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Mapping wood volume in seasonally dry vegetation of Caatinga in Bahia State, Brazil

Authors :
Silva, Thaine Teixeira
de Lima, Robson Borges
de Souza, Rafael Lucas Figueiredo
Moonlight, Peter W.
Cardoso, Domingos
Santos, Héveli Kalini Viana
de Oliveira, Cinthia Pereira
Veenendaal, Elmar
de Queiroz, Luciano Paganucci
Rodrigues, Priscyla Maria Silva
Dos Santos, Rubens Manoel
Sarkinen, Tiina
de Paula, Alessandro
Barreto-Garcia, Patrícia Anjos Bittencourt
Pennington, Toby
Phillips, Oliver Lawrence
Silva, Thaine Teixeira
de Lima, Robson Borges
de Souza, Rafael Lucas Figueiredo
Moonlight, Peter W.
Cardoso, Domingos
Santos, Héveli Kalini Viana
de Oliveira, Cinthia Pereira
Veenendaal, Elmar
de Queiroz, Luciano Paganucci
Rodrigues, Priscyla Maria Silva
Dos Santos, Rubens Manoel
Sarkinen, Tiina
de Paula, Alessandro
Barreto-Garcia, Patrícia Anjos Bittencourt
Pennington, Toby
Phillips, Oliver Lawrence
Source :
ISSN: 0103-9016
Publication Year :
2023

Abstract

The Caatinga biome in Brazil comprises the largest and most continuous expanse of the seasonally dry tropical forest (SDTF) worldwide; nevertheless, it is among the most threatened and least studied, despite its ecological and biogeographical importance. The spatial distribution of volumetric wood stocks in the Caatinga and the relationship with environmental factors remain unknown. Therefore, this study intends to quantify and analyze the spatial distribution of wood volume as a function of environmental variables in Caatinga vegetation in Bahia State, Brazil. Volumetric estimates were obtained at the plot and fragment level. The multiple linear regression techniques were adopted, using environmental variables in the area as predictors. Spatial modeling was performed using the geostatistical kriging approach with the model residuals. The model developed presented a reasonable fit for the volume m3 ha with r2 of 0.54 and Root Mean Square Error (RMSE) of 10.9 m3 ha–1. The kriging of ordinary residuals suggested low error estimates in unsampled locations and balance in the under and overestimates of the model. The regression kriging approach provided greater detailing of the global wood volume stock map, yielding volume estimates that ranged from 0.01 to 109 m3 ha–1. Elevation, mean annual temperature, and precipitation of the driest month are strong environmental predictors for volume estimation. This information is necessary to development action plans for sustainable management and use of the Caatinga SDTF in Bahia State, Brazil.

Details

Database :
OAIster
Journal :
ISSN: 0103-9016
Notes :
application/pdf, Scientia agricola 80 (2023), ISSN: 0103-9016, ISSN: 0103-9016, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1394278240
Document Type :
Electronic Resource