2021
DOI
bib
abs
Seasonality in aerodynamic resistance across a range of North American ecosystems
Adam M. Young,
M. A. Friedl,
Bijan Seyednasrollah,
Eric Beamesderfer,
Carlos M. Carrillo,
Xiaolu Li,
Minkyu Moon,
M. Altaf Arain,
Dennis Baldocchi,
Peter D. Blanken,
Gil Bohrer,
Sean P. Burns,
Housen Chu,
Ankur R. Desai,
Timothy J. Griffis,
David Y. Hollinger,
M. E. Litvak,
Kim Novick,
Russell L. Scott,
Andrew E. Suyker,
Joseph Verfaillie,
Jeffrey D. Wood,
Andrew D. Richardson,
Adam M. Young,
M. A. Friedl,
Bijan Seyednasrollah,
Eric Beamesderfer,
Carlos M. Carrillo,
Xiaolu Li,
Minkyu Moon,
M. Altaf Arain,
Dennis Baldocchi,
Peter D. Blanken,
Gil Bohrer,
Sean P. Burns,
Housen Chu,
Ankur R. Desai,
Timothy J. Griffis,
David Y. Hollinger,
M. E. Litvak,
Kim Novick,
Russell L. Scott,
Andrew E. Suyker,
Joseph Verfaillie,
Jeffrey D. Wood,
Andrew D. Richardson
Agricultural and Forest Meteorology, Volume 310
• Phenological controls over aerodynamic resistance ( R ah ) were investigated. • R ah exhibits significant seasonal variability across a wide range of sites. • These shifts in R ah were caused by phenology in some ecosystems. • Accounting for variation in kB −1 is important for improving predictions of H . Surface roughness – a key control on land-atmosphere exchanges of heat and momentum – differs between dormant and growing seasons. However, how surface roughness shifts seasonally at fine time scales (e.g., days) in response to changing canopy conditions is not well understood. This study: (1) explores how aerodynamic resistance changes seasonally; (2) investigates what drives these seasonal shifts, including the role of vegetation phenology; and (3) quantifies the importance of including seasonal changes of aerodynamic resistance in “big leaf” models of sensible heat flux ( H ). We evaluated aerodynamic resistance and surface roughness lengths for momentum ( z 0m ) and heat ( z 0h ) using the kB −1 parameter (ln( z 0m / z 0h )). We used AmeriFlux data to obtain surface-roughness estimates, and PhenoCam greenness data for phenology. This analysis included 23 sites and ∼190 site years from deciduous broadleaf, evergreen needleleaf, woody savanna, cropland, grassland, and shrubland plant-functional types (PFTs). Results indicated clear seasonal patterns in aerodynamic resistance to sensible heat transfer ( R ah ). This seasonality tracked PhenoCam-derived start-of-season green-up transitions in PFTs displaying the most significant seasonal changes in canopy structure, with R ah decreasing near green-up transitions. Conversely, in woody savanna sites and evergreen needleleaf forests, patterns in R ah were not linked to green-up. Our findings highlight that decreases in kB −1 are an important control over R ah , explaining > 50% of seasonal variation in R ah across most sites. Decreases in kB −1 during green-up are likely caused by increasing z 0h in response to higher leaf area index. Accounting for seasonal variation in kB −1 is key for predicting H as well; assuming kB −1 to be constant resulted in significant biases that also exhibited strong seasonal patterns. Overall, we found that aerodynamic resistance can be sensitive to phenology in ecosystems having strong seasonality in leaf area, and this linkage is critical for understanding land-atmosphere interactions at seasonal time scales.
