The use of airborne laser scanning to develop a pixel-based stratification for a verified carbon offset project

<p>Abstract</p> <p>Background</p> <p>The voluntary carbon market is a new and growing market that is increasingly important to consider in managing forestland. Monitoring, reporting, and verifying carbon stocks and fluxes at a project level is the single largest direct...

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Main Authors: Carah Jennifer, Hanus Mark, Golinkoff Jordan
Format: Article
Language:English
Published: BMC 2011-10-01
Series:Carbon Balance and Management
Subjects:
MRV
Online Access:http://www.cbmjournal.com/content/6/1/9
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spelling doaj-85a1ad240f1644249cbaef7642c9c3012020-11-25T02:32:13ZengBMCCarbon Balance and Management1750-06802011-10-0161910.1186/1750-0680-6-9The use of airborne laser scanning to develop a pixel-based stratification for a verified carbon offset projectCarah JenniferHanus MarkGolinkoff Jordan<p>Abstract</p> <p>Background</p> <p>The voluntary carbon market is a new and growing market that is increasingly important to consider in managing forestland. Monitoring, reporting, and verifying carbon stocks and fluxes at a project level is the single largest direct cost of a forest carbon offset project. There are now many methods for estimating forest stocks with high accuracy that use both Airborne Laser Scanning (ALS) and high-resolution optical remote sensing data. However, many of these methods are not appropriate for use under existing carbon offset standards and most have not been field tested.</p> <p>Results</p> <p>This paper presents a pixel-based forest stratification method that uses both ALS and optical remote sensing data to optimally partition the variability across an ~10,000 ha forest ownership in Mendocino County, CA, USA. This new stratification approach improved the accuracy of the forest inventory, reduced the cost of field-based inventory, and provides a powerful tool for future management planning. This approach also details a method of determining the optimum pixel size to best partition a forest.</p> <p>Conclusions</p> <p>The use of ALS and optical remote sensing data can help reduce the cost of field inventory and can help to locate areas that need the most intensive inventory effort. This pixel-based stratification method may provide a cost-effective approach to reducing inventory costs over larger areas when the remote sensing data acquisition costs can be kept low on a per acre basis.</p> http://www.cbmjournal.com/content/6/1/9Forest carbon offsetsMRVLiDARAirborne Laser Scanningstratificationpost-stratificationcarbon projectcarbon stock estimation
collection DOAJ
language English
format Article
sources DOAJ
author Carah Jennifer
Hanus Mark
Golinkoff Jordan
spellingShingle Carah Jennifer
Hanus Mark
Golinkoff Jordan
The use of airborne laser scanning to develop a pixel-based stratification for a verified carbon offset project
Carbon Balance and Management
Forest carbon offsets
MRV
LiDAR
Airborne Laser Scanning
stratification
post-stratification
carbon project
carbon stock estimation
author_facet Carah Jennifer
Hanus Mark
Golinkoff Jordan
author_sort Carah Jennifer
title The use of airborne laser scanning to develop a pixel-based stratification for a verified carbon offset project
title_short The use of airborne laser scanning to develop a pixel-based stratification for a verified carbon offset project
title_full The use of airborne laser scanning to develop a pixel-based stratification for a verified carbon offset project
title_fullStr The use of airborne laser scanning to develop a pixel-based stratification for a verified carbon offset project
title_full_unstemmed The use of airborne laser scanning to develop a pixel-based stratification for a verified carbon offset project
title_sort use of airborne laser scanning to develop a pixel-based stratification for a verified carbon offset project
publisher BMC
series Carbon Balance and Management
issn 1750-0680
publishDate 2011-10-01
description <p>Abstract</p> <p>Background</p> <p>The voluntary carbon market is a new and growing market that is increasingly important to consider in managing forestland. Monitoring, reporting, and verifying carbon stocks and fluxes at a project level is the single largest direct cost of a forest carbon offset project. There are now many methods for estimating forest stocks with high accuracy that use both Airborne Laser Scanning (ALS) and high-resolution optical remote sensing data. However, many of these methods are not appropriate for use under existing carbon offset standards and most have not been field tested.</p> <p>Results</p> <p>This paper presents a pixel-based forest stratification method that uses both ALS and optical remote sensing data to optimally partition the variability across an ~10,000 ha forest ownership in Mendocino County, CA, USA. This new stratification approach improved the accuracy of the forest inventory, reduced the cost of field-based inventory, and provides a powerful tool for future management planning. This approach also details a method of determining the optimum pixel size to best partition a forest.</p> <p>Conclusions</p> <p>The use of ALS and optical remote sensing data can help reduce the cost of field inventory and can help to locate areas that need the most intensive inventory effort. This pixel-based stratification method may provide a cost-effective approach to reducing inventory costs over larger areas when the remote sensing data acquisition costs can be kept low on a per acre basis.</p>
topic Forest carbon offsets
MRV
LiDAR
Airborne Laser Scanning
stratification
post-stratification
carbon project
carbon stock estimation
url http://www.cbmjournal.com/content/6/1/9
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