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首页|期刊导航|生态学杂志|基于RF与BPNN的海南清澜港红树植物叶片生态化学计量高光谱反演

基于RF与BPNN的海南清澜港红树植物叶片生态化学计量高光谱反演

李化哲 窦志国 聂磊超 王俊杰 高常军 唐希颖 翟夏杰 李伟

生态学杂志2024,Vol.43Issue(8):2523-2530,8.
生态学杂志2024,Vol.43Issue(8):2523-2530,8.DOI:10.13292/j.1000-4890.202408.030

基于RF与BPNN的海南清澜港红树植物叶片生态化学计量高光谱反演

Hyperspectral retrieval of leaf ecological stoichiometry of mangrove species with RF and BPNN models in Qinglangang Mangrove Nature Reserve,Hainan

李化哲 1窦志国 1聂磊超 1王俊杰 2高常军 3唐希颖 1翟夏杰 1李伟1

作者信息

  • 1. 中国林业科学研究院湿地研究所,湿地生态功能与恢复北京市重点实验室,北京 100091||中国林业科学研究院生态保护与修复研究所,北京 100091
  • 2. 深圳大学生命与海洋科学学院,广东深圳 518060
  • 3. 广东省林业科学研究院,广东省森林培育与保护利用重点实验室,广州 510520
  • 折叠

摘要

Abstract

Mangrove forest is a natural coastal defense barrier,which plays an irreplaceable role in coastal disaster prevention and mitigation.Therefore,it is important to understand the growth status of mangroves.The ecological stoichiometry of plants can reflect their nutrient storage and supply capacity.Applying hyperspectral data to quantify the ecological stoichiometry of mangrove plants and exploring the accuracy and stability of hyperspectral retrieval of leaves can provide a technical reference for rapid remote sensing monitoring of mangrove growth conditions.In this study,we collected hyperspectral data of leaves of three dominant mangrove species(Bruguiera sexangula,Ceriops tagal,and Rhizophora apiculata)in Qinglangang Mangrove Nature Reserve,Hainan,and retrieved the contents and stoichiometry of C,N,and P.The results showed that there were significant differences in the contents and stoichiometry of C,N,and P among the three species,indicating differences in nutrient utilization of the three mangrove species.The Random Forest(RF)model outperformed Back Propagation Neural Network(BPNN)mod-el in retrieving C,N,P contents and their ecological stoichiometry considering R2,RMSE and RPD.This study demonstrated that the contents and stoichiometry of C,N,and P in mangrove leaves could be accurately estimated by leaf hyperspectral data.RF model is recommended for the hyperspectral retrieval of mangrove ecological stoichi-ometry when considering model accuracy and robustness.

关键词

机器学习模型/高光谱/生态化学计量/红树林

Key words

machine learning models/hyperspectrum/ecological stoichiometry/mangrove

引用本文复制引用

李化哲,窦志国,聂磊超,王俊杰,高常军,唐希颖,翟夏杰,李伟..基于RF与BPNN的海南清澜港红树植物叶片生态化学计量高光谱反演[J].生态学杂志,2024,43(8):2523-2530,8.

基金项目

国家重点研发计划项目(2017YFC0506200)资助. (2017YFC0506200)

生态学杂志

OA北大核心CSTPCD

1000-4890

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