Literature DB >> 33480058

Estimating individual-level plant traits at scale.

Sergio Marconi1, Sarah J Graves2,3, Ben G Weinstein4, Stephanie Bohlman2, Ethan P White4.   

Abstract

Functional ecology has increasingly focused on describing ecological communities based on their traits (measurable features affecting individuals' fitness and performance). Analyzing trait distributions within and among forests could significantly improve understanding of community composition and ecosystem function. Historically, data on trait distributions are generated by (1) collecting a small number of leaves from a small number of trees, which suffers from limited sampling but produces information at the fundamental ecological unit (the individual), or (2) using remote-sensing images to infer traits, producing information continuously across large regions, but as plots (containing multiple trees of different species) or pixels, not individuals. Remote-sensing methods that identify individual trees and estimate their traits would provide the benefits of both approaches, producing continuous large-scale data linked to biological individuals. We used data from the National Ecological Observatory Network (NEON) to develop a method to scale up functional traits from 160 trees to the millions of trees within the spatial extent of two NEON sites. The pipeline consists of three stages: (1) image segmentation, to identify individual trees and estimate structural traits; (2) an ensemble of models to infer leaf mass area (LMA), nitrogen, carbon, and phosphorus content using hyperspectral signatures, and DBH from allometry; and (3) predictions for segmented crowns for the full remote-sensing footprint at the NEON sites. The R2 values on held-out test data ranged from 0.41 to 0.75 on held-out test data. The ensemble approach performed better than single partial least-squares models. Carbon performed poorly compared to other traits (R2 of 0.41). The crown segmentation step contributed the most uncertainty in the pipeline, due to over-segmentation. The pipeline produced good estimates of DBH (R2 of 0.62 on held-out data). Trait predictions for crowns performed significantly better than comparable predictions on pixels, resulting in improvement of R2 on test data of between 0.07 and 0.26. We used the pipeline to produce individual-level trait data for ~5 million individual crowns, covering a total extent of ~360 km2 . This large data set allows testing ecological questions on landscape scales, revealing that foliar traits are correlated with structural traits and environmental conditions.
© 2021 The Authors. Ecological Applications published by Wiley Periodicals LLC on behalf of Ecological Society of America.

Entities:  

Keywords:  LiDAR; NEON; foliar traits; hyperspectral response; individual tree crown; plant traits; structural traits

Mesh:

Year:  2021        PMID: 33480058     DOI: 10.1002/eap.2300

Source DB:  PubMed          Journal:  Ecol Appl        ISSN: 1051-0761            Impact factor:   4.657


  2 in total

1.  On the modelling of tropical tree growth: the importance of intra-specific trait variation, non-linear functions and phenotypic integration.

Authors:  Jie Yang; Xiaoyang Song; Min Cao; Xiaobao Deng; Wenfu Zhang; Xiaofei Yang; Nathan G Swenson
Journal:  Ann Bot       Date:  2021-03-24       Impact factor: 4.357

2.  Tallo: A global tree allometry and crown architecture database.

Authors:  Tommaso Jucker; Fabian Jörg Fischer; Jérôme Chave; David A Coomes; John Caspersen; Arshad Ali; Grace Jopaul Loubota Panzou; Ted R Feldpausch; Daniel Falster; Vladimir A Usoltsev; Stephen Adu-Bredu; Luciana F Alves; Mohammad Aminpour; Ilondea B Angoboy; Niels P R Anten; Cécile Antin; Yousef Askari; Rodrigo Muñoz; Narayanan Ayyappan; Patricia Balvanera; Lindsay Banin; Nicolas Barbier; John J Battles; Hans Beeckman; Yannick E Bocko; Ben Bond-Lamberty; Frans Bongers; Samuel Bowers; Thomas Brade; Michiel van Breugel; Arthur Chantrain; Rajeev Chaudhary; Jingyu Dai; Michele Dalponte; Kangbéni Dimobe; Jean-Christophe Domec; Jean-Louis Doucet; Remko A Duursma; Moisés Enríquez; Karin Y van Ewijk; William Farfán-Rios; Adeline Fayolle; Eric Forni; David I Forrester; Hammad Gilani; John L Godlee; Sylvie Gourlet-Fleury; Matthias Haeni; Jefferson S Hall; Jie-Kun He; Andreas Hemp; José L Hernández-Stefanoni; Steven I Higgins; Robert J Holdaway; Kiramat Hussain; Lindsay B Hutley; Tomoaki Ichie; Yoshiko Iida; Hai-Sheng Jiang; Puspa Raj Joshi; Hasan Kaboli; Maryam Kazempour Larsary; Tanaka Kenzo; Brian D Kloeppel; Takashi Kohyama; Suwash Kunwar; Shem Kuyah; Jakub Kvasnica; Siliang Lin; Emily R Lines; Hongyan Liu; Craig Lorimer; Jean-Joël Loumeto; Yadvinder Malhi; Peter L Marshall; Eskil Mattsson; Radim Matula; Jorge A Meave; Sylvanus Mensah; Xiangcheng Mi; Stéphane Momo; Glenn R Moncrieff; Francisco Mora; Sarath P Nissanka; Kevin L O'Hara; Steven Pearce; Raphaël Pelissier; Pablo L Peri; Pierre Ploton; Lourens Poorter; Mohsen Javanmiri Pour; Hassan Pourbabaei; Juan Manuel Dupuy-Rada; Sabina C Ribeiro; Casey Ryan; Anvar Sanaei; Jennifer Sanger; Michael Schlund; Giacomo Sellan; Alexander Shenkin; Bonaventure Sonké; Frank J Sterck; Martin Svátek; Kentaro Takagi; Anna T Trugman; Farman Ullah; Matthew A Vadeboncoeur; Ahmad Valipour; Mark C Vanderwel; Alejandra G Vovides; Weiwei Wang; Li-Qiu Wang; Christian Wirth; Murray Woods; Wenhua Xiang; Fabiano de Aquino Ximenes; Yaozhan Xu; Toshihiro Yamada; Miguel A Zavala
Journal:  Glob Chang Biol       Date:  2022-06-28       Impact factor: 13.211

  2 in total

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