Considering the challenges faced by poultry farming, this study aimed to develop a neuro-fuzzy model to predict eyeball and crest temperatures of egg-laying hens based on environmental conditions (dry bulb temperature and relative humidity). To develop the models and simulations, Matlab’s Fuzzy Toolbox® (Anfisedit) was used. Different configurations were used for each of the several neuro-fuzzy models developed. Eyeball temperature (ET) and chicken crest temperature (CCT) were simulated from the developed neuro-fuzzy models, and the obtained results were validated with the variables collected experimentally with the aid of recorder sensors and an infrared thermographic camera. The proposed neuro-fuzzy models allow the accurate estimation of ET and CCT of two lineages of egg-laying hens raised in conventional aviaries, thus helping in decision-making for better animal welfare.
CITATION STYLE
Lins, A. C. de S. S., Lourençoni, D., Júnior, T. Y., Miranda, I. B., & Santos, I. E. dos A. (2021). Neuro-fuzzy Modeling of Eyeball and Crest Temperatures in Egg-laying Hens. Engenharia Agricola, 41(1), 34–38. https://doi.org/10.1590/1809-4430-Eng.Agric.v41n1p34-38/2021
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