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Dive into the research topics where Loren P. Albert is active.

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Featured researches published by Loren P. Albert.


Science | 2016

Leaf development and demography explain photosynthetic seasonality in Amazon evergreen forests.

Jin Wu; Loren P. Albert; Aline P. Lopes; Natalia Restrepo-Coupe; Matthew Hayek; Kenia T. Wiedemann; Kaiyu Guan; Scott C. Stark; Bradley Christoffersen; Neill Prohaska; Julia V. Tavares; Suelen Marostica; Hideki Kobayashi; Mauricio Lima Ferreira; Kleber Silva Campos; Rodrigo Dda Silva; Paulo M. Brando; Dennis G. Dye; Travis E. Huxman; Alfredo R. Huete; Bruce Walker Nelson; Scott R. Saleska

Leaf seasonality in Amazon forests Models assume that lower precipitation in tropical forests means less plant-available water and less photosynthesis. Direct measurements in the Amazon, however, show that production remains constant or increases in the dry season. To investigate this mismatch, Wu et al. use tower-based cameras to detect the phenology (i.e., the seasonal patterns) of leaf dynamics in tropical tree crowns in Amazonia, Brazil, and relate this to patterns of CO2 flux. Accounting for age-dependent variation among individual leaves and crowns is necessary for understanding the seasonal dynamics of photosynthesis in the entire ecosystem. Leaf phenology regulates seasonality of the carbon flux in tropical forests across a gradient of climate zones. Science, this issue p. 972 Camera recordings of the age distribution of leaves coupled with carbon dioxide flux data show the phenological basis of photosynthesis. In evergreen tropical forests, the extent, magnitude, and controls on photosynthetic seasonality are poorly resolved and inadequately represented in Earth system models. Combining camera observations with ecosystem carbon dioxide fluxes at forests across rainfall gradients in Amazônia, we show that aggregate canopy phenology, not seasonality of climate drivers, is the primary cause of photosynthetic seasonality in these forests. Specifically, synchronization of new leaf growth with dry season litterfall shifts canopy composition toward younger, more light-use efficient leaves, explaining large seasonal increases (~27%) in ecosystem photosynthesis. Coordinated leaf development and demography thus reconcile seemingly disparate observations at different scales and indicate that accounting for leaf-level phenology is critical for accurately simulating ecosystem-scale responses to climate change.


Oecologia | 2017

Climate controls over ecosystem metabolism: insights from a fifteen-year inductive artificial neural network synthesis for a subalpine forest

Loren P. Albert; Trevor F. Keenan; Sean P. Burns; Travis E. Huxman; Russell K. Monson

Eddy covariance (EC) datasets have provided insight into climate determinants of net ecosystem productivity (NEP) and evapotranspiration (ET) in natural ecosystems for decades, but most EC studies were published in serial fashion such that one study’s result became the following study’s hypothesis. This approach reflects the hypothetico-deductive process by focusing on previously derived hypotheses. A synthesis of this type of sequential inference reiterates subjective biases and may amplify past assumptions about the role, and relative importance, of controls over ecosystem metabolism. Long-term EC datasets facilitate an alternative approach to synthesis: the use of inductive data-based analyses to re-examine past deductive studies of the same ecosystem. Here we examined the seasonal climate determinants of NEP and ET by analyzing a 15-year EC time-series from a subalpine forest using an ensemble of Artificial Neural Networks (ANNs) at the half-day (daytime/nighttime) time-step. We extracted relative rankings of climate drivers and driver–response relationships directly from the dataset with minimal a priori assumptions. The ANN analysis revealed temperature variables as primary climate drivers of NEP and daytime ET, when all seasons are considered, consistent with the assembly of past studies. New relations uncovered by the ANN approach include the role of soil moisture in driving daytime NEP during the snowmelt period, the nonlinear response of NEP to temperature across seasons, and the low relevance of summer rainfall for NEP or ET at the same daytime/nighttime time step. These new results offer a more complete perspective of climate–ecosystem interactions at this site than traditional deductive analyses alone.


Molecular Ecology Resources | 2012

Quantitative visualization of biological data in Google Earth using R2G2, an R CRAN package.

Nils Arrigo; Loren P. Albert; Pascal G. Mickelson; Michael S. Barker

We briefly introduce R2G2, an R CRAN package to visualize spatially explicit biological data within the Google Earth interface. Our package combines a collection of basic graph‐editing features, including automated placement of dots, segments, polygons, images (including graphs produced with R), along with several complex three‐dimensional (3D) representations such as phylogenies, histograms and pie charts. We briefly present some example data sets and show the immediate benefits in communication gained from using the Google Earth interface to visually explore biological results. The package is distributed with detailed help pages providing examples and annotated source scripts with the hope that users will have an easy time using and further developing this package. R2G2 is distributed on http://cran.r-project.org/web/packages.


