fl_str_mv UFRPE
dc.publisher.country.fl_str_mv Brasil
dc.publisher.department.fl_str_mv Departamento de Ciência Florestal
publisher.none.fl_str_mv Universidade Federal Rural de Pernambuco
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