ARTIFICIAL NEURAL NETWORKS FOR PREDICTING ANIMAL THERMAL COMFORT

Code: 211106746
16
9
Título

ARTIFICIAL NEURAL NETWORKS FOR PREDICTING ANIMAL THERMAL COMFORT

Autores(as):
  • Pedro Hurtado De Mendoza Borges

    Borges, Pedro Hurtado de Mendoza

  • Zaíra Morais dos Santos Hurtado de Mendoza

    Mendoza, Zaíra Morais dos Santos Hurtado de

  • Pedro Hurtado de Mendoza Morais

    Morais, Pedro Hurtado de Mendoza

  • Ronei Lopes dos Santos

    Santos, Ronei Lopes dos

DOI
10.37885/211106746
Publicado em

29/12/2021

Páginas

28-47

Capítulo

2

Resumo

The objective of this study was to develop artificial neural networks (ANNs) for predicting animal thermal comfort based on temperature and relative humidity of the air for each day of the year. The data on temperature and relative humidity for a 25-year historical series collected at the Padre Ricardo Remetter Conventional Meteorological Station, located in the city of Santo Antônio de Leverger - Mato Grosso (Brazil), were retrieved from the website of the National Institute of Meteorology. According to the day of the year, the temperature and humidity index was determined as a function of the climatic variables. Therefore, the day of the year was the input variable of the neural networks, and the temperature and humidity index (THI) was the output variable. The number of layers and neurons used for establishing different architectures was variable. Data were adjusted on the basis of mean square errors, performance and efficiency indexes, and normality tests. The values estimated by the networks and those obtained from the historical series did not differ significantly. The networks with the best performance were selected for graphical analysis of residuals. The ANNs developed in this study predicted animal thermal comfort with adequate reliability and precision.

Palavras-chave

Time series, Artificial intelligence, Comfort index.

Autor(a) Correspondente
Licença

Este capítulo está licenciado com uma Licença Creative Commons Atribuição-NãoComercial-SemDerivações 4.0 Internacional.

Licença Creative Commons

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