Quantifying Tropical Forest Disturbances Using Canopy Structural Traits Derived from Terrestrial Laser Scanning

31 Pages Posted: 24 Jun 2022

See all articles by Erone Ghizoni Santos

Erone Ghizoni Santos

University of Helsinki

Matheus Henrique Nunes

University of Helsinki

Toby Jackson

University of Cambridge

Eduardo Eiji Maeda

University of Helsinki

Abstract

Forest disturbances can reduce the potential of ecosystems to provide resources and services. Despite the urgent need to understand the effects of logging on tropical ecosystems, the quantification of disturbances arising from selective logging remains a challenge. Here, we used canopy three-dimensional information retrieved from Terrestrial Laser Scanner (TLS) measurements to investigate the impacts of logging on key structural traits relevant to forest functioning. We addressed the following questions: 1) Which canopy structural traits were mostly affected by logging? 2) Can remotely sensed canopy structural traits be used to quantify forest disturbances? Fourteen canopy structural traits were applied as input to machine learning models, which were trained to quantify the intensity of logging disturbance in 24 plots of 25 x 25 m. The plots were located in Malaysian Borneo, over a gradient of logging intensity, ranging from forest not recently disturbed by logging, to forest at the early stage of recovery following logging. Our results showed that plant area index in the understory (i.e. between 0 and 5 m above ground), relative height at 50%, and metrics describing plant allocation in the middle-higher canopy layer, were the strongest predictors of disturbance. The approach presented in this study allowed a spatially explicitly characterization of disturbances, providing a novel approach for quantifying and monitoring the integrity of tropical forests. Our results indicate that canopy structural traits can provide a robust indication of disturbances, with strong potential to be applied at regional or global scales. The data used in this study are openly available and we encourage other researchers to use them as a benchmark data set to test larger scale approaches based on satellite and airborne platforms.

Keywords: LiDAR, selective logging, remote sensing, random forest, Malaysia

Suggested Citation

Santos, Erone Ghizoni and Nunes, Matheus Henrique and Jackson, Toby and Maeda, Eduardo Eiji, Quantifying Tropical Forest Disturbances Using Canopy Structural Traits Derived from Terrestrial Laser Scanning. Available at SSRN: https://ssrn.com/abstract=4145312 or http://dx.doi.org/10.2139/ssrn.4145312

Erone Ghizoni Santos (Contact Author)

University of Helsinki ( email )

University of Helsinki
Helsinki, FIN-00014
Finland

Matheus Henrique Nunes

University of Helsinki ( email )

University of Helsinki
Helsinki, FIN-00014
Finland

Toby Jackson

University of Cambridge ( email )

Trinity Ln
Cambridge, CB2 1TN
United Kingdom

Eduardo Eiji Maeda

University of Helsinki ( email )

University of Helsinki
Helsinki, FIN-00014
Finland

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