Cargando…

Robustness of model-based high-resolution prediction of forest biomass against different field plot designs

BACKGROUND: Participatory forest monitoring has been promoted as a means to engage local forest-dependent communities in concrete climate mitigation activities as it brings a sense of ownership to the communities and hence increases the likelihood of success of forest preservation measures. However,...

Descripción completa

Detalles Bibliográficos
Autores principales: Junttila, Virpi, Gautam, Basanta, Karky, Bhaskar Singh, Maguya, Almasi, Tegel, Katri, Kauranne, Tuomo, Gunia, Katja, Hämäläinen, Jarno, Latva-Käyrä, Petri, Nikolaeva, Ekaterina, Peuhkurinen, Jussi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4668278/
https://www.ncbi.nlm.nih.gov/pubmed/26692892
http://dx.doi.org/10.1186/s13021-015-0038-1
_version_ 1782403960031674368
author Junttila, Virpi
Gautam, Basanta
Karky, Bhaskar Singh
Maguya, Almasi
Tegel, Katri
Kauranne, Tuomo
Gunia, Katja
Hämäläinen, Jarno
Latva-Käyrä, Petri
Nikolaeva, Ekaterina
Peuhkurinen, Jussi
author_facet Junttila, Virpi
Gautam, Basanta
Karky, Bhaskar Singh
Maguya, Almasi
Tegel, Katri
Kauranne, Tuomo
Gunia, Katja
Hämäläinen, Jarno
Latva-Käyrä, Petri
Nikolaeva, Ekaterina
Peuhkurinen, Jussi
author_sort Junttila, Virpi
collection PubMed
description BACKGROUND: Participatory forest monitoring has been promoted as a means to engage local forest-dependent communities in concrete climate mitigation activities as it brings a sense of ownership to the communities and hence increases the likelihood of success of forest preservation measures. However, sceptics of this approach argue that local community forest members will not easily attain the level of technical proficiency that accurate monitoring needs. Thus it is interesting to establish if local communities can attain such a level of technical proficiency. This paper addresses this issue by assessing the robustness of biomass estimation models based on air-borne laser data using models calibrated with two different field sample designs namely, field data gathered by professional forester teams and field data collected by local communities trained by professional foresters in two study sites in Nepal. The aim is to find if the two field sample data sets can give similar results (LiDAR models) and whether the data can be combined and used together in estimating biomass. RESULTS: Results show that even though the sampling designs and principles of both field campaigns were different, they produced equivalent regression models based on LiDAR data. This was successful in one of the sites (Gorkha). At the other site (Chitwan), however, major discrepancies remained in model-based estimates that used different field sample data sets. This discrepancy can be attributed to the complex terrain and dense forest in the site which makes it difficult to obtain an accurate digital elevation model (DTM) from LiDAR data, and neither set of data produced satisfactory results. CONCLUSIONS: Field sample data produced by professional foresters and field sample data produced by professionally trained communities can be used together without affecting prediction performance provided that the correlation between LiDAR predictors and biomass estimates is good enough.
format Online
Article
Text
id pubmed-4668278
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher Springer International Publishing
record_format MEDLINE/PubMed
spelling pubmed-46682782015-12-10 Robustness of model-based high-resolution prediction of forest biomass against different field plot designs Junttila, Virpi Gautam, Basanta Karky, Bhaskar Singh Maguya, Almasi Tegel, Katri Kauranne, Tuomo Gunia, Katja Hämäläinen, Jarno Latva-Käyrä, Petri Nikolaeva, Ekaterina Peuhkurinen, Jussi Carbon Balance Manag Research BACKGROUND: Participatory forest monitoring has been promoted as a means to engage local forest-dependent communities in concrete climate mitigation activities as it brings a sense of ownership to the communities and hence increases the likelihood of success of forest preservation measures. However, sceptics of this approach argue that local community forest members will not easily attain the level of technical proficiency that accurate monitoring needs. Thus it is interesting to establish if local communities can attain such a level of technical proficiency. This paper addresses this issue by assessing the robustness of biomass estimation models based on air-borne laser data using models calibrated with two different field sample designs namely, field data gathered by professional forester teams and field data collected by local communities trained by professional foresters in two study sites in Nepal. The aim is to find if the two field sample data sets can give similar results (LiDAR models) and whether the data can be combined and used together in estimating biomass. RESULTS: Results show that even though the sampling designs and principles of both field campaigns were different, they produced equivalent regression models based on LiDAR data. This was successful in one of the sites (Gorkha). At the other site (Chitwan), however, major discrepancies remained in model-based estimates that used different field sample data sets. This discrepancy can be attributed to the complex terrain and dense forest in the site which makes it difficult to obtain an accurate digital elevation model (DTM) from LiDAR data, and neither set of data produced satisfactory results. CONCLUSIONS: Field sample data produced by professional foresters and field sample data produced by professionally trained communities can be used together without affecting prediction performance provided that the correlation between LiDAR predictors and biomass estimates is good enough. Springer International Publishing 2015-12-02 /pmc/articles/PMC4668278/ /pubmed/26692892 http://dx.doi.org/10.1186/s13021-015-0038-1 Text en © Junttila et al. 2015 Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.
spellingShingle Research
Junttila, Virpi
Gautam, Basanta
Karky, Bhaskar Singh
Maguya, Almasi
Tegel, Katri
Kauranne, Tuomo
Gunia, Katja
Hämäläinen, Jarno
Latva-Käyrä, Petri
Nikolaeva, Ekaterina
Peuhkurinen, Jussi
Robustness of model-based high-resolution prediction of forest biomass against different field plot designs
title Robustness of model-based high-resolution prediction of forest biomass against different field plot designs
title_full Robustness of model-based high-resolution prediction of forest biomass against different field plot designs
title_fullStr Robustness of model-based high-resolution prediction of forest biomass against different field plot designs
title_full_unstemmed Robustness of model-based high-resolution prediction of forest biomass against different field plot designs
title_short Robustness of model-based high-resolution prediction of forest biomass against different field plot designs
title_sort robustness of model-based high-resolution prediction of forest biomass against different field plot designs
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4668278/
https://www.ncbi.nlm.nih.gov/pubmed/26692892
http://dx.doi.org/10.1186/s13021-015-0038-1
work_keys_str_mv AT junttilavirpi robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns
AT gautambasanta robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns
AT karkybhaskarsingh robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns
AT maguyaalmasi robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns
AT tegelkatri robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns
AT kaurannetuomo robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns
AT guniakatja robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns
AT hamalainenjarno robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns
AT latvakayrapetri robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns
AT nikolaevaekaterina robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns
AT peuhkurinenjussi robustnessofmodelbasedhighresolutionpredictionofforestbiomassagainstdifferentfieldplotdesigns