Modeling pine forest growing stock volume in subtropical regions of China using airborne Lidar data

Pine forests, particularly Masson pine (Pinus massoniana), are widely distributed across the subtropical regions of China. Understanding the spatial distribution of pine forest growing stock volume (GSV) is essential for effective management and planning of forest resources. However, accurately esti...

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Main Authors: Zige Lan, Xiandie Jiang, Guiying Li, Yagang Lu, Hongwen Yao, Dengsheng Lu
Format: Article
Language:English
Published: Taylor & Francis Group 2025-12-01
Series:GIScience & Remote Sensing
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Online Access:https://www.tandfonline.com/doi/10.1080/15481603.2025.2477869
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author Zige Lan
Xiandie Jiang
Guiying Li
Yagang Lu
Hongwen Yao
Dengsheng Lu
author_facet Zige Lan
Xiandie Jiang
Guiying Li
Yagang Lu
Hongwen Yao
Dengsheng Lu
author_sort Zige Lan
collection DOAJ
description Pine forests, particularly Masson pine (Pinus massoniana), are widely distributed across the subtropical regions of China. Understanding the spatial distribution of pine forest growing stock volume (GSV) is essential for effective management and planning of forest resources. However, accurately estimating pine forest GSV over large areas using airborne Lidar is challenging due to the complex stand structure and the influence of environmental conditions. This research employed airborne Lidar data and sample plots from 11 typical sites across the northern, central, and southern subtropical regions of China to explore modeling approaches for pine forest GSV estimation. Ordinary Linear Regression (OLR), Geographically Weighted Regression (GWR), and Hierarchical Bayesian Approach (HBA) were employed to model GSV through comparative analysis of using various sample sizes. The results indicate that: (1) HBA(Site), which models different pine forest types (i.e. pure pine forest (PPF) and mixed pine forest (MXF)) separately, with typical site as a stratification factor, provided the best estimation results with coefficient of determination (R2) of 0.80 and 0.74, root mean square error (RMSE) of 25.15 m3/ha and 23.86 m3/ha for PPF and MXF, respectively. When combining PPF and MXF together to develop GSV models, HBA(Site/Type) with double stratification factors (i.e. typical site and forest type) showed similar performance, with only a minor reduction in RMSE by 0.45 m3/ha for PPF and 0.15 m3/ha for MXF. This modeling approach effectively alleviated the overfitting problem caused by relatively small sample sizes. (2) Compared to OLR which only used global variables, both GWR which incorporated spatial information and HBA which utilized stratification significantly improved modeling performance. (3) The accuracy of OLR and GWR models remained relatively stable with various sample sizes, indicating their low sensitivity to sample sizes, whereas HBA exhibited high sensitivity due to the influence of stratification factors. (4) For a single tree species, a stratification-based modeling method was valuable for GSV estimation. This study provided a quantitative analysis and accurate estimation of pine forest GSV over large areas with different environmental conditions and offered new insights for GSV estimation of other forest types. More research is needed to quantitatively examine different contribution of sample sizes, modeling algorithms, variables from different sources, and stratification factors on modeling results, so that we can design an optimal procedure for GSV modeling using airborne Lidar data.
