Beyond greenness: Detecting temporal changes in photosynthetic capacity with hyperspectral reflectance data.

Earth's future carbon balance and regional carbon exchange dynamics are inextricably linked to plant photosynthesis. Spectral vegetation indices are widely used as proxies for vegetation greenness and to estimate state variables such as vegetation cover and leaf area index. However, the capacit...

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Main Authors: Mallory L Barnes, David D Breshears, Darin J Law, Willem J D van Leeuwen, Russell K Monson, Alec C Fojtik, Greg A Barron-Gafford, David J P Moore
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5744967?pdf=render
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author Mallory L Barnes
David D Breshears
Darin J Law
Willem J D van Leeuwen
Russell K Monson
Alec C Fojtik
Greg A Barron-Gafford
David J P Moore
author_facet Mallory L Barnes
David D Breshears
Darin J Law
Willem J D van Leeuwen
Russell K Monson
Alec C Fojtik
Greg A Barron-Gafford
David J P Moore
author_sort Mallory L Barnes
collection DOAJ
description Earth's future carbon balance and regional carbon exchange dynamics are inextricably linked to plant photosynthesis. Spectral vegetation indices are widely used as proxies for vegetation greenness and to estimate state variables such as vegetation cover and leaf area index. However, the capacity of green leaves to take up carbon can change throughout the season. We quantify photosynthetic capacity as the maximum rate of RuBP carboxylation (Vcmax) and regeneration (Jmax). Vcmax and Jmax vary within-season due to interactions between ontogenetic processes and meteorological variables. Remote sensing-based estimation of Vcmax and Jmax using leaf reflectance spectra is promising, but temporal variation in relationships between these key determinants of photosynthetic capacity, leaf reflectance spectra, and the models that link these variables has not been evaluated. To address this issue, we studied hybrid poplar (Populus spp.) during a 7-week mid-summer period to quantify seasonally-dynamic relationships between Vcmax, Jmax, and leaf spectra. We compared in situ estimates of Vcmax and Jmax from gas exchange measurements to estimates of Vcmax and Jmax derived from partial least squares regression (PLSR) and fresh-leaf reflectance spectroscopy. PLSR models were robust despite dynamic temporal variation in Vcmax and Jmax throughout the study period. Within-population variation in plant stress modestly reduced PLSR model predictive capacity. Hyperspectral vegetation indices were well-correlated to Vcmax and Jmax, including the widely-used Normalized Difference Vegetation Index. Our results show that hyperspectral estimation of plant physiological traits using PLSR may be robust to temporal variation. Additionally, hyperspectral vegetation indices may be sufficient to detect temporal changes in photosynthetic capacity in contexts similar to those studied here. Overall, our results highlight the potential for hyperspectral remote sensing to estimate determinants of photosynthetic capacity during periods with dynamic temporal variations related to seasonality and plant stress, thereby improving estimates of plant productivity and characterization of the associated carbon budget.
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spelling doaj.art-92807b9d6a6f459c806598658f618d532022-12-21T20:03:27ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-011212e018953910.1371/journal.pone.0189539Beyond greenness: Detecting temporal changes in photosynthetic capacity with hyperspectral reflectance data.Mallory L BarnesDavid D BreshearsDarin J LawWillem J D van LeeuwenRussell K MonsonAlec C FojtikGreg A Barron-GaffordDavid J P MooreEarth's future carbon balance and regional carbon exchange dynamics are inextricably linked to plant photosynthesis. Spectral vegetation indices are widely used as proxies for vegetation greenness and to estimate state variables such as vegetation cover and leaf area index. However, the capacity of green leaves to take up carbon can change throughout the season. We quantify photosynthetic capacity as the maximum rate of RuBP carboxylation (Vcmax) and regeneration (Jmax). Vcmax and Jmax vary within-season due to interactions between ontogenetic processes and meteorological variables. Remote sensing-based estimation of Vcmax and Jmax using leaf reflectance spectra is promising, but temporal variation in relationships between these key determinants of photosynthetic capacity, leaf reflectance spectra, and the models that link these variables has not been evaluated. To address this issue, we studied hybrid poplar (Populus spp.) during a 7-week mid-summer period to quantify seasonally-dynamic relationships between Vcmax, Jmax, and leaf spectra. We compared in situ estimates of Vcmax and Jmax from gas exchange measurements to estimates of Vcmax and Jmax derived from partial least squares regression (PLSR) and fresh-leaf reflectance spectroscopy. PLSR models were robust despite dynamic temporal variation in Vcmax and Jmax throughout the study period. Within-population variation in plant stress modestly reduced PLSR model predictive capacity. Hyperspectral vegetation indices were well-correlated to Vcmax and Jmax, including the widely-used Normalized Difference Vegetation Index. Our results show that hyperspectral estimation of plant physiological traits using PLSR may be robust to temporal variation. Additionally, hyperspectral vegetation indices may be sufficient to detect temporal changes in photosynthetic capacity in contexts similar to those studied here. Overall, our results highlight the potential for hyperspectral remote sensing to estimate determinants of photosynthetic capacity during periods with dynamic temporal variations related to seasonality and plant stress, thereby improving estimates of plant productivity and characterization of the associated carbon budget.http://europepmc.org/articles/PMC5744967?pdf=render
spellingShingle Mallory L Barnes
David D Breshears
Darin J Law
Willem J D van Leeuwen
Russell K Monson
Alec C Fojtik
Greg A Barron-Gafford
David J P Moore
Beyond greenness: Detecting temporal changes in photosynthetic capacity with hyperspectral reflectance data.
PLoS ONE
title Beyond greenness: Detecting temporal changes in photosynthetic capacity with hyperspectral reflectance data.
title_full Beyond greenness: Detecting temporal changes in photosynthetic capacity with hyperspectral reflectance data.
title_fullStr Beyond greenness: Detecting temporal changes in photosynthetic capacity with hyperspectral reflectance data.
title_full_unstemmed Beyond greenness: Detecting temporal changes in photosynthetic capacity with hyperspectral reflectance data.
title_short Beyond greenness: Detecting temporal changes in photosynthetic capacity with hyperspectral reflectance data.
title_sort beyond greenness detecting temporal changes in photosynthetic capacity with hyperspectral reflectance data
url http://europepmc.org/articles/PMC5744967?pdf=render
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