Stem Taper Approximation by Artificial Neural Network and a Regression Set Models

Variation in tree stem form depends on species, age, site conditions, etc. Stem taper models that estimate stem diameter at any height and volume should comply with this complexity. In the paper, we propose new methods taking into account both unbiased estimates and stem variability: (i) an expert m...

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Main Authors: Jaroslaw Socha, Pawel Netzel, Dominika Cywicka
Format: Article
Language:English
Published: MDPI AG 2020-01-01
Series:Forests
Subjects:
Online Access:https://www.mdpi.com/1999-4907/11/1/79
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spelling doaj-137a64b578e348fcbca693fa315af3762020-11-25T01:38:38ZengMDPI AGForests1999-49072020-01-011117910.3390/f11010079f11010079Stem Taper Approximation by Artificial Neural Network and a Regression Set ModelsJaroslaw Socha0Pawel Netzel1Dominika Cywicka2Department of Forest Resources Management, Faculty of Forestry, University of Agriculture in Krakow, Al. 29 Listopada, 31-425 Krakow, PolandDepartment of Forest Resources Management, Faculty of Forestry, University of Agriculture in Krakow, Al. 29 Listopada, 31-425 Krakow, PolandDepartment of Forest Resources Management, Faculty of Forestry, University of Agriculture in Krakow, Al. 29 Listopada, 31-425 Krakow, PolandVariation in tree stem form depends on species, age, site conditions, etc. Stem taper models that estimate stem diameter at any height and volume should comply with this complexity. In the paper, we propose new methods taking into account both unbiased estimates and stem variability: (i) an expert model based on an artificial neural network (ANN) and (ii) a statistical model built using a regression tree (REG). We used the variable-exponent taper equation (STE) as a reference for these two models. Input data contain information about 2856 trees representing eight dominant forest-forming tree species in Poland (birch, beech, oak, fir, larch, alder, pine, and spruce). The trees were selected across stands varied in terms of age and site conditions. Based on the data, we built ANN and REG models and calculated both stem taper and tree volumes. The results show that ANN is a universal approach that offers the most precise estimation of stem diameter at a particular stem height for different tree species. The results for alder are an exception. In this case, the REG model performs slightly better than ANN. In terms of volume prediction, the ANN model provides the most accurate predictions for coniferous and beech. In general, flexibility and predictive performance of the ANN are better than REG and reference the STE equation.https://www.mdpi.com/1999-4907/11/1/79stem formstem profiletree volumestem taper modeling, stem diameter at any height
collection DOAJ
language English
format Article
sources DOAJ
author Jaroslaw Socha
Pawel Netzel
Dominika Cywicka
spellingShingle Jaroslaw Socha
Pawel Netzel
Dominika Cywicka
Stem Taper Approximation by Artificial Neural Network and a Regression Set Models
Forests
stem form
stem profile
tree volume
stem taper modeling, stem diameter at any height
author_facet Jaroslaw Socha
Pawel Netzel
Dominika Cywicka
author_sort Jaroslaw Socha
title Stem Taper Approximation by Artificial Neural Network and a Regression Set Models
title_short Stem Taper Approximation by Artificial Neural Network and a Regression Set Models
title_full Stem Taper Approximation by Artificial Neural Network and a Regression Set Models
title_fullStr Stem Taper Approximation by Artificial Neural Network and a Regression Set Models
title_full_unstemmed Stem Taper Approximation by Artificial Neural Network and a Regression Set Models
title_sort stem taper approximation by artificial neural network and a regression set models
publisher MDPI AG
series Forests
issn 1999-4907
publishDate 2020-01-01
description Variation in tree stem form depends on species, age, site conditions, etc. Stem taper models that estimate stem diameter at any height and volume should comply with this complexity. In the paper, we propose new methods taking into account both unbiased estimates and stem variability: (i) an expert model based on an artificial neural network (ANN) and (ii) a statistical model built using a regression tree (REG). We used the variable-exponent taper equation (STE) as a reference for these two models. Input data contain information about 2856 trees representing eight dominant forest-forming tree species in Poland (birch, beech, oak, fir, larch, alder, pine, and spruce). The trees were selected across stands varied in terms of age and site conditions. Based on the data, we built ANN and REG models and calculated both stem taper and tree volumes. The results show that ANN is a universal approach that offers the most precise estimation of stem diameter at a particular stem height for different tree species. The results for alder are an exception. In this case, the REG model performs slightly better than ANN. In terms of volume prediction, the ANN model provides the most accurate predictions for coniferous and beech. In general, flexibility and predictive performance of the ANN are better than REG and reference the STE equation.
topic stem form
stem profile
tree volume
stem taper modeling, stem diameter at any height
url https://www.mdpi.com/1999-4907/11/1/79
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AT pawelnetzel stemtaperapproximationbyartificialneuralnetworkandaregressionsetmodels
AT dominikacywicka stemtaperapproximationbyartificialneuralnetworkandaregressionsetmodels
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