Improving multi-source forest inventory by weighting auxiliary data sources

A two-phase sampling design has been applied to forest inventory. First, a large number of first phase sample plots were defined with a square grid in a geographic coordinate system for two study areas of about 1800 and 4500 ha. The first phase sample plots were supplied by auxiliary data...

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Main Authors: Tuominen, Sakari, Poso, Simo
Format: Article
Language:English
Published: Finnish Society of Forest Science 2001-01-01
Series:Silva Fennica
Online Access:https://www.silvafennica.fi/article/596
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spelling doaj-ac60486d5d4045c8b6a0187f1a8110402020-11-25T03:05:52ZengFinnish Society of Forest ScienceSilva Fennica2242-40752001-01-0135210.14214/sf.596Improving multi-source forest inventory by weighting auxiliary data sourcesTuominen, SakariPoso, Simo A two-phase sampling design has been applied to forest inventory. First, a large number of first phase sample plots were defined with a square grid in a geographic coordinate system for two study areas of about 1800 and 4500 ha. The first phase sample plots were supplied by auxiliary data of Landsat TM and IRS-1C with principal component transformation for stratification and drawing the second phase sample (field sample). Proportional allocation was used to draw the second phase sample. The number of field sample plots in the two study areas was 300 and 380. The local estimates of five continuous forest stand variables, mean diameter, mean height, age, basal area, and stem volume, were calculated for each of the first phase sample plots. This was done separately by using one auxiliary data source at a time together with the field sample information. However, if the first phase sample plot for which the stand variables were to be estimated was also a field sample plot, the information of that field sample plot was eliminated according to the cross validation principle. This was because it was then possible to calculate mean square errors of estimates related to a specific auxiliary data source. The procedure produced as many estimates for each first phase sample plot and forest stand variable as was the number of auxiliary data sources, i.e. seven estimates: These were based on Landsat TM, IRS-1C, digitized aerial photos, ocular stereoscopic interpretation from aerial photographs, data from old forest inventory made by compartments, Landsat TM95âTM89 difference image and IRS96âTM95 difference image. The final estimates were calculated as weighted averages where the weights were inversely proportional to mean square errors. The alternative estimates were calculated by applying simple rules based on knowledge and the outliers were defined. The study shows that this kind of system for finding outliers for elimination and a weighting procedure improves the accuracy of stand variable estimation.https://www.silvafennica.fi/article/596
collection DOAJ
language English
format Article
sources DOAJ
author Tuominen, Sakari
Poso, Simo
spellingShingle Tuominen, Sakari
Poso, Simo
Improving multi-source forest inventory by weighting auxiliary data sources
Silva Fennica
author_facet Tuominen, Sakari
Poso, Simo
author_sort Tuominen, Sakari
title Improving multi-source forest inventory by weighting auxiliary data sources
title_short Improving multi-source forest inventory by weighting auxiliary data sources
title_full Improving multi-source forest inventory by weighting auxiliary data sources
title_fullStr Improving multi-source forest inventory by weighting auxiliary data sources
title_full_unstemmed Improving multi-source forest inventory by weighting auxiliary data sources
title_sort improving multi-source forest inventory by weighting auxiliary data sources
publisher Finnish Society of Forest Science
series Silva Fennica
issn 2242-4075
publishDate 2001-01-01
description A two-phase sampling design has been applied to forest inventory. First, a large number of first phase sample plots were defined with a square grid in a geographic coordinate system for two study areas of about 1800 and 4500 ha. The first phase sample plots were supplied by auxiliary data of Landsat TM and IRS-1C with principal component transformation for stratification and drawing the second phase sample (field sample). Proportional allocation was used to draw the second phase sample. The number of field sample plots in the two study areas was 300 and 380. The local estimates of five continuous forest stand variables, mean diameter, mean height, age, basal area, and stem volume, were calculated for each of the first phase sample plots. This was done separately by using one auxiliary data source at a time together with the field sample information. However, if the first phase sample plot for which the stand variables were to be estimated was also a field sample plot, the information of that field sample plot was eliminated according to the cross validation principle. This was because it was then possible to calculate mean square errors of estimates related to a specific auxiliary data source. The procedure produced as many estimates for each first phase sample plot and forest stand variable as was the number of auxiliary data sources, i.e. seven estimates: These were based on Landsat TM, IRS-1C, digitized aerial photos, ocular stereoscopic interpretation from aerial photographs, data from old forest inventory made by compartments, Landsat TM95âTM89 difference image and IRS96âTM95 difference image. The final estimates were calculated as weighted averages where the weights were inversely proportional to mean square errors. The alternative estimates were calculated by applying simple rules based on knowledge and the outliers were defined. The study shows that this kind of system for finding outliers for elimination and a weighting procedure improves the accuracy of stand variable estimation.
url https://www.silvafennica.fi/article/596
work_keys_str_mv AT tuominensakari improvingmultisourceforestinventorybyweightingauxiliarydatasources
AT pososimo improvingmultisourceforestinventorybyweightingauxiliarydatasources
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