Modelling tree height-diameter allometry of Chinese fir in relation to stand and climate variables through Bayesian model averaging approach

Tree height-diameter allometry reflects the response of specific species to above and belowground resource allocation patterns. However, traditional methods (e.g. stepwise regression (SR)) may ignore model uncertainty during the variable selection process. In this study, 450 trees of Chin...

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Main Authors: Lu, Lele, Chhin, Sophan, Zhang, Xiongqing, Zhang, Jianguo
Format: Article
Language:English
Published: Finnish Society of Forest Science 2021-01-01
Series:Silva Fennica
Online Access:https://www.silvafennica.fi/article/10415
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spelling doaj-3bafdd71e14641f88e64db24e518b4ad2021-04-08T13:13:35ZengFinnish Society of Forest ScienceSilva Fennica2242-40752021-01-0155210.14214/sf.10415Modelling tree height-diameter allometry of Chinese fir in relation to stand and climate variables through Bayesian model averaging approachLu, LeleChhin, SophanZhang, XiongqingZhang, Jianguo Tree height-diameter allometry reflects the response of specific species to above and belowground resource allocation patterns. However, traditional methods (e.g. stepwise regression (SR)) may ignore model uncertainty during the variable selection process. In this study, 450 trees of Chinese fir ( (Lamb.) Hook.) grown at five spacings were used. We explored the height-diameter allometry in relation to stand and climate variables through Bayesian model averaging (BMA) and identifying the contributions of these variables to the allometry, as well as comparing with the SR method. Results showed the SR model was equal to the model with the third highest posterior probability of the BMA models. Although parameter estimates from the SR method were similar to BMA, BMA produced estimates with slightly narrower 95% intervals. Heights increased with increasing planting density, dominant height, and mean annual temperature, but decreased with increasing stand basal area and summer mean maximum temperature. The results indicated that temperature was the dominant climate variable shaping the height-diameter allometry for Chinese fir plantations. While the SR model included the mean coldest month temperature and winter mean minimum temperature, these variables were excluded in BMA, which indicated that redundant variables can be removed through BMA.Cunninghamia lanceolatahttps://www.silvafennica.fi/article/10415
collection DOAJ
language English
format Article
sources DOAJ
author Lu, Lele
Chhin, Sophan
Zhang, Xiongqing
Zhang, Jianguo
spellingShingle Lu, Lele
Chhin, Sophan
Zhang, Xiongqing
Zhang, Jianguo
Modelling tree height-diameter allometry of Chinese fir in relation to stand and climate variables through Bayesian model averaging approach
Silva Fennica
author_facet Lu, Lele
Chhin, Sophan
Zhang, Xiongqing
Zhang, Jianguo
author_sort Lu, Lele
title Modelling tree height-diameter allometry of Chinese fir in relation to stand and climate variables through Bayesian model averaging approach
title_short Modelling tree height-diameter allometry of Chinese fir in relation to stand and climate variables through Bayesian model averaging approach
title_full Modelling tree height-diameter allometry of Chinese fir in relation to stand and climate variables through Bayesian model averaging approach
title_fullStr Modelling tree height-diameter allometry of Chinese fir in relation to stand and climate variables through Bayesian model averaging approach
title_full_unstemmed Modelling tree height-diameter allometry of Chinese fir in relation to stand and climate variables through Bayesian model averaging approach
title_sort modelling tree height-diameter allometry of chinese fir in relation to stand and climate variables through bayesian model averaging approach
publisher Finnish Society of Forest Science
series Silva Fennica
issn 2242-4075
publishDate 2021-01-01
description Tree height-diameter allometry reflects the response of specific species to above and belowground resource allocation patterns. However, traditional methods (e.g. stepwise regression (SR)) may ignore model uncertainty during the variable selection process. In this study, 450 trees of Chinese fir ( (Lamb.) Hook.) grown at five spacings were used. We explored the height-diameter allometry in relation to stand and climate variables through Bayesian model averaging (BMA) and identifying the contributions of these variables to the allometry, as well as comparing with the SR method. Results showed the SR model was equal to the model with the third highest posterior probability of the BMA models. Although parameter estimates from the SR method were similar to BMA, BMA produced estimates with slightly narrower 95% intervals. Heights increased with increasing planting density, dominant height, and mean annual temperature, but decreased with increasing stand basal area and summer mean maximum temperature. The results indicated that temperature was the dominant climate variable shaping the height-diameter allometry for Chinese fir plantations. While the SR model included the mean coldest month temperature and winter mean minimum temperature, these variables were excluded in BMA, which indicated that redundant variables can be removed through BMA.Cunninghamia lanceolata
url https://www.silvafennica.fi/article/10415
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