Quantifying forest residual biomass in Pinus halepensis Miller stands using Airborne Laser Scanning data

The estimation of forest residual biomass is of interest to assess the availability of green energy resources. This study relates the Pinus halepensis Miller forest residual biomass (FRB), estimated in 192 field plots, to several independent variables extracted from Airborne Laser Scanner (ALS) data...

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Main Authors: Darío Domingo, Antonio Luis Montealegre, María Teresa Lamelas, Alberto García-Martín, Juan de la Riva, Francisco Rodríguez, Rafael Alonso
Format: Article
Language:English
Published: Taylor & Francis Group 2019-11-01
Series:GIScience & Remote Sensing
Subjects:
Online Access:http://dx.doi.org/10.1080/15481603.2019.1641653
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author Darío Domingo
Antonio Luis Montealegre
María Teresa Lamelas
Alberto García-Martín
Juan de la Riva
Francisco Rodríguez
Rafael Alonso
author_facet Darío Domingo
Antonio Luis Montealegre
María Teresa Lamelas
Alberto García-Martín
Juan de la Riva
Francisco Rodríguez
Rafael Alonso
author_sort Darío Domingo
collection DOAJ
description The estimation of forest residual biomass is of interest to assess the availability of green energy resources. This study relates the Pinus halepensis Miller forest residual biomass (FRB), estimated in 192 field plots, to several independent variables extracted from Airborne Laser Scanner (ALS) data in Aragón region (Spain). Five selection approaches and four non-parametric regression methods were compared to estimate FRB. The sample was divided into training and validation sets, composed of 144 and 48 plots, respectively. The best-fitted model was obtained using the Support Vector Machine method with the radial kernel. The model included three ALS metrics: the 70th percentile, the variance of the return heights, and the percentage of first returns above mean height. The root-mean-square error (RMSE) after validation was 8.85 tons ha−1. The influence of point density, scan angle, canopy pulse penetration, terrain slope, and shrub presence in model performance was assessed using graphical and statistical approaches. Point densities higher than 1 point m−2, scan angles lower than 15°, canopy pulse penetration over 25%, and terrain slopes under 30% generated a smaller variability in mean predictive error (MPE) values, thus increasing model accuracy in 0.56, 1.94, 1.44, and 5.47 tons ha−1, respectively. Shrub vegetation caused greater variability in MPE values but slightly decreased model accuracy (0.10 tons ha−1). No statistically significant differences were found between the categories in the influencing variables, except for canopy pulse penetration. The mapping of Pinus halepensis Miller FRB using the best-fitted model summed up a total of 3,627,021.25 tons, which equals to 1,584.91 thousand tonnes of oil (ktoe).
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spelling doaj.art-f285449b896249279f0f11e5171d8aaf2023-09-21T12:34:15ZengTaylor & Francis GroupGIScience & Remote Sensing1548-16031943-72262019-11-015681210123210.1080/15481603.2019.16416531641653Quantifying forest residual biomass in Pinus halepensis Miller stands using Airborne Laser Scanning dataDarío Domingo0Antonio Luis Montealegre1María Teresa Lamelas2Alberto García-Martín3Juan de la Riva4Francisco Rodríguez5Rafael Alonso6University of ZaragozaUniversity of ZaragozaUniversity of ZaragozaUniversity of ZaragozaUniversity of Zaragozaföra forest technologies sllföra forest technologies sllThe estimation of forest residual biomass is of interest to assess the availability of green energy resources. This study relates the Pinus halepensis Miller forest residual biomass (FRB), estimated in 192 field plots, to several independent variables extracted from Airborne Laser Scanner (ALS) data in Aragón region (Spain). Five selection approaches and four non-parametric regression methods were compared to estimate FRB. The sample was divided into training and validation sets, composed of 144 and 48 plots, respectively. The best-fitted model was obtained using the Support Vector Machine method with the radial kernel. The model included three ALS metrics: the 70th percentile, the variance of the return heights, and the percentage of first returns above mean height. The root-mean-square error (RMSE) after validation was 8.85 tons ha−1. The influence of point density, scan angle, canopy pulse penetration, terrain slope, and shrub presence in model performance was assessed using graphical and statistical approaches. Point densities higher than 1 point m−2, scan angles lower than 15°, canopy pulse penetration over 25%, and terrain slopes under 30% generated a smaller variability in mean predictive error (MPE) values, thus increasing model accuracy in 0.56, 1.94, 1.44, and 5.47 tons ha−1, respectively. Shrub vegetation caused greater variability in MPE values but slightly decreased model accuracy (0.10 tons ha−1). No statistically significant differences were found between the categories in the influencing variables, except for canopy pulse penetration. The mapping of Pinus halepensis Miller FRB using the best-fitted model summed up a total of 3,627,021.25 tons, which equals to 1,584.91 thousand tonnes of oil (ktoe).http://dx.doi.org/10.1080/15481603.2019.1641653forest residual biomassbioenergymediterranean forestals-pnoamodel performance
spellingShingle Darío Domingo
Antonio Luis Montealegre
María Teresa Lamelas
Alberto García-Martín
Juan de la Riva
Francisco Rodríguez
Rafael Alonso
Quantifying forest residual biomass in Pinus halepensis Miller stands using Airborne Laser Scanning data
GIScience & Remote Sensing
forest residual biomass
bioenergy
mediterranean forest
als-pnoa
model performance
title Quantifying forest residual biomass in Pinus halepensis Miller stands using Airborne Laser Scanning data
title_full Quantifying forest residual biomass in Pinus halepensis Miller stands using Airborne Laser Scanning data
title_fullStr Quantifying forest residual biomass in Pinus halepensis Miller stands using Airborne Laser Scanning data
title_full_unstemmed Quantifying forest residual biomass in Pinus halepensis Miller stands using Airborne Laser Scanning data
title_short Quantifying forest residual biomass in Pinus halepensis Miller stands using Airborne Laser Scanning data
title_sort quantifying forest residual biomass in pinus halepensis miller stands using airborne laser scanning data
topic forest residual biomass
bioenergy
mediterranean forest
als-pnoa
model performance
url http://dx.doi.org/10.1080/15481603.2019.1641653
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