Animals (Jul 2023)

Field Implementation of Forecasting Models for Predicting Nursery Mortality in a Midwestern US Swine Production System

  • Edison S. Magalhaes,
  • Danyang Zhang,
  • Chong Wang,
  • Pete Thomas,
  • Cesar A. A. Moura,
  • Derald J. Holtkamp,
  • Giovani Trevisan,
  • Christopher Rademacher,
  • Gustavo S. Silva,
  • Daniel C. L. Linhares

DOI
https://doi.org/10.3390/ani13152412
Journal volume & issue
Vol. 13, no. 15
p. 2412

Abstract

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The performance of five forecasting models was investigated for predicting nursery mortality using the master table built for 3242 groups of pigs (~13 million animals) and 42 variables, which concerned the pre-weaning phase of production and conditions at placement in growing sites. After training and testing each model’s performance through cross-validation, the model with the best overall prediction results was the Support Vector Machine model in terms of Root Mean Squared Error (RMSE = 0.406), Mean Absolute Error (MAE = 0.284), and Coefficient of Determination (R2 = 0.731). Subsequently, the forecasting performance of the SVM model was tested on a new dataset containing 72 new groups, simulating ongoing and near real-time forecasting analysis. Despite a decrease in R2 values on the new dataset (R2 = 0.554), the model demonstrated high accuracy (77.78%) for predicting groups with high (>5%) or low (<5%) nursery mortality. This study demonstrated the capability of forecasting models to predict the nursery mortality of commercial groups of pigs using pre-weaning information and stocking condition variables collected post-placement in nursery sites.

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