Airborne LiDAR Detects Selectively Logged Tropical Forest Even in an Advanced Stage of Recovery

Identifying historical forest disturbances is difficult, especially in selectively logged areas. LiDAR is able to measure fine-scale variations in forest structure over multiple kilometers. We use LiDAR data from ca. 16 km2 of forest in Sierra Leone, West Africa, to discriminate areas of old-growth...

Full description

Bibliographic Details
Main Authors: Rafi Kent, Jeremy A. Lindsell, Gaia Vaglio Laurin, Riccardo Valentini, David A. Coomes
Format: Article
Language:English
Published: MDPI AG 2015-06-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/7/7/8348
id doaj-7f2fd5a4b0254990a0c5a503f384a872
record_format Article
spelling doaj-7f2fd5a4b0254990a0c5a503f384a8722020-11-24T23:03:33ZengMDPI AGRemote Sensing2072-42922015-06-01778348836710.3390/rs70708348rs70708348Airborne LiDAR Detects Selectively Logged Tropical Forest Even in an Advanced Stage of RecoveryRafi Kent0Jeremy A. Lindsell1Gaia Vaglio Laurin2Riccardo Valentini3David A. Coomes4Forest Ecology and Conservation Group, Department of Plant Sciences, University of Cambridge, Downing St., Cambridge CB2 3EA, UKRSPB Centre for Conservation Science, The Lodge, Sandy, Bedfordshire SG19 2DL, UKEuro-Mediterranean Center for Climate Change (CMCC), IAFENT Division, via Pacinotti 5, Viterbo 01100, ItalyEuro-Mediterranean Center for Climate Change (CMCC), IAFENT Division, via Pacinotti 5, Viterbo 01100, ItalyForest Ecology and Conservation Group, Department of Plant Sciences, University of Cambridge, Downing St., Cambridge CB2 3EA, UKIdentifying historical forest disturbances is difficult, especially in selectively logged areas. LiDAR is able to measure fine-scale variations in forest structure over multiple kilometers. We use LiDAR data from ca. 16 km2 of forest in Sierra Leone, West Africa, to discriminate areas of old-growth from areas recovering from selective logging for 23 years. We examined canopy height variation and gap size distributions. We found that though recovering blocks of forest differed little in height from old-growth forest (up to 3 m), they had a greater area of canopy gaps (average 10.2% gap fraction in logged areas, compared to 5.6% in unlogged area); and greater numbers of gaps penetrating to the forest floor (162 gaps at 2 m height in logged blocks, and 101 in an unlogged block). Comparison of LiDAR measurements with field data demonstrated that LiDAR delivered accurate results. We found that gap size distributions deviated from power-laws reported previously, with substantially fewer large gaps than predicted by power-law functions. Our analyses demonstrate that LiDAR is a useful tool for distinguishing structural differences between old-growth and old-secondary forests. That makes LiDAR a powerful tool for REDD+ (Reduction of Emissions from Deforestation and Forest Degradation) programs implementation and conservation planning.http://www.mdpi.com/2072-4292/7/7/8348gap size frequency distributionold growth forestre-growth forestselective loggingmoist tropical forestGola Rainforest National ParkSierra LeoneMCMCpower-lawLiDAR
collection DOAJ
language English
format Article
sources DOAJ
author Rafi Kent
Jeremy A. Lindsell
Gaia Vaglio Laurin
Riccardo Valentini
David A. Coomes
spellingShingle Rafi Kent
Jeremy A. Lindsell
Gaia Vaglio Laurin
Riccardo Valentini
David A. Coomes
Airborne LiDAR Detects Selectively Logged Tropical Forest Even in an Advanced Stage of Recovery
Remote Sensing
gap size frequency distribution
old growth forest
re-growth forest
selective logging
moist tropical forest
Gola Rainforest National Park
Sierra Leone
MCMC
power-law
LiDAR
author_facet Rafi Kent
Jeremy A. Lindsell
Gaia Vaglio Laurin
Riccardo Valentini
David A. Coomes
author_sort Rafi Kent
title Airborne LiDAR Detects Selectively Logged Tropical Forest Even in an Advanced Stage of Recovery
title_short Airborne LiDAR Detects Selectively Logged Tropical Forest Even in an Advanced Stage of Recovery
title_full Airborne LiDAR Detects Selectively Logged Tropical Forest Even in an Advanced Stage of Recovery
title_fullStr Airborne LiDAR Detects Selectively Logged Tropical Forest Even in an Advanced Stage of Recovery
title_full_unstemmed Airborne LiDAR Detects Selectively Logged Tropical Forest Even in an Advanced Stage of Recovery
title_sort airborne lidar detects selectively logged tropical forest even in an advanced stage of recovery
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2015-06-01
description Identifying historical forest disturbances is difficult, especially in selectively logged areas. LiDAR is able to measure fine-scale variations in forest structure over multiple kilometers. We use LiDAR data from ca. 16 km2 of forest in Sierra Leone, West Africa, to discriminate areas of old-growth from areas recovering from selective logging for 23 years. We examined canopy height variation and gap size distributions. We found that though recovering blocks of forest differed little in height from old-growth forest (up to 3 m), they had a greater area of canopy gaps (average 10.2% gap fraction in logged areas, compared to 5.6% in unlogged area); and greater numbers of gaps penetrating to the forest floor (162 gaps at 2 m height in logged blocks, and 101 in an unlogged block). Comparison of LiDAR measurements with field data demonstrated that LiDAR delivered accurate results. We found that gap size distributions deviated from power-laws reported previously, with substantially fewer large gaps than predicted by power-law functions. Our analyses demonstrate that LiDAR is a useful tool for distinguishing structural differences between old-growth and old-secondary forests. That makes LiDAR a powerful tool for REDD+ (Reduction of Emissions from Deforestation and Forest Degradation) programs implementation and conservation planning.
topic gap size frequency distribution
old growth forest
re-growth forest
selective logging
moist tropical forest
Gola Rainforest National Park
Sierra Leone
MCMC
power-law
LiDAR
url http://www.mdpi.com/2072-4292/7/7/8348
work_keys_str_mv AT rafikent airbornelidardetectsselectivelyloggedtropicalforesteveninanadvancedstageofrecovery
AT jeremyalindsell airbornelidardetectsselectivelyloggedtropicalforesteveninanadvancedstageofrecovery
AT gaiavagliolaurin airbornelidardetectsselectivelyloggedtropicalforesteveninanadvancedstageofrecovery
AT riccardovalentini airbornelidardetectsselectivelyloggedtropicalforesteveninanadvancedstageofrecovery
AT davidacoomes airbornelidardetectsselectivelyloggedtropicalforesteveninanadvancedstageofrecovery
_version_ 1725633365255651328