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首页> 外文期刊>Livestock Science >Predicting pen fouling in fattening pigs from pig position
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Predicting pen fouling in fattening pigs from pig position

机译:预测猪位置肥育猪的笔污染

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Pen fouling is an undesired behaviour of fattening pigs, where they excrete in their designated resting area and rest in their designated excretion area. This causes problems with health due to poor hygiene, and requires laborious efforts for the fanner to clean the pen and correct the behaviour. A review of the existing literature suggests that changes in lying behaviour may precede an event of fouling. Furthermore, observing the lying patterns of fattening pigs in the morning before entering the fattening unit, as a means of assessing the risk of imminent pen fouling, is known to be a common strategy among Danish farmers. In this study, we show that machine learning methods, specifically random forests and artificial neural networks, can be made to predict pen fouling in the days leading up to the event, based on the position of the pigs within the pen at specific times of the day. We could not show any added information value from distinguishing between standing/lying behaviour within a given area of the pen, as opposed to simply knowing the pigs' position. We found that the most information value, relevant for training a method for predicting fouling events, are located in the last 2-3 days before the event occurs and when the pigs are observed during the morning hours before any disturbance. Lastly, we demonstrate a Bayesian ensemble strategy for combining multiple different prediction models, which yield higher performances than the best performing models do on their own.
机译:笔污垢是一种不希望的育肥行为,在他们指定的休息区排出并在其指定的排泄区域排出。由于卫生较差,这会导致健康状况存在问题,并且需要对粉丝的努力清洁笔并纠正行为。对现有文献的审查表明,撒谎行为的变化可能在污垢事件之前。此外,众所周知,在进入育肥单元之前,在进入育肥单元之前观察肥育猪的躺着图案,作为评估即将造币污染的风险的手段,是丹麦农民中的共同战略。在这项研究中,我们表明机器学习方法,特别是随机森林和人工神经网络,可以在通往事件的日子里预测钢笔污垢,基于笔内的猪在特定时间日。我们无法在钢笔的给定区域内区分任何额外的信息价值,而不是简单地了解猪的位置。我们发现,对于培训用于预测结垢事件的方法的最多信息价值,位于事件发生前的过去2-3天内,并且在任何干扰前的早晨观察到猪时。最后,我们展示了一个贝叶斯集合策略,用于组合多个不同的预测模型,其表现较高的表现比自己的最佳模型。

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