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Applicability of Eddy Covariance to Estimate Methane Emissions from Grazing Cattle
Author(s) -
Coates Trevor W.,
Benvenutti Marcelo A.,
Flesch Thomas K.,
Charmley Ed,
McGinn Sean M.,
Chen Deli
Publication year - 2018
Publication title -
journal of environmental quality
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.888
H-Index - 171
eISSN - 1537-2537
pISSN - 0047-2425
DOI - 10.2134/jeq2017.02.0084
Subject(s) - grazing , eddy covariance , environmental science , pasture , atmospheric sciences , beef cattle , footprint , flux (metallurgy) , hydrology (agriculture) , zoology , ecology , ecosystem , chemistry , biology , physics , engineering , paleontology , geotechnical engineering , organic chemistry
Grazing systems represent a significant source of enteric methane (CH 4 ), but available techniques for quantifying herd scale emissions are limited. This study explores the capability of an eddy covariance (EC) measurement system for long‐term monitoring of CH 4 emissions from grazing cattle. Measurements were made in two pasture settings: in the center of a large grazing paddock, and near a watering point where animals congregated during the day. Cattle positions were monitored through time‐lapse images, and this information was used with a Lagrangian stochastic dispersion model to interpret EC fluxes and derive per‐animal CH 4 emission rates. Initial grazing paddock measurements were challenged by the rapid movement of cattle across the measurement footprint, but a feed supplement placed upwind of the measurements helped retain animals within the footprint, allowing emission estimates for 20% of the recorded daytime fluxes. At the water point, >50% of the flux measurement periods included cattle emissions. Overall, cattle emissions for the paddock site were higher (253 g CH 4 m −2 adult equivalent [AE] −1 d −1 , SD = 75) and more variable than emissions at the water point (158 g CH 4 AE −1 d −1 , SD = 34). Combining results from both sites gave a CH 4 production of 0.43 g kg −1 body weight, which is in range of other reported emissions from grazing animals. With an understanding of animal behavior to allow the most effective use of tower placement, the combination of an EC measurement platform and a Lagrangian stochastic model could have practical applications for long‐term monitoring of fluxes in grazing environments. Core Ideas Grazing systems contribute significantly to GHG emissions from agriculture. EC fluxes, images, and a footprint analysis were used to estimate cattle emissions. Daytime estimates were easier to capture while cattle congregated near a water point. With some simplifications, EC may be viable option for in situ monitoring of cattle. Atmospheric Pollutants and Trace Gases