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Prediction of enteric methane emissions by sheep using an intercontinental database

Authors :
Belanche, Alejandro
Hristov, Alexander N.
van Lingen, Henk J.
Denman, Stuart E.
Kebreab, Ermias
Schwarm, Angela
Kreuzer, Michael
Niu, Mutian
Eugène, Maguy
Niderkorn, Vincent
Martin, Cécile
Archimède, Harry
McGee, Mark
Reynolds, Christopher K.
Crompton, Les A.
Bayat, Ali Reza
Yu, Zhongtang
Bannink, André
Dijkstra, Jan
Chaves, Alex V.
Clark, Harry
Muetzel, Stefan
Lind, Vibeke
Moorby, Jon M.
Rooke, John A.
Aubry, Aurélie
Antezana, Walter
Wang, Min
Hegarty, Roger
Hutton Oddy, V.
Hill, Julian
Vercoe, Philip E.
Savian, Jean Víctor
Abdalla, Adibe Luiz
Soltan, Yosra A.
Gomes Monteiro, Alda Lúcia
Ku-Vera, Juan Carlos
Jaurena, Gustavo
Gómez-Bravo, Carlos A.
Mayorga, Olga L.
Congio, Guilhermo F.S.
Yáñez-Ruiz, David R.
Belanche, Alejandro
Hristov, Alexander N.
van Lingen, Henk J.
Denman, Stuart E.
Kebreab, Ermias
Schwarm, Angela
Kreuzer, Michael
Niu, Mutian
Eugène, Maguy
Niderkorn, Vincent
Martin, Cécile
Archimède, Harry
McGee, Mark
Reynolds, Christopher K.
Crompton, Les A.
Bayat, Ali Reza
Yu, Zhongtang
Bannink, André
Dijkstra, Jan
Chaves, Alex V.
Clark, Harry
Muetzel, Stefan
Lind, Vibeke
Moorby, Jon M.
Rooke, John A.
Aubry, Aurélie
Antezana, Walter
Wang, Min
Hegarty, Roger
Hutton Oddy, V.
Hill, Julian
Vercoe, Philip E.
Savian, Jean Víctor
Abdalla, Adibe Luiz
Soltan, Yosra A.
Gomes Monteiro, Alda Lúcia
Ku-Vera, Juan Carlos
Jaurena, Gustavo
Gómez-Bravo, Carlos A.
Mayorga, Olga L.
Congio, Guilhermo F.S.
Yáñez-Ruiz, David R.
Source :
ISSN: 0959-6526
Publication Year :
2023

Abstract

Enteric methane (CH4) emissions from sheep contribute to global greenhouse gas emissions from livestock. However, as already available for dairy and beef cattle, empirical models are needed to predict CH4 emissions from sheep for accounting purposes. The objectives of this study were to: 1) collate an intercontinental database of enteric CH4 emissions from individual sheep; 2) identify the key variables for predicting enteric sheep CH4 absolute production (g/d per animal) and yield [g/kg dry matter intake (DMI)] and their respective relationships; and 3) develop and cross-validate global equations as well as the potential need for age-, diet-, or climatic region-specific equations. The refined intercontinental database included 2,135 individual animal data from 13 countries. Linear CH4 prediction models were developed by incrementally adding variables. A universal CH4 production equation using only DMI led to a root mean square prediction error (RMSPE, % of observed mean) of 25.4% and an RMSPE-standard deviation ratio (RSR) of 0.69. Universal equations that, in addition to DMI, also included body weight (DMI + BW), and organic matter digestibility (DMI + OMD + BW) improved the prediction performance further (RSR, 0.62 and 0.60), whereas diet composition variables had negligible effects. These universal equations had lower prediction error than the extant IPCC 2019 equations. Developing age-specific models for adult sheep (>1-year-old) including DMI alone (RSR = 0.66) or in combination with rumen propionate molar proportion (for research of more refined purposes) substantially improved prediction performance (RSR = 0.57) on a smaller dataset. On the contrary, for young sheep (<1-year-old), the universal models could be applied, instead of age-specific models, if DMI and BW were included. Universal models showed similar prediction performances to the diet- and region-specific models. However, optimal prediction equations led to different regression coefficients (i.e.

Details

Database :
OAIster
Journal :
ISSN: 0959-6526
Notes :
application/pdf, Journal of Cleaner Production 384 (2023), ISSN: 0959-6526, ISSN: 0959-6526, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1356878746
Document Type :
Electronic Resource