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publishDate 2025-12-01
publisher Taylor & Francis Group
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spelling doaj-art-29a3482b6a8e4f0eb4c82b8b776dc2132025-08-20T02:07:19ZengTaylor & Francis GroupGIScience & Remote Sensing1548-16031943-72262025-12-0162110.1080/15481603.2025.2477869Modeling pine forest growing stock volume in subtropical regions of China using airborne Lidar dataZige Lan0Xiandie Jiang1Guiying Li2Yagang Lu3Hongwen Yao4Dengsheng Lu5Key Laboratory for Humid Subtropical Eco-Geographical Processes of the Ministry of Education, Fujian Normal University, Fuzhou, ChinaKey Laboratory for Humid Subtropical Eco-Geographical Processes of the Ministry of Education, Fujian Normal University, Fuzhou, ChinaKey Laboratory for Humid Subtropical Eco-Geographical Processes of the Ministry of Education, Fujian Normal University, Fuzhou, ChinaInstitute of East China Inventory and Planning, National Forestry and Grassland Administration, Hangzhou, ChinaZhejiang Forest Resources Monitoring Center, Hangzhou, ChinaKey Laboratory for Humid Subtropical Eco-Geographical Processes of the Ministry of Education, Fujian Normal University, Fuzhou, ChinaPine forests, particularly Masson pine (Pinus massoniana), are widely distributed across the subtropical regions of China. Understanding the spatial distribution of pine forest growing stock volume (GSV) is essential for effective management and planning of forest resources. However, accurately estimating pine forest GSV over large areas using airborne Lidar is challenging due to the complex stand structure and the influence of environmental conditions. This research employed airborne Lidar data and sample plots from 11 typical sites across the northern, central, and southern subtropical regions of China to explore modeling approaches for pine forest GSV estimation. Ordinary Linear Regression (OLR), Geographically Weighted Regression (GWR), and Hierarchical Bayesian Approach (HBA) were employed to model GSV through comparative analysis of using various sample sizes. The results indicate that: (1) HBA(Site), which models different pine forest types (i.e. pure pine forest (PPF) and mixed pine forest (MXF)) separately, with typical site as a stratification factor, provided the best estimation results with coefficient of determination (R2) of 0.80 and 0.74, root mean square error (RMSE) of 25.15 m3/ha and 23.86 m3/ha for PPF and MXF, respectively. When combining PPF and MXF together to develop GSV models, HBA(Site/Type) with double stratification factors (i.e. typical site and forest type) showed similar performance, with only a minor reduction in RMSE by 0.45 m3/ha for PPF and 0.15 m3/ha for MXF. This modeling approach effectively alleviated the overfitting problem caused by relatively small sample sizes. (2) Compared to OLR which only used global variables, both GWR which incorporated spatial information and HBA which utilized stratification significantly improved modeling performance. (3) The accuracy of OLR and GWR models remained relatively stable with various sample sizes, indicating their low sensitivity to sample sizes, whereas HBA exhibited high sensitivity due to the influence of stratification factors. (4) For a single tree species, a stratification-based modeling method was valuable for GSV estimation. This study provided a quantitative analysis and accurate estimation of pine forest GSV over large areas with different environmental conditions and offered new insights for GSV estimation of other forest types. More research is needed to quantitatively examine different contribution of sample sizes, modeling algorithms, variables from different sources, and stratification factors on modeling results, so that we can design an optimal procedure for GSV modeling using airborne Lidar data.https://www.tandfonline.com/doi/10.1080/15481603.2025.2477869Pine forestairborne Lidargrowing stock volumeHierarchical Bayesian Approachstratificationsubtropical regions
spellingShingle Zige Lan
Xiandie Jiang
Guiying Li
Yagang Lu
Hongwen Yao
Dengsheng Lu
Modeling pine forest growing stock volume in subtropical regions of China using airborne Lidar data
GIScience & Remote Sensing
Pine forest
airborne Lidar
growing stock volume
Hierarchical Bayesian Approach
stratification
subtropical regions
title Modeling pine forest growing stock volume in subtropical regions of China using airborne Lidar data
title_full Modeling pine forest growing stock volume in subtropical regions of China using airborne Lidar data
title_fullStr Modeling pine forest growing stock volume in subtropical regions of China using airborne Lidar data
title_full_unstemmed Modeling pine forest growing stock volume in subtropical regions of China using airborne Lidar data
title_short Modeling pine forest growing stock volume in subtropical regions of China using airborne Lidar data
title_sort modeling pine forest growing stock volume in subtropical regions of china using airborne lidar data
topic Pine forest
airborne Lidar
growing stock volume
Hierarchical Bayesian Approach
stratification
subtropical regions
url https://www.tandfonline.com/doi/10.1080/15481603.2025.2477869
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