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An individual-based model simulating goat response variability and long-term herd performance

Published online by Cambridge University Press:  16 June 2010

L. Puillet*
Affiliation:
INRA, UMR 1048 SADAPT, F-75231 Paris, France AgroParisTech, UMR 1048 SADAPT, F-75231 Paris, France INRA, UMR 791 MoSAR, F-75231 Paris, France AgroParisTech, UMR 791 MoSAR, F-75231 Paris, France
O. Martin
Affiliation:
INRA, UMR 791 MoSAR, F-75231 Paris, France AgroParisTech, UMR 791 MoSAR, F-75231 Paris, France
D. Sauvant
Affiliation:
INRA, UMR 791 MoSAR, F-75231 Paris, France AgroParisTech, UMR 791 MoSAR, F-75231 Paris, France
M. Tichit
Affiliation:
INRA, UMR 1048 SADAPT, F-75231 Paris, France AgroParisTech, UMR 1048 SADAPT, F-75231 Paris, France
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Abstract

Finding ways of increasing the efficiency of production systems is a key issue of sustainability. System efficiency is based on long-term individual efficiency, which is highly variable and management driven. To study the effects of management on herd and individual efficiency, we developed the model simulation of goat herd management (SIGHMA). This dynamic model is individual-based and represents the interactions between technical operations (relative to replacement, reproduction and feeding) and individual biological processes (performance dynamics based on energy partitioning and production potential). It simulates outputs at both herd and goat levels over 20 years. A farmer’s production project (i.e. a targeted milk production pattern) is represented by configuring the herd into female groups reflecting the organisation of kidding periods. Each group is managed by discrete events applying decision rules to simulate the carrying out of technical operations. The animal level is represented by a set of individual goat models. Each model simulates a goat’s biological dynamics through its productive life. It integrates the variability of biological responses driven by genetic scaling parameters (milk production potential and mature body weight), by the regulations of energy partitioning among physiological functions and by responses to diet energy defined by the feeding strategy. A sensitivity analysis shows that herd efficiency was mainly affected by feeding management and to a lesser extent by the herd production potential. The same effects were observed on herd milk feed costs with an even lower difference between production potential and feeding management. SIGHMA was used in a virtual experiment to observe the effects of feeding strategies on herd and individual performances. We found that overfeeding led to a herd production increase and a feed cost decrease. However, this apparent increase in efficiency at the herd level (as feed cost decreased) was related to goats that had directed energy towards body reserves. Such a process is not efficient as far as feed conversion is concerned. The underfeeding strategy led to production decrease and to a slight feed cost decrease. This apparent increase in efficiency was related to goats that had mobilised their reserves to sustain production. Our results highlight the interest of using SIGHMA to study the underlying processes affecting herd performance and analyse the role of individual variability regarding herd response to management. It opens perspectives to further quantify the link between individual variability, herd performance and management and thus further our understanding of livestock farming systems.

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Copyright
Copyright © The Animal Consortium 2010

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