DOI
bib
abs
Seasonality in aerodynamic resistance across a range of North American ecosystems
Adam M. Young,
M. A. Friedl,
Bijan Seyednasrollah,
Eric Beamesderfer,
Carlos M. Carrillo,
Xiaolu Li,
Minkyu Moon,
M. Altaf Arain,
Dennis Baldocchi,
Peter D. Blanken,
Gil Bohrer,
Sean P. Burns,
Housen Chu,
Ankur R. Desai,
Timothy J. Griffis,
David Y. Hollinger,
M. E. Litvak,
Kim Novick,
Russell L. Scott,
Andrew E. Suyker,
Joseph Verfaillie,
Jeffrey D. Wood,
Andrew D. Richardson,
Adam M. Young,
M. A. Friedl,
Bijan Seyednasrollah,
Eric Beamesderfer,
Carlos M. Carrillo,
Xiaolu Li,
Minkyu Moon,
M. Altaf Arain,
Dennis Baldocchi,
Peter D. Blanken,
Gil Bohrer,
Sean P. Burns,
Housen Chu,
Ankur R. Desai,
Timothy J. Griffis,
David Y. Hollinger,
M. E. Litvak,
Kim Novick,
Russell L. Scott,
Andrew E. Suyker,
Joseph Verfaillie,
Jeffrey D. Wood,
Andrew D. Richardson
Agricultural and Forest Meteorology, Volume 310
• Phenological controls over aerodynamic resistance ( R ah ) were investigated. • R ah exhibits significant seasonal variability across a wide range of sites. • These shifts in R ah were caused by phenology in some ecosystems. • Accounting for variation in kB −1 is important for improving predictions of H . Surface roughness – a key control on land-atmosphere exchanges of heat and momentum – differs between dormant and growing seasons. However, how surface roughness shifts seasonally at fine time scales (e.g., days) in response to changing canopy conditions is not well understood. This study: (1) explores how aerodynamic resistance changes seasonally; (2) investigates what drives these seasonal shifts, including the role of vegetation phenology; and (3) quantifies the importance of including seasonal changes of aerodynamic resistance in “big leaf” models of sensible heat flux ( H ). We evaluated aerodynamic resistance and surface roughness lengths for momentum ( z 0m ) and heat ( z 0h ) using the kB −1 parameter (ln( z 0m / z 0h )). We used AmeriFlux data to obtain surface-roughness estimates, and PhenoCam greenness data for phenology. This analysis included 23 sites and ∼190 site years from deciduous broadleaf, evergreen needleleaf, woody savanna, cropland, grassland, and shrubland plant-functional types (PFTs). Results indicated clear seasonal patterns in aerodynamic resistance to sensible heat transfer ( R ah ). This seasonality tracked PhenoCam-derived start-of-season green-up transitions in PFTs displaying the most significant seasonal changes in canopy structure, with R ah decreasing near green-up transitions. Conversely, in woody savanna sites and evergreen needleleaf forests, patterns in R ah were not linked to green-up. Our findings highlight that decreases in kB −1 are an important control over R ah , explaining > 50% of seasonal variation in R ah across most sites. Decreases in kB −1 during green-up are likely caused by increasing z 0h in response to higher leaf area index. Accounting for seasonal variation in kB −1 is key for predicting H as well; assuming kB −1 to be constant resulted in significant biases that also exhibited strong seasonal patterns. Overall, we found that aerodynamic resistance can be sensitive to phenology in ecosystems having strong seasonality in leaf area, and this linkage is critical for understanding land-atmosphere interactions at seasonal time scales.
DOI
bib
abs
Representativeness of Eddy-Covariance flux footprints for areas surrounding AmeriFlux sites
Housen Chu,
Xiangzhong Luo,
Zutao Ouyang,
Stephen Chan,
Sigrid Dengel,
Sébastien Biraud,
Margaret Torn,
Stefan Metzger,
Jitendra Kumar,
M. Altaf Arain,
T. J. Arkebauer,
Dennis Baldocchi,
Carl J. Bernacchi,
D. P. Billesbach,
T. Andrew Black,
Peter D. Blanken,
Gil Bohrer,
Rosvel Bracho,
S. M. Brown,
N. A. Brunsell,
Jiquan Chen,
Xingyuan Chen,
Kenneth L. Clark,
Ankur R. Desai,
Tomer Duman,
David Durden,
Silvano Fares,
Inke Forbrich,
John A. Gamon,
Christopher M. Gough,
Timothy J. Griffis,
Manuel Helbig,
David Y. Hollinger,
Elyn Humphreys,
Hiroki Ikawa,
Hiroki Iwata,
Yang Ju,
John F. Knowles,
Sara Knox,
