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首页> 外文期刊>Livestock Science >Dynamic production monitoring in pig herds I: modeling and monitoring litter size at herd and sow level.
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Dynamic production monitoring in pig herds I: modeling and monitoring litter size at herd and sow level.

机译:猪群的动态生产监控I:在母猪和母猪水平上建模和监控产仔数。

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摘要

Monitoring animal production results in real time is a challenge. Existing management information systems (MIS) in pig production are typically based on static statements of selected key figures. The objective of this paper is to develop a dynamic monitoring system for litter size at herd and sow level, with weekly updates. For this purpose, a modified litter size model, based on an existing model found in the literature, is implemented using dynamic linear models (DLMs). The variance components are pre-estimated from the individual herd database using a maximum-likelihood technique in combination with an Expectation-Maximization (EM) algorithm applied on a larger dataset with observations from 15 herds. The model includes a set of parameters describing the parity-specific mean litter sizes (herd level), a time trend describing the genetic progress (herd level), and the individual sow effects (sow level). It provides reliable forecasting with known precision, on a weekly basis, for future production. Individual sow values, useful for the culling strategy, are also computed. In a second step, statistical control tools are applied. Shewhart Control Charts and V-masks are used to give warnings in case of impaired litter size results. The model is applied on data from 15 herds, each of them including a period ranging from 150 to 800 weeks. For each herd, the litter size profile, the litter size over time, the sow individual effect and sow economic value, are computed. Perspectives for further development of the model can take into account indices including conception rate, service rate, mortality rate etc. Such a model can be used as a basis for developing a new, dynamic, management tool.Digital Object Identifier http://dx.doi.org/10.1016/j.livsci.2012.07.023
机译:实时监控动物生产结果是一个挑战。养猪生产中的现有管理信息系统(MIS)通常基于所选关键指标的静态陈述。本文的目的是开发一个动态监测系统,以对畜群和母猪的产仔数进行每周更新。为此,使用动态线性模型(DLM)实现了基于文献中现有模型的改良垫料尺寸模型。使用最大似然技术结合应用于最大数据集的Expectation-Maximization(EM)算法,使用15个畜群的观测值,从个体畜群数据库中预先估算方差分量。该模型包括一组描述奇偶性平均产仔数的参数(畜群水平),描述遗传进程的时间趋势(畜群水平)以及个体母猪的影响(母猪水平)。它以每周已知的精度提供可靠的预测,以供将来生产。还计算了对选种策略有用的单个母猪值。第二步,应用统计控制工具。 Shewhart控制图和V型口罩用于在垫料尺寸结果受损的情况下发出警告。该模型适用于15个牧群的数据,每个牧群的周期从150到800周不等。对于每头牛群,都会计算出产仔数分布,产仔数随时间变化,母猪个体效应和母猪经济价值。进一步开发模型的观点可以考虑受孕率,服务率,死亡率等指标。此类模型可以用作开发新的动态管理工具的基础。数字对象标识符http:// dx .doi.org / 10.1016 / j.livsci.2012.07.023

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