Livestock is increasingly treated not just as food containers, but as animals that can be susceptible to stress and diseases, affecting, therefore, the production of offspring and the performance of the farm. The breeder needs a simple and useful tool to make the best decisions for his farm, as well as being able to objectively check whether the choices and investments made have improved or worsened its performance. The amount of data is huge but often dispersive: it is therefore essential to provide the farmer with a clear and comprehensible solution, that represents an additional investment. This research proposes a genetic programming approach to predict the yearly number of weaned calves per cow of a farm, namely the measure of its performance. To investigate the efficiency of genetic programming in such a problem, a dataset composed by observations on representative Piedmontese breedings was used. The results show that the algorithm is appropriate, and can perform an implicit feature selection, highlighting important variables and leading to simple and interpretable models.

A GP approach for precision farming

Abbona F.
First
;
Giacobini M.
Last
2020-01-01

Abstract

Livestock is increasingly treated not just as food containers, but as animals that can be susceptible to stress and diseases, affecting, therefore, the production of offspring and the performance of the farm. The breeder needs a simple and useful tool to make the best decisions for his farm, as well as being able to objectively check whether the choices and investments made have improved or worsened its performance. The amount of data is huge but often dispersive: it is therefore essential to provide the farmer with a clear and comprehensible solution, that represents an additional investment. This research proposes a genetic programming approach to predict the yearly number of weaned calves per cow of a farm, namely the measure of its performance. To investigate the efficiency of genetic programming in such a problem, a dataset composed by observations on representative Piedmontese breedings was used. The results show that the algorithm is appropriate, and can perform an implicit feature selection, highlighting important variables and leading to simple and interpretable models.
2020
2020 IEEE Congress on Evolutionary Computation, CEC 2020
Glasgow, UK
2020
2020 IEEE Congress on Evolutionary Computation, CEC 2020 - Conference Proceedings
Institute of Electrical and Electronics Engineers Inc.
1
8
978-1-7281-6929-3
https://ieeexplore.ieee.org/document/9185637
Cattle Breeding; Genetic Programming; Piedmontese Bovines; Precision Livestock Farming
Abbona F.; Vanneschi L.; Bona M.; Giacobini M.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1781793
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