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机载LiDAR森林蓄积量非参数模型构建与残差分析

宋子戈 肖海 张泰 陈松 唐杰 龙依 周晟 孙华

中南林业科技大学学报2025,Vol.45Issue(10):86-95,123,11.
中南林业科技大学学报2025,Vol.45Issue(10):86-95,123,11.DOI:10.14067/j.cnki.1673-923x.2025.10.009

机载LiDAR森林蓄积量非参数模型构建与残差分析

Nonparametric model for forest stock volume estimation based on airborne LiDAR point cloud and residual analysis

宋子戈 1肖海 2张泰 2陈松 1唐杰 1龙依 1周晟 1孙华1

作者信息

  • 1. 中南林业科技大学 林业遥感信息工程研究中心,湖南 长沙 410004||林业遥感大数据与生态安全湖南省重点实验室,湖南 长沙 410004||南方森林资源经营与监测国家林业和草原局重点实验室,湖南 长沙 410004
  • 2. 湖南省第二测绘院,湖南 长沙 410119
  • 折叠

摘要

Abstract

[Objective]In response to the current situation where numerous and diverse algorithms are used for forest volume inversion from airborne point cloud data,this study aims to conduct a comparative analysis of different feature selection methods combined with various algorithms to identify the optimal model,providing a reference for airborne LiDAR-based forest volume inversion.[Method]The research was conducted in the Wangyedian forest farm.Plot-level volume was calculated based on field measurement data for individual trees,combined with point cloud height features extracted from airborne point cloud data.Stepwise regression(SR)and the Boruta algorithm were used for feature selection.Six non-parametric models:RF,KRR,XGBoost,KNN,MLP and SVM were constructed.The best model was determined based on accuracy evaluation and residual analysis,leading to the completion of forest volume mapping for the study area.[Result]Compared to the stepwise regression selection method,the Boruta method selects more effective feature variables,making it more suitable for forest volume modeling.The model's average R2 improves from 0.73 to 0.76,RMSE decreases from 38.94 to 35.47 m3·hm-2,rRMSE drops from 29.68 to 26.38 m3·hm-2,MAE reduces from 20.26%to 18.22%,and SMAPE decreases from 16.26%to 14.31%.XGBoost,combined with Boruta feature selection,provides the optimal model with the highest inversion accuracy,achieving an R2 of 0.92,RMSE of 20.02 m3·hm-2,MAE of 16.62 m3·hm-2,rRMSE of 10.29%,and SMAPE of 10.58%.Residual analysis shows that the model's residual distribution is reasonable and significantly different from other models.[Conclusion]Airborne LiDAR technology effectively collects 3D forest information and is suitable for forest volume inversion.When combined with Boruta feature selection and the XGBoost non-parametric model,it can efficiently invert the spatial distribution of forest volume.

关键词

森林蓄积量/非参数算法/残差分析/机载激光雷达

Key words

forest volume/non-parametric algorithms/residual analysis/airborne LiDAR

分类

农业科技

引用本文复制引用

宋子戈,肖海,张泰,陈松,唐杰,龙依,周晟,孙华..机载LiDAR森林蓄积量非参数模型构建与残差分析[J].中南林业科技大学学报,2025,45(10):86-95,123,11.

基金项目

国家重点研发计划项目(2023YFD2201703) (2023YFD2201703)

国家自然科学基金项目(32471861,31971578) (32471861,31971578)

湖南省科技创新计划项目(2023RC1065) (2023RC1065)

湖南省自然科学基金项目(2022JJ30078). (2022JJ30078)

中南林业科技大学学报

OA北大核心

1673-923X

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