New Phytologist | 2018

Age‐dependent leaf physiology and consequences for crown‐scale carbon uptake during the dry season in an Amazon evergreen forest

Loren P. Albert; Jin Wu; Neill Prohaska; Plínio Barbosa de Camargo; Travis E. Huxman; E.S. Tribuzy; Valeriy Y. Ivanov; Rafael S. Oliveira; Sabrina Garcia; Marielle N. Smith; Raimundo Cosme de Oliveira Junior; Natalia Restrepo-Coupe; Rodrigo Marques da Silva; Scott C. Stark; Giordane Martins; Deliane V. Penha; Scott R. Saleska

Satellite and tower-based metrics of forest-scale photosynthesis generally increase with dry season progression across central Amazônia, but the underlying mechanisms lack consensus. We conducted demographic surveys of leaf age composition, and measured the age dependence of leaf physiology in broadleaf canopy trees of abundant species at a central eastern Amazon site. Using a novel leaf-to-branch scaling approach, we used these data to independently test the much-debated hypothesis - arising from satellite and tower-based observations - that leaf phenology could explain the forest-scale pattern of dry season photosynthesis. Stomatal conductance and biochemical parameters of photosynthesis were higher for recently mature leaves than for old leaves. Most branches had multiple leaf age categories simultaneously present, and the number of recently mature leaves increased as the dry season progressed because old leaves were exchanged for new leaves. These findings provide the first direct field evidence that branch-scale photosynthetic capacity increases during the dry season, with a magnitude consistent with increases in ecosystem-scale photosynthetic capacity derived from flux towers. Interactions between leaf age-dependent physiology and shifting leaf age-demographic composition are sufficient to explain the dry season photosynthetic capacity pattern at this site, and should be considered in vegetation models of tropical evergreen forests.


Global Change Biology | 2017

Do dynamic global vegetation models capture the seasonality of carbon fluxes in the Amazon basin? A data-model intercomparison

Natalia Restrepo-Coupe; Naomi M. Levine; Bradley Christoffersen; Loren P. Albert; Jin Wu; Marcos Heil Costa; David Galbraith; Hewlley Maria Acioli Imbuzeiro; Giordane Martins; Alessandro C. da Araujo; Yadvinder Malhi; Xubin Zeng; Paul R. Moorcroft; Scott R. Saleska


New Phytologist | 2017

Convergence in relationships between leaf traits, spectra and age across diverse canopy environments and two contrasting tropical forests.

Jin Wu; Cecilia Chavana‐Bryant; Neill Prohaska; Shawn P. Serbin; Kaiyu Guan; Loren P. Albert; Xi Yang; Willem J. D. van Leeuwen; Anthony John Garnello; Giordane Martins; Yadvinder Malhi; Raimundo Cosme Oliviera; Scott R. Saleska


Global Change Biology | 2017

The phenology of leaf quality and its within-canopy variation is essential for accurate modeling of photosynthesis in tropical evergreen forests.

Jin Wu; Shawn P. Serbin; Xiangtao Xu; Loren P. Albert; Min Chen; Ran Meng; Scott R. Saleska; Alistair Rogers


Ecology Letters | 2017

Variations of leaf longevity in tropical moist forests predicted by a trait‐driven carbon optimality model

Xiangtao Xu; David Medvigy; Stuart Joseph Wright; Kaoru Kitajima; Jin Wu; Loren P. Albert; Giordane A. Martins; Scott R. Saleska; Stephen W. Pacala


International Journal of Applied Earth Observation and Geoinformation | 2017

Vegetation chlorophyll estimates in the Amazon from multi-angle MODIS observations and canopy reflectance model

Thomas Hilker; Lênio Soares Galvão; Luiz E. O. C. Aragão; Yhasmin Mendes de Moura; Cibele Hummel do Amaral; Alexei Lyapustin; Jin Wu; Loren P. Albert; Marciel José Ferreira; Liana O. Anderson; Victor Alexandre Hardt Ferreira dos Santos; Neill Prohaska; E.S. Tribuzy; João Vitor Barbosa Ceron; Scott R. Saleska; Yujie Wang; José Francisco de Carvalho Gonçalves; Raimundo Cosme de Oliveira Junior; João Victor Figueiredo Cardoso Rodrigues; Maquelle Neves Garcia


Archive | 2017

Age-dependent leaf function and consequences for carbon uptake of leaves, branches, and the canopy during the dry season in an Amazon evergreen forest.

Loren P. Albert; Jin Wu; Neill Prohaska; Plinio Batista de Camargo; Travis E. Huxman; E.S. Tribuzy; Valeriy Y. Ivanov; Rosângela Maria Fernandes de Oliveira; Silvia dos Santos Garcia; Marielle N. Smith; R. C. de Oliveira Junior; Natalia Restrepo-Coupe; R. da Silva; Scott C. Stark; Gisele Marta Martins; Deliane V. Penha; Scott R. Saleska

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Jin Wu

Brookhaven National Laboratory

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Scott C. Stark

Michigan State University

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Bradley Christoffersen

Los Alamos National Laboratory

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Shawn P. Serbin

Brookhaven National Laboratory

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