Application of topography and logistic regression in forest type spatial prediction

This research was carried out for predicting probability of forest type's presence using topographic attributes in the Educational and Research Forest of Doctor Bahramnia, district 1, with 1714 ha area. Field sampling was performed, based on cluster random sampling and systematic random samplin...

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Main Authors: Fariba Ghanbari, Sha'ban Shataee Joybari, Majeid Azim Mohseni, Hashem Habashi
Format: Article
Language:fas
Published: Research Institute of Forests and Rangelands of Iran 2011-03-01
Series:تحقیقات جنگل و صنوبر ایران
Subjects:
Online Access:http://ijfpr.areeo.ac.ir/article_107599_2a04d88152e45176c48240618d770ac9.pdf
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spelling doaj-9798088857d14ea6aa07803c8b1cad9b2020-11-25T00:21:07ZfasResearch Institute of Forests and Rangelands of Iranتحقیقات جنگل و صنوبر ایران1735-08832383-11462011-03-01191412710.22092/ijfpr.2011.107599107599Application of topography and logistic regression in forest type spatial predictionFariba Ghanbari0Sha'ban Shataee Joybari1Majeid Azim Mohseni2Hashem Habashi3M.Sc. of Forestry, University of Agricultural Sciences and Natural Resources of GorganAssociate Prof., University of Agricultural Sciences and Natural Resources of GorganAssistant Prof., Department of Statistics, Golestan UniversityAssistant Prof., University of Agricultural Sciences and Natural Resources of GorganThis research was carried out for predicting probability of forest type's presence using topographic attributes in the Educational and Research Forest of Doctor Bahramnia, district 1, with 1714 ha area. Field sampling was performed, based on cluster random sampling and systematic random sampling and 249 plots were sampled with 0.1 hectare area (without plantation area). Diameter of trees larger than   12.5 cm, species information and geographic position were registered in each plot with GPS. Since, thick trees are dominated in the canopy cover, 10 thick trees in each plot were selected to determine the forest type. Using computing of frequency percent of species, forest type in each plot was determined and four types of Fagus-Carpinus, Quercus-Carpinus, Carpinus-Parrotia and Parrotia-Acer (mixed with Carpinus betulus) were determined in the study area. The topographic attribute maps were derived from a digital terrain model and these attributes were extracted in location of plots. Logistic regression was implemented to analysis of forest type’s correlation with attributes and to construct a predictive model. The analysis was performed using 70% of the plots and each forest type map was resulted by extrapolation of model in GIS. Validation of results was performed by 30% of the remained plots and total accuracy computed for each model. Validation result of accuracy showed that spatial prediction models of forest types for Fagus-Carpinus and Quercus-Carpinus have narrow amplitude than Carpinus-Parrotia and Parrotia-Acer (mixed with Carpinus betulus) types that spread in large extent region. This result showed that spatial predictive models of forest types, which have narrow amplitude, are more acceptable. The results also showed that consideration of altitude, solar radiation potential and aspect in the model were the main factors which are controlling forest types in the study area.http://ijfpr.areeo.ac.ir/article_107599_2a04d88152e45176c48240618d770ac9.pdfSpatial predictive mapforest typesprimary and secondary topographic attributesLogistic regression
collection DOAJ
language fas
format Article
sources DOAJ
author Fariba Ghanbari
Sha'ban Shataee Joybari
Majeid Azim Mohseni
Hashem Habashi
spellingShingle Fariba Ghanbari
Sha'ban Shataee Joybari
Majeid Azim Mohseni
Hashem Habashi
Application of topography and logistic regression in forest type spatial prediction
تحقیقات جنگل و صنوبر ایران
Spatial predictive map
forest types
primary and secondary topographic attributes
Logistic regression
author_facet Fariba Ghanbari
Sha'ban Shataee Joybari
Majeid Azim Mohseni
Hashem Habashi
author_sort Fariba Ghanbari
title Application of topography and logistic regression in forest type spatial prediction
title_short Application of topography and logistic regression in forest type spatial prediction
title_full Application of topography and logistic regression in forest type spatial prediction
title_fullStr Application of topography and logistic regression in forest type spatial prediction
title_full_unstemmed Application of topography and logistic regression in forest type spatial prediction
title_sort application of topography and logistic regression in forest type spatial prediction
publisher Research Institute of Forests and Rangelands of Iran
series تحقیقات جنگل و صنوبر ایران
issn 1735-0883
2383-1146
publishDate 2011-03-01
description This research was carried out for predicting probability of forest type's presence using topographic attributes in the Educational and Research Forest of Doctor Bahramnia, district 1, with 1714 ha area. Field sampling was performed, based on cluster random sampling and systematic random sampling and 249 plots were sampled with 0.1 hectare area (without plantation area). Diameter of trees larger than   12.5 cm, species information and geographic position were registered in each plot with GPS. Since, thick trees are dominated in the canopy cover, 10 thick trees in each plot were selected to determine the forest type. Using computing of frequency percent of species, forest type in each plot was determined and four types of Fagus-Carpinus, Quercus-Carpinus, Carpinus-Parrotia and Parrotia-Acer (mixed with Carpinus betulus) were determined in the study area. The topographic attribute maps were derived from a digital terrain model and these attributes were extracted in location of plots. Logistic regression was implemented to analysis of forest type’s correlation with attributes and to construct a predictive model. The analysis was performed using 70% of the plots and each forest type map was resulted by extrapolation of model in GIS. Validation of results was performed by 30% of the remained plots and total accuracy computed for each model. Validation result of accuracy showed that spatial prediction models of forest types for Fagus-Carpinus and Quercus-Carpinus have narrow amplitude than Carpinus-Parrotia and Parrotia-Acer (mixed with Carpinus betulus) types that spread in large extent region. This result showed that spatial predictive models of forest types, which have narrow amplitude, are more acceptable. The results also showed that consideration of altitude, solar radiation potential and aspect in the model were the main factors which are controlling forest types in the study area.
topic Spatial predictive map
forest types
primary and secondary topographic attributes
Logistic regression
url http://ijfpr.areeo.ac.ir/article_107599_2a04d88152e45176c48240618d770ac9.pdf
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