Data_Sheet_1_Trait-Based Climate Change Predictions of Vegetation Sensitivity and Distribution in China.docx

Dynamic global vegetation models (DGVMs) suffer insufficiencies in tracking biochemical cycles and ecosystem fluxes. One important reason for these insufficiencies is that DGVMs use fixed parameters (mostly traits) to distinguish attributes and functions of plant functional types (PFTs); however, th...

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Main Authors: Yanzheng Yang, Jun Zhao, Pengxiang Zhao, Hui Wang, Boheng Wang, Shaofeng Su, Mingxu Li, Liming Wang, Qiuan Zhu, Zhiyong Pang, Changhui Peng
Format: Dataset
Language:unknown
Published: 2019
Subjects:
Online Access:https://doi.org/10.3389/fpls.2019.00908.s001
https://figshare.com/articles/Data_Sheet_1_Trait-Based_Climate_Change_Predictions_of_Vegetation_Sensitivity_and_Distribution_in_China_docx/8864393
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author Yanzheng Yang
Jun Zhao
Pengxiang Zhao
Hui Wang
Boheng Wang
Shaofeng Su
Mingxu Li
Liming Wang
Qiuan Zhu
Zhiyong Pang
Changhui Peng
author_facet Yanzheng Yang
Jun Zhao
Pengxiang Zhao
Hui Wang
Boheng Wang
Shaofeng Su
Mingxu Li
Liming Wang
Qiuan Zhu
Zhiyong Pang
Changhui Peng
author_sort Yanzheng Yang
collection Frontiers: Figshare
description Dynamic global vegetation models (DGVMs) suffer insufficiencies in tracking biochemical cycles and ecosystem fluxes. One important reason for these insufficiencies is that DGVMs use fixed parameters (mostly traits) to distinguish attributes and functions of plant functional types (PFTs); however, these traits vary under different climatic conditions. Therefore, it is urgent to quantify trait covariations, including those among specific leaf area (SLA), area-based leaf nitrogen (N area ), and leaf area index (LAI) (in 580 species across 218 sites in this study), and explore new classification methods that can be applied to model vegetation dynamics under future climate change scenarios. We use a redundancy analysis (RDA) to derive trait–climate relationships and employ a Gaussian mixture model (GMM) to project vegetation distributions under different climate scenarios. The results show that (1) the three climatic variables, mean annual temperature (MAT), mean annual precipitation (MAP), and monthly photosynthetically active radiation (mPAR) could capture 65% of the covariations of three functional traits; (2) tropical, subtropical and temperate forest complexes expand while boreal forest, temperate steppe, temperate scrub and tundra shrink under future climate change scenarios; and (3) the GMM classification based on trait covariations should be a powerful candidate for building new generation of DGVM, especially predicting the response of vegetation to future climate changes. This study provides a promising route toward developing reliable, robust and realistic vegetation models and can address a series of limitations in current models.