Hideki Kobayashi,
Thomas E. Kolb,
B. E. Law,
Xuhui Lee,
M. E. Litvak,
Heping Liu,
J. William Munger,
Asko Noormets,
Kim Novick,
Steven F. Oberbauer,
Walter C. Oechel,
Patricia Y. Oikawa,
S. A. Papuga,
Elise Pendall,
Prajaya Prajapati,
John H. Prueger,
W. L. Quinton,
Andrew D. Richardson,
Eric S. Russell,
Russell L. Scott,
Gregory Starr,
R. M. Staebler,
Paul C. Stoy,
Ellen Stuart‐Haëntjens,
Oliver Sonnentag,
Ryan C. Sullivan,
Andy Suyker,
Masahito Ueyama,
Rodrigo Vargas,
Jeffrey D. Wood,
Donatella Zona,
Housen Chu,
Xiangzhong Luo,
Zutao Ouyang,
Stephen Chan,
Sigrid Dengel,
Sébastien Biraud,
Margaret Torn,
Stefan Metzger,
Jitendra Kumar,
M. Altaf Arain,
T. J. Arkebauer,
Dennis Baldocchi,
Carl J. Bernacchi,
D. P. Billesbach,
T. Andrew Black,
Peter D. Blanken,
Gil Bohrer,
Rosvel Bracho,
S. M. Brown,
N. A. Brunsell,
Jiquan Chen,
Xingyuan Chen,
Kenneth L. Clark,
Ankur R. Desai,
Tomer Duman,
David Durden,
Silvano Fares,
Inke Forbrich,
John A. Gamon,
Christopher M. Gough,
Timothy J. Griffis,
Manuel Helbig,
David Y. Hollinger,
Elyn Humphreys,
Hiroki Ikawa,
Hiroki Iwata,
Yang Ju,
John F. Knowles,
Sara Knox,
Hideki Kobayashi,
Thomas E. Kolb,
B. E. Law,
Xuhui Lee,
M. E. Litvak,
Heping Liu,
J. William Munger,
Asko Noormets,
Kim Novick,
Steven F. Oberbauer,
Walter C. Oechel,
Patricia Y. Oikawa,
S. A. Papuga,
Elise Pendall,
Prajaya Prajapati,
John H. Prueger,
W. L. Quinton,
Andrew D. Richardson,
Eric S. Russell,
Russell L. Scott,
Gregory Starr,
R. M. Staebler,
Paul C. Stoy,
Ellen Stuart‐Haëntjens,
Oliver Sonnentag,
Ryan C. Sullivan,
Andy Suyker,
Masahito Ueyama,
Rodrigo Vargas,
Jeffrey D. Wood,
Donatella Zona
Agricultural and Forest Meteorology, Volume 301-302
• Large-scale eddy-covariance flux datasets need to be used with footprint-awareness • Using a fixed-extent target area across sites can bias model-data integration • Most sites do not represent the dominant land-cover type at a larger spatial extent • A representativeness index provides general guidance for site selection and data use Large datasets of greenhouse gas and energy surface-atmosphere fluxes measured with the eddy-covariance technique (e.g., FLUXNET2015, AmeriFlux BASE) are widely used to benchmark models and remote-sensing products. This study addresses one of the major challenges facing model-data integration: To what spatial extent do flux measurements taken at individual eddy-covariance sites reflect model- or satellite-based grid cells? We evaluate flux footprints—the temporally dynamic source areas that contribute to measured fluxes—and the representativeness of these footprints for target areas (e.g., within 250–3000 m radii around flux towers) that are often used in flux-data synthesis and modeling studies. We examine the land-cover composition and vegetation characteristics, represented here by the Enhanced Vegetation Index (EVI), in the flux footprints and target areas across 214 AmeriFlux sites, and evaluate potential biases as a consequence of the footprint-to-target-area mismatch. Monthly 80% footprint climatologies vary across sites and through time ranging four orders of magnitude from 10 3 to 10 7 m 2 due to the measurement heights, underlying vegetation- and ground-surface characteristics, wind directions, and turbulent state of the atmosphere. Few eddy-covariance sites are located in a truly homogeneous landscape. Thus, the common model-data integration approaches that use a fixed-extent target area across sites introduce biases on the order of 4%–20% for EVI and 6%–20% for the dominant land cover percentage. These biases are site-specific functions of measurement heights, target area extents, and land-surface characteristics. We advocate that flux datasets need to be used with footprint awareness, especially in research and applications that benchmark against models and data products with explicit spatial information. We propose a simple representativeness index based on our evaluations that can be used as a guide to identify site-periods suitable for specific applications and to provide general guidance for data use.
