Large Area Mapping of Boreal Growing Stock Volume on an Annual and Multi-Temporal Level Using PALSAR L-Band Backscatter Mosaics

The forests of the Russian Taiga can be described as an enormous biomass and carbon reservoir. Therefore, they are of utmost importance for the global carbon cycle. Large-area forest inventories in these mostly remote regions are associated with logistical problems and high financial efforts. Remote...

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Main Authors: Sebastian Wilhelm, Christian Hüttich, Mikhail Korets, Christiane Schmullius
Format: Article
Language:English
Published: MDPI AG 2014-08-01
Series:Forests
Subjects:
SAR
Online Access:http://www.mdpi.com/1999-4907/5/8/1999
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spelling doaj-b3e63dbf3a3f4e69b6ac859ac42773732020-11-24T21:30:44ZengMDPI AGForests1999-49072014-08-01581999201510.3390/f5081999f5081999Large Area Mapping of Boreal Growing Stock Volume on an Annual and Multi-Temporal Level Using PALSAR L-Band Backscatter MosaicsSebastian Wilhelm0Christian Hüttich1Mikhail Korets2Christiane Schmullius3Earth Observation Services (EOS) Jena GmbH, Jena 07743, GermanyDepartment of Earth Observation, Friedrich-Schiller-University, Jena 07743, GermanySukachev Institute of Forest, Siberian Branch of the Russian Academy of Sciences, Krasnoyarsk 660036, RussiaDepartment of Earth Observation, Friedrich-Schiller-University, Jena 07743, GermanyThe forests of the Russian Taiga can be described as an enormous biomass and carbon reservoir. Therefore, they are of utmost importance for the global carbon cycle. Large-area forest inventories in these mostly remote regions are associated with logistical problems and high financial efforts. Remotely-sensed data from satellite platforms may have the capability to provide such huge amounts of information. This study presents an application-oriented approach to derive aboveground growing stock volume (GSV) maps using the annual large-area L-band backscatter mosaics provided by the Japan Aerospace Exploration Agency (JAXA). Furthermore, a multi-temporal map has been created to improve GSV estimation accuracy. Based on information from Russian forest inventory data, the maps were generated using the machine learning algorithm, RandomForest. The results showed the high potential of this method for an operational, large-scale and high-resolution biomass estimation over boreal forests. An RMSE from 55.2 to 63.3 m3/ha could be obtained for the annual maps. Using the multi-temporal approach, the error could be slightly reduced to 54.4 m3/ha.http://www.mdpi.com/1999-4907/5/8/1999biomassgrowing stock volumeforestRandomForestSARPALSARL-bandmulti-temporal
collection DOAJ
language English
format Article
sources DOAJ
author Sebastian Wilhelm
Christian Hüttich
Mikhail Korets
Christiane Schmullius
spellingShingle Sebastian Wilhelm
Christian Hüttich
Mikhail Korets
Christiane Schmullius
Large Area Mapping of Boreal Growing Stock Volume on an Annual and Multi-Temporal Level Using PALSAR L-Band Backscatter Mosaics
Forests
biomass
growing stock volume
forest
RandomForest
SAR
PALSAR
L-band
multi-temporal
author_facet Sebastian Wilhelm
Christian Hüttich
Mikhail Korets
Christiane Schmullius
author_sort Sebastian Wilhelm
title Large Area Mapping of Boreal Growing Stock Volume on an Annual and Multi-Temporal Level Using PALSAR L-Band Backscatter Mosaics
title_short Large Area Mapping of Boreal Growing Stock Volume on an Annual and Multi-Temporal Level Using PALSAR L-Band Backscatter Mosaics
title_full Large Area Mapping of Boreal Growing Stock Volume on an Annual and Multi-Temporal Level Using PALSAR L-Band Backscatter Mosaics
title_fullStr Large Area Mapping of Boreal Growing Stock Volume on an Annual and Multi-Temporal Level Using PALSAR L-Band Backscatter Mosaics
title_full_unstemmed Large Area Mapping of Boreal Growing Stock Volume on an Annual and Multi-Temporal Level Using PALSAR L-Band Backscatter Mosaics
title_sort large area mapping of boreal growing stock volume on an annual and multi-temporal level using palsar l-band backscatter mosaics
publisher MDPI AG
series Forests
issn 1999-4907
publishDate 2014-08-01
description The forests of the Russian Taiga can be described as an enormous biomass and carbon reservoir. Therefore, they are of utmost importance for the global carbon cycle. Large-area forest inventories in these mostly remote regions are associated with logistical problems and high financial efforts. Remotely-sensed data from satellite platforms may have the capability to provide such huge amounts of information. This study presents an application-oriented approach to derive aboveground growing stock volume (GSV) maps using the annual large-area L-band backscatter mosaics provided by the Japan Aerospace Exploration Agency (JAXA). Furthermore, a multi-temporal map has been created to improve GSV estimation accuracy. Based on information from Russian forest inventory data, the maps were generated using the machine learning algorithm, RandomForest. The results showed the high potential of this method for an operational, large-scale and high-resolution biomass estimation over boreal forests. An RMSE from 55.2 to 63.3 m3/ha could be obtained for the annual maps. Using the multi-temporal approach, the error could be slightly reduced to 54.4 m3/ha.
topic biomass
growing stock volume
forest
RandomForest
SAR
PALSAR
L-band
multi-temporal
url http://www.mdpi.com/1999-4907/5/8/1999
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