Quantile regression forests-based modeling and environmental indicators for decision support in broiler farming
Autor: | Basilio Sierra, Inma Estevez, Alberto Diez-Olivan, Ricardo Sanz, X. Averós |
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Jazyk: | angličtina |
Rok vydání: | 2018 |
Předmět: |
0106 biological sciences
Decision support system Computer science Process (engineering) Horticulture 01 natural sciences Production manager Animal welfare Machine learning Econometrics business.industry Prediction interval Forestry 04 agricultural and veterinary sciences Random forests Broiler meat chicken Computer Science Applications Random forest Quantile regression Data processing Efficient production Agriculture 040103 agronomy & agriculture 0401 agriculture forestry and fisheries business Agronomy and Crop Science 010606 plant biology & botany |
Popis: | An efficient and sustainable animal production requires fine-tuning and control of all the parameters involved. But this is not a simple task. Animal farming is a complex biological system in which environmental parameters and management practices interact in a dynamic way. In addition, the typical non-linear response of biological processes implies that relationships across parameters that are critical to assure animal welfare and performance are difficult to determine. In this paper a novel decision support system based on environmental indicators and on weights, leg problems and mortality rates is proposed to address this issue. The data-driven modeling process is performed by a quantile regression forests approach that allows estimating growth, welfare and mortality parameters on the basis of environmental deviations from optimal farm conditions. Resulting models also provide confidence intervals able to deal with uncertainty. They are deployed in farm, offering an accessible tool for farmers, veterinarians and technical personnel. Experimental results involving 20 flocks of broiler meat chickens from different farms show the validity of the system, obtaining robust prediction intervals and high accuracy, namely over 81% for every model. The in-field use of the proposed approach will facilitate an efficient and animal welfare-friendly production management. This project was funded by the Spanish Ministry of Economy and Competitivity, General Directorate for Science and Technology, National Research Program ’Retos de la Sociedad’ Project #AGL2013-49173-C2-1-R P.I. Inma Estevez and #AGL2013-49173-C2-2-R. The authors wish to thank to AN and the farmers for facilitating access to their farms for data collection. |
Databáze: | OpenAIRE |
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