Evaluation of the GrazeIn model of grass dry-matter intake and milk production prediction for dairy cows in temperate grass-based production systems. 1-Sward characteristics and grazing management factors

被引:21
作者
O'Neill, B. F. [1 ,2 ]
Lewis, E. [1 ]
O'Donovan, M. [1 ]
Shalloo, L. [1 ]
Mulligan, F. J. [3 ]
Boland, T. M. [2 ]
Delagarde, R. [4 ]
机构
[1] TEAGASC, Anim & Grassland Res & Innovat Ctr, Fermoy, Cork, Ireland
[2] Natl Univ Ireland Univ Coll Dublin, Sch Agr & Food Sci, Dublin 4, Ireland
[3] Natl Univ Ireland Univ Coll Dublin, Sch Vet Med, Dublin 4, Ireland
[4] INRA, UMR1080, INRA Agrocampus Ouest, St Gilles, France
关键词
dairy cow; dry-matter intake; milk yield; model; grazing; PREGRAZING HERBAGE MASS; VOLUNTARY INTAKE; CONCENTRATE SUPPLEMENTATION; PRODUCTION PERFORMANCE; INTAKE CAPACITY; GENETIC MERIT; STOCKING RATE; FOOD-INTAKE; FEED-INTAKE; PASTURE;
D O I
10.1111/gfs.12023
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
This study evaluated the prediction accuracy of grass dry-matter intake (GDMI) and milk yield predicted by the model GrazeIn using a database representing 522 grazing herds. The GrazeIn input variables under consideration were fill value (FV), grass energy content [Unite Fourragere Lait (UFL)], grass protein value [true protein absorbable in the small intestine when rumen fermen energy is limiting microbial protein synthesis in the rumen (PDIE)], pre-grazing herbage mass (PGHM), daily herbage allowance (DHA) and concentrate supplementation. GrazeIn was evaluated using the relative prediction error (RPE). The mean actual GDMI and milk yields of grazing herds in the database ranged from 9<bold>9</bold>-22<bold>0</bold>kg DM per cowd(-1) and 8<bold>9</bold>-41<bold>8</bold>kg per cowd(-1), respectively. The accuracy of predictions for the total database estimated by RPE was 12<bold>2</bold> and 12<bold>8</bold>% for GDMI and milk yield, respectively. The mean bias (predicted minus actual) for GDMI was -0<bold>3</bold>kg DM per cowd(-1) and for milk yield was +0<bold>9</bold>kg per cowd(-1). GrazeIn predicted GDMI with a level of error <13<bold>4</bold>% RPE for spring, summer and autumn. GrazeIn predicted milk yield in autumn (RPE=17<bold>6</bold>%) with a larger error in comparison with spring (RPE=10<bold>4</bold>%) and summer (RPE=11<bold>0</bold>%). Future studies should focus on the adaptation of GrazeIn to correct and improve the prediction of milk yield in autumn.
引用
收藏
页码:504 / 523
页数:20
相关论文
共 54 条
[1]  
[Anonymous], 1989, RUMINANT NUTR RECOMM
[2]  
Bastiman B., 1975, EXPT HUSBANDRY, V28, P7
[3]  
Baudracco J., 2010, Proceedings of the New Zealand Society of Animal Production, V70, P80
[4]  
Bibby J., 1977, Prediction and Improved Estimation in Linear Models
[5]   The performance of Holstein Friesian dairy cows of high and medium genetic merit for milk production on grass-based feeding systems [J].
Buckley, F ;
Dillon, P ;
Crosse, S ;
Flynn, F ;
Rath, M .
LIVESTOCK PRODUCTION SCIENCE, 2000, 64 (2-3) :107-119
[6]   The relationship between milk production potential and herbage intake of grazing dairy cows [J].
Butler, ST ;
Stakelum, GK ;
Murphy, JJ ;
Delaby, L ;
Rath, M ;
O'Mara, FP .
ANIMAL SCIENCE, 2003, 77 :343-354
[7]   THE PREDICTION OF VOLUNTARY INTAKE OF GRAZING DAIRY-COWS [J].
CAIRD, L ;
HOLMES, W .
JOURNAL OF AGRICULTURAL SCIENCE, 1986, 107 :43-54
[8]   Increasing milk solids production across lactation through genetic selection and intensive pasture-based feed system [J].
Coleman, J. ;
Pierce, K. M. ;
Berry, D. P. ;
Brennan, A. ;
Horan, B. .
JOURNAL OF DAIRY SCIENCE, 2010, 93 (09) :4302-4317
[9]   Sward characteristics, grass dry matter intake and milk production performance are affected by pre-grazing herbage mass and pasture allowance [J].
Curran, J. ;
Delaby, L. ;
Kennedy, E. ;
Murphy, J. P. ;
Boland, T. M. ;
O'Donovan, M. .
LIVESTOCK SCIENCE, 2010, 127 (2-3) :144-154
[10]  
Delagarde R., 2005, Utilisation of grazed grass in temperate animal systems. Proceedings of a satellite workshop of the XXth International Grassland Congress, Cork, Ireland, July 2005, P89