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Development and evaluation of a pastoral simulation model that predicts dairy cattle performance based on animal genotype and environmental sensitivity information

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  • Bryant, Jeremy
  • Lopez-Villalobos, Nicolas
  • Holmes, Colin
  • Pryce, Jennie
  • Rossi, Jose
  • Macdonald, Kevin

Abstract

A dairy cattle simulation model for pastoral systems that considers how dairy cow genotypes respond to different environments is described. The dairy cow is represented by five modules for maintenance, pregnancy, growth, body energy reserves and lactation with the influence of environmental factors on processes included within each module. Feed intake is predicted based on the requirements for maintenance, growth and pregnancy, and the dairy cow's potential for yields of milk, fat and protein and body fat change in a given environment. The effects of various temporary environmental factors such as cow body condition score, climate, feed quality and the stage of pregnancy are all considered when predicting yields of milk, fat and protein, energy and dry matter intake. The model was evaluated using information from a prior experimental study with 1990s Holstein-Friesian dairy cattle of North American/European or New Zealand origin managed in a pasture-based system in early to peak lactation. The model was able to predict, to a high degree of accuracy, mean values for yields of milk, fat and protein, and concentrations of fat and protein. However for individual cows, feed intake and live weight change were less reliably predicted. The major source of error was a lack of simulated variation, rather than any systematic bias. The major advance of the model is its ability to predict performance from genetic and environmental sensitivity information for particular breeds, and its ability to predict feed intake and yields of milk, fat and protein concurrently.

Suggested Citation

  • Bryant, Jeremy & Lopez-Villalobos, Nicolas & Holmes, Colin & Pryce, Jennie & Rossi, Jose & Macdonald, Kevin, 2008. "Development and evaluation of a pastoral simulation model that predicts dairy cattle performance based on animal genotype and environmental sensitivity information," Agricultural Systems, Elsevier, vol. 97(1-2), pages 13-25, April.
  • Handle: RePEc:eee:agisys:v:97:y:2008:i:1-2:p:13-25
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    References listed on IDEAS

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    1. Bryant, Jeremy & Lopez-Villalobos, Nicolas & Holmes, Colin & Pryce, Jennie, 2005. "Simulation modelling of dairy cattle performance based on knowledge of genotype, environment and genotype by environment interactions: current status," Agricultural Systems, Elsevier, vol. 86(2), pages 121-143, November.
    2. Tedeschi, Luis Orlindo, 2006. "Assessment of the adequacy of mathematical models," Agricultural Systems, Elsevier, vol. 89(2-3), pages 225-247, September.
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    3. Tanure, Soraya & Nabinger, Carlos & Becker, João Luiz, 2013. "Bioeconomic model of decision support system for farm management. Part I: Systemic conceptual modeling," Agricultural Systems, Elsevier, vol. 115(C), pages 104-116.
    4. Mulindwa, Henry & Galukande, Esau & Wurzinger, Maria & Ojango, Julie & Okeyo, Ally Mwai & Sölkner, Johann, 2011. "Stochastic simulation model of Ankole pastoral production system: Model development and evaluation," Ecological Modelling, Elsevier, vol. 222(20), pages 3692-3700.
    5. Stirling, Sofía & Fariña, Santiago & Pacheco, David & Vibart, Ronaldo, 2021. "Whole-farm modelling of grazing dairy systems in Uruguay," Agricultural Systems, Elsevier, vol. 193(C).
    6. van der Linden, Aart & Oosting, Simon J. & van de Ven, Gerrie W.J. & de Boer, Imke J.M. & van Ittersum, Martin K., 2015. "A framework for quantitative analysis of livestock systems using theoretical concepts of production ecology," Agricultural Systems, Elsevier, vol. 139(C), pages 100-109.

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