4.4 Article

Predicting pen fouling in fattening pigs from pig position

Journal

LIVESTOCK SCIENCE
Volume 231, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.livsci.2019.103852

Keywords

Artificial neural network; Early warning; Pen fouling; Random forest; Fattening pigs

Funding

  1. Danish Council for Strategic Research (The PigIT Project) [11-116191]
  2. Green Development and Demonstration Programme under the Ministry of Food, Agriculture and Fisheries, Denmark (project IntactTails) [34009-13-0743]
  3. Green Development and Demonstration Programme under the Ministry of Food, Agriculture and Fisheries, Denmark (project StraWell) [34009-13-0736]

Ask authors/readers for more resources

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.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.4
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available