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      Predicting heat stress index in Sasso hens using automatic linear modeling and artificial neural network.

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          Abstract

          There is an increasing use of robust analytical algorithms in the prediction of heat stress. The present investigation therefore, was carried out to forecast heat stress index (HSI) in Sasso laying hens. One hundred and sixty seven records on the thermo-physiological parameters of the birds were utilized. They were reared on deep litter and battery cage systems. Data were collected when the birds were 42- and 52-week of age. The independent variables fitted were housing system, age of birds, rectal temperature (RT), pulse rate (PR), and respiratory rate (RR). The response variable was HSI. Data were analyzed using automatic linear modeling (ALM) and artificial neural network (ANN) procedures. The ALM model building method involved Forward Stepwise using the F Statistic criterion. As regards ANN, multilayer perceptron (MLP) with back-propagation network was used. The ANN network was trained with 90% of the data set while 10% were dedicated to testing for model validation. RR and PR were the two parameters of utmost importance in the prediction of HSI. However, the fractional importance of RR was higher than that of PR in both ALM (0.947 versus 0.053) and ANN (0.677 versus 0.274) models. The two models also predicted HSI effectively with high degree of accuracy [r = 0.980, R2 = 0.961, adjusted R2 = 0.961, and RMSE = 0.05168 (ALM); r = 0.983, R2 = 0.966; adjusted R2 = 0.966, and RMSE = 0.04806 (ANN)]. The present information may be exploited in the development of a heat stress chart based largely on RR. This may aid detection of thermal discomfort in a poultry house under tropical and subtropical conditions.

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          Author and article information

          Journal
          Int J Biometeorol
          International journal of biometeorology
          Springer Science and Business Media LLC
          1432-1254
          0020-7128
          Jul 2018
          : 62
          : 7
          Affiliations
          [1 ] Department of Animal Science, Faculty of Agriculture, Nasarawa State University, Keffi, Shabu-Lafia Campus, P.M.B, Lafia, Nasarawa State, 135, Nigeria. abdulmojyak@gmail.com.
          [2 ] Department of Animal Nutrition, College of Animal Science, University of Agriculture, Makurdi, Nigeria.
          [3 ] Department of Animal Science, Faculty of Agriculture, Nasarawa State University, Keffi, Shabu-Lafia Campus, P.M.B, Lafia, Nasarawa State, 135, Nigeria.
          Article
          10.1007/s00484-018-1521-7
          10.1007/s00484-018-1521-7
          29549602
          fd5eef64-924d-4241-98bd-aaabae9ebf67
          History

          Heat stress,Sasso birds,Regression,Neural network,Tropics
          Heat stress, Sasso birds, Regression, Neural network, Tropics

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