Abstract

BackgroundIn fast-growing forests such as Eucalyptus plantations, the correct determination of stand productivity is essential to aid decision making processes and ensure the efficiency of the wood supply chain. In the past decade, advances in remote sensing and computational methods have yielded new tools, techniques, and technologies that have led to improvements in forest management and forest productivity assessments. Our aim was to estimate and map the basal area and volume of Eucalyptus stands through the integration of forest inventory, remote sensing, parametric, and nonparametric methods of spatial prediction.MethodsThis study was conducted in 20 5-year-old clonal stands (362 ha) of Eucalyptus urophylla S.T.Blake x Eucalyptus camaldulensis Dehnh. The stands are located in the northwest region of Minas Gerais state, Brazil. Basal area and volume data were obtained from forest inventory operations carried out in the field. Spectral data were collected from a Landsat 5 TM satellite image, composed of spectral bands and vegetation indices. Multiple linear regression (MLR), random forest (RF), support vector machine (SVM), and artificial neural network (ANN) methods were used for basal area and volume estimation. Using ordinary kriging, we spatialised the residuals generated by the spatial prediction methods for the correction of trends in the estimates and more detailing of the spatial behaviour of basal area and volume.ResultsThe ND54 index was the spectral variable that had the best correlation values with basal area (r = − 0.91) and volume (r = − 0.52) and was also the variable that most contributed to basal area and volume estimates by the MLR and RF methods. The RF algorithm presented smaller basal area and volume errors when compared to other machine learning algorithms and MLR. The addition of residual kriging in spatial prediction methods did not necessarily result in relative improvements in the estimations of these methods.ConclusionsRandom forest was the best method of spatial prediction and mapping of basal area and volume in the study area. The combination of spatial prediction methods with residual kriging did not result in relative improvement of spatial prediction accuracy of basal area and volume in all methods assessed in this study, and there is not always a spatial dependency structure in the residuals of a spatial prediction method. The approaches used in this study provide a framework for integrating field and multispectral data, highlighting methods that greatly improve spatial prediction of basal area and volume estimation in Eucalyptus stands. This has potential to support fast growth plantation monitoring, offering options for a robust analysis of high-dimensional data.

Highlights

  • In fast-growing forests such as Eucalyptus plantations, the correct determination of stand productivity is essential to aid decision making processes and ensure the efficiency of the wood supply chain

  • The soil-adjusted vegetation index (SAVI), modified soil-adjusted vegetation index (MSAVI), global environment monitoring index (GEMI), and enhanced vegetation index (EVI) were highly correlated with basal area (r > 0.85)

  • Machine learning algorithms, the random forest (RF) and support vector machine (SVM) algorithms, were able to develop models that estimate basal area and volume in Eucalyptus stands using spectral data collected from Landsat 5 thematic mapper (TM) images

Read more

Summary

Introduction

In fast-growing forests such as Eucalyptus plantations, the correct determination of stand productivity is essential to aid decision making processes and ensure the efficiency of the wood supply chain. The Brazilian forestry sector represents an important share of the products, taxes, jobs, and income generation of the country and accounts for 3.5% of the national GDP (IBÁ 2015) This is in large part due to the successful establishment of fast-grown plantations of Eucalyptus species, which currently occupy around 5.6 million hectares (71.9% of the total planted forest area in Brazil) and represent 17% of the harvested wood in the world (IBÁ 2014, 2015). Spain (González-García et al 2015), Portugal (Lopes et al 2009), Uruguay (Barrios et al 2015), Chile (Watt et al 2014), South Africa (Dye et al 2004), Australia (Verma et al 2014), and the USA (Wear et al 2015) are some examples of productive Eucalyptus plantations in temperate regions that have cutting cycles ranging from 8 to 12 years. In fast-growing plantations, field-based inventory programmes may not be sufficient to capture productivity differences across the entire area, such as those arising from losses due to pest and disease attacks (Coops et al 2006), or from climatic anomalies (González-García et al 2015, Scolforo et al 2016)

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call