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spelling ftfrontimediafig:oai:figshare.com:article/8864393 2025-01-17T01:12:26+00:00 Data_Sheet_1_Trait-Based Climate Change Predictions of Vegetation Sensitivity and Distribution in China.docx Yanzheng Yang Jun Zhao Pengxiang Zhao Hui Wang Boheng Wang Shaofeng Su Mingxu Li Liming Wang Qiuan Zhu Zhiyong Pang Changhui Peng 2019-07-12T13:23:23Z https://doi.org/10.3389/fpls.2019.00908.s001 https://figshare.com/articles/Data_Sheet_1_Trait-Based_Climate_Change_Predictions_of_Vegetation_Sensitivity_and_Distribution_in_China_docx/8864393 unknown doi:10.3389/fpls.2019.00908.s001 https://figshare.com/articles/Data_Sheet_1_Trait-Based_Climate_Change_Predictions_of_Vegetation_Sensitivity_and_Distribution_in_China_docx/8864393 CC BY 4.0 CC-BY Botany Plant Biology Plant Systematics and Taxonomy Plant Cell and Molecular Biology Plant Developmental and Reproductive Biology Plant Pathology Plant Physiology Plant Biology not elsewhere classified trait covariations trait–climate relationships Gaussian mixture model vegetation modeling vegetation sensitivity Dataset 2019 ftfrontimediafig https://doi.org/10.3389/fpls.2019.00908.s001 2019-07-17T23:04:21Z Dynamic global vegetation models (DGVMs) suffer insufficiencies in tracking biochemical cycles and ecosystem fluxes. One important reason for these insufficiencies is that DGVMs use fixed parameters (mostly traits) to distinguish attributes and functions of plant functional types (PFTs); however, these traits vary under different climatic conditions. Therefore, it is urgent to quantify trait covariations, including those among specific leaf area (SLA), area-based leaf nitrogen (N area ), and leaf area index (LAI) (in 580 species across 218 sites in this study), and explore new classification methods that can be applied to model vegetation dynamics under future climate change scenarios. We use a redundancy analysis (RDA) to derive trait–climate relationships and employ a Gaussian mixture model (GMM) to project vegetation distributions under different climate scenarios. The results show that (1) the three climatic variables, mean annual temperature (MAT), mean annual precipitation (MAP), and monthly photosynthetically active radiation (mPAR) could capture 65% of the covariations of three functional traits; (2) tropical, subtropical and temperate forest complexes expand while boreal forest, temperate steppe, temperate scrub and tundra shrink under future climate change scenarios; and (3) the GMM classification based on trait covariations should be a powerful candidate for building new generation of DGVM, especially predicting the response of vegetation to future climate changes. This study provides a promising route toward developing reliable, robust and realistic vegetation models and can address a series of limitations in current models. Dataset Tundra Frontiers: Figshare
spellingShingle Botany
Plant Biology
Plant Systematics and Taxonomy
Plant Cell and Molecular Biology
Plant Developmental and Reproductive Biology
Plant Pathology
Plant Physiology
Plant Biology not elsewhere classified
trait covariations
trait–climate relationships
Gaussian mixture model
vegetation modeling
vegetation sensitivity
Yanzheng Yang
Jun Zhao
Pengxiang Zhao
Hui Wang
Boheng Wang
Shaofeng Su
Mingxu Li
Liming Wang
Qiuan Zhu
Zhiyong Pang
Changhui Peng
Data_Sheet_1_Trait-Based Climate Change Predictions of Vegetation Sensitivity and Distribution in China.docx
title Data_Sheet_1_Trait-Based Climate Change Predictions of Vegetation Sensitivity and Distribution in China.docx
title_full Data_Sheet_1_Trait-Based Climate Change Predictions of Vegetation Sensitivity and Distribution in China.docx
title_fullStr Data_Sheet_1_Trait-Based Climate Change Predictions of Vegetation Sensitivity and Distribution in China.docx
title_full_unstemmed Data_Sheet_1_Trait-Based Climate Change Predictions of Vegetation Sensitivity and Distribution in China.docx
title_short Data_Sheet_1_Trait-Based Climate Change Predictions of Vegetation Sensitivity and Distribution in China.docx
title_sort data_sheet_1_trait-based climate change predictions of vegetation sensitivity and distribution in china.docx
topic Botany
Plant Biology
Plant Systematics and Taxonomy
Plant Cell and Molecular Biology
Plant Developmental and Reproductive Biology
Plant Pathology
Plant Physiology
Plant Biology not elsewhere classified
trait covariations
trait–climate relationships
Gaussian mixture model
vegetation modeling
vegetation sensitivity
topic_facet Botany
Plant Biology
Plant Systematics and Taxonomy
Plant Cell and Molecular Biology
Plant Developmental and Reproductive Biology
Plant Pathology
Plant Physiology
Plant Biology not elsewhere classified
trait covariations
trait–climate relationships
Gaussian mixture model
vegetation modeling
vegetation sensitivity
url https://doi.org/10.3389/fpls.2019.00908.s001
https://figshare.com/articles/Data_Sheet_1_Trait-Based_Climate_Change_Predictions_of_Vegetation_Sensitivity_and_Distribution_in_China_docx/8864393