DOI
bib
abs
Representativeness of Eddy-Covariance flux footprints for areas surrounding AmeriFlux sites
Housen Chu,
Xiangzhong Luo,
Zutao Ouyang,
Stephen Chan,
Sigrid Dengel,
Sébastien Biraud,
Margaret Torn,
Stefan Metzger,
Jitendra Kumar,
M. Altaf Arain,
T. J. Arkebauer,
Dennis Baldocchi,
Carl J. Bernacchi,
D. P. Billesbach,
T. Andrew Black,
Peter D. Blanken,
Gil Bohrer,
Rosvel Bracho,
S. M. Brown,
N. A. Brunsell,
Jiquan Chen,
Xingyuan Chen,
Kenneth L. Clark,
Ankur R. Desai,
Tomer Duman,
David Durden,
Silvano Fares,
Inke Forbrich,
John A. Gamon,
Christopher M. Gough,
Timothy J. Griffis,
Manuel Helbig,
David Y. Hollinger,
Elyn Humphreys,
Hiroki Ikawa,
Hiroki Iwata,
Yang Ju,
John F. Knowles,
Sara Knox,
Hideki Kobayashi,
Thomas E. Kolb,
B. E. Law,
Xuhui Lee,
M. E. Litvak,
Heping Liu,
J. William Munger,
Asko Noormets,
Kim Novick,
Steven F. Oberbauer,
Walter C. Oechel,
Patricia Y. Oikawa,
S. A. Papuga,
Elise Pendall,
Prajaya Prajapati,
John H. Prueger,
W. L. Quinton,
Andrew D. Richardson,
Eric S. Russell,
Russell L. Scott,
Gregory Starr,
R. M. Staebler,
Paul C. Stoy,
Ellen Stuart‐Haëntjens,
Oliver Sonnentag,
Ryan C. Sullivan,
Andy Suyker,
Masahito Ueyama,
Rodrigo Vargas,
Jeffrey D. Wood,
Donatella Zona,
Housen Chu,
Xiangzhong Luo,
Zutao Ouyang,
Stephen Chan,
Sigrid Dengel,
Sébastien Biraud,
Margaret Torn,
Stefan Metzger,
Jitendra Kumar,
M. Altaf Arain,
T. J. Arkebauer,
Dennis Baldocchi,
Carl J. Bernacchi,
D. P. Billesbach,
T. Andrew Black,
Peter D. Blanken,
Gil Bohrer,
Rosvel Bracho,
S. M. Brown,
N. A. Brunsell,
Jiquan Chen,
Xingyuan Chen,
Kenneth L. Clark,
Ankur R. Desai,
Tomer Duman,
David Durden,
Silvano Fares,
Inke Forbrich,
John A. Gamon,
Christopher M. Gough,
Timothy J. Griffis,
Manuel Helbig,
David Y. Hollinger,
Elyn Humphreys,
Hiroki Ikawa,
Hiroki Iwata,
Yang Ju,
John F. Knowles,
Sara Knox,
Hideki Kobayashi,
Thomas E. Kolb,
B. E. Law,
Xuhui Lee,
M. E. Litvak,
Heping Liu,
J. William Munger,
Asko Noormets,
Kim Novick,
Steven F. Oberbauer,
Walter C. Oechel,
Patricia Y. Oikawa,
S. A. Papuga,
Elise Pendall,
Prajaya Prajapati,
John H. Prueger,
W. L. Quinton,
Andrew D. Richardson,
Eric S. Russell,
Russell L. Scott,
Gregory Starr,
R. M. Staebler,
Paul C. Stoy,
Ellen Stuart‐Haëntjens,
Oliver Sonnentag,
Ryan C. Sullivan,
Andy Suyker,
Masahito Ueyama,
Rodrigo Vargas,
Jeffrey D. Wood,
Donatella Zona
Agricultural and Forest Meteorology, Volume 301-302
• Large-scale eddy-covariance flux datasets need to be used with footprint-awareness • Using a fixed-extent target area across sites can bias model-data integration • Most sites do not represent the dominant land-cover type at a larger spatial extent • A representativeness index provides general guidance for site selection and data use Large datasets of greenhouse gas and energy surface-atmosphere fluxes measured with the eddy-covariance technique (e.g., FLUXNET2015, AmeriFlux BASE) are widely used to benchmark models and remote-sensing products. This study addresses one of the major challenges facing model-data integration: To what spatial extent do flux measurements taken at individual eddy-covariance sites reflect model- or satellite-based grid cells? We evaluate flux footprints—the temporally dynamic source areas that contribute to measured fluxes—and the representativeness of these footprints for target areas (e.g., within 250–3000 m radii around flux towers) that are often used in flux-data synthesis and modeling studies. We examine the land-cover composition and vegetation characteristics, represented here by the Enhanced Vegetation Index (EVI), in the flux footprints and target areas across 214 AmeriFlux sites, and evaluate potential biases as a consequence of the footprint-to-target-area mismatch. Monthly 80% footprint climatologies vary across sites and through time ranging four orders of magnitude from 10 3 to 10 7 m 2 due to the measurement heights, underlying vegetation- and ground-surface characteristics, wind directions, and turbulent state of the atmosphere. Few eddy-covariance sites are located in a truly homogeneous landscape. Thus, the common model-data integration approaches that use a fixed-extent target area across sites introduce biases on the order of 4%–20% for EVI and 6%–20% for the dominant land cover percentage. These biases are site-specific functions of measurement heights, target area extents, and land-surface characteristics. We advocate that flux datasets need to be used with footprint awareness, especially in research and applications that benchmark against models and data products with explicit spatial information. We propose a simple representativeness index based on our evaluations that can be used as a guide to identify site-periods suitable for specific applications and to provide general guidance for data use.