Literature DB >> 24039380

Poultry growth modeling using neural networks and simulated data.

H A Ahmad1.   

Abstract

Poultry growth is usually modeled with the Gompertz model or another nonlinear statistical model using average BW data over certain periods of time for a given strain of birds under specific farm management conditions. Constant selection in the genetic pool, nutritional factors, and environmental concerns, however, make such models limited in their utility because of the difficulty of fitting the growth curve across time, bird strains, and other determining variables. Moreover, generating data for every strain of birds under continually changing variables is difficult, expensive, and time consuming. The current model addresses 2 objectives: to simulate data using published literature for different growth periods, and to develop artificial intelligence models with various neural network architectures. By breaking down the actual broiler growth data into 5-d intervals, with known means and SD, normal distributions were generated for broiler growth using @Risk software. These simulated data were then used to recognize data patterns and model growth curves by using various neural networks. Three neural networks, namely, BackPropagation-3 (3 layers of back propagation, with each layer connected to the previous layer), BackPropagation-5 (5 layers of back propagation, with each layer connected to the previous layer), and Ward-5 (5 hidden slabs with various activation functions, using NeuroShell 2 Ward software) were used in this research. Once the networks were sufficiently trained, they were exposed to actual growth data to predict broiler growth over the next 50 d. The Back-Propagation-3 neural network gave the best fitting line, with predictions fitting tightly to the actual data points. The R2 was 0.998, and nearly perfect. The R2 for the BackPropagation-5 and Ward-5 neural networks were 0.967 and 0.973, respectively. To test the approach further, the same methodology was applied in guinea fowl growth prediction, resulting in R2 of 0.96 both for the general regression and Ward-5 neural networks.

Entities:  

Keywords:  growth modeling; neural network; simulation

Year:  2009        PMID: 24039380      PMCID: PMC3769544          DOI: 10.3382/japr.2008-00064

Source DB:  PubMed          Journal:  J Appl Poult Res        ISSN: 1056-6171            Impact factor:   1.178


  6 in total

1.  Comparison of three nonlinear and spline regression models for describing chicken growth curves.

Authors:  S E Aggrey
Journal:  Poult Sci       Date:  2002-12       Impact factor: 3.352

2.  Comparison of Gompertz and neural network models of broiler growth.

Authors:  W B Roush; W A Dozier; S L Branton
Journal:  Poult Sci       Date:  2006-04       Impact factor: 3.352

3.  Comparison of forecasting methodologies using egg price as a test case.

Authors:  H A Ahmad; M Mariano
Journal:  Poult Sci       Date:  2006-04       Impact factor: 3.352

4.  Modeling growth characteristics of meat-type guinea fowl.

Authors:  S N Nahashon; S E Aggrey; N A Adefope; A Amenyenu
Journal:  Poult Sci       Date:  2006-05       Impact factor: 3.352

5.  Dynamics of normal growth.

Authors:  A K Laird; S A Tyler; A D Barton
Journal:  Growth       Date:  1965-09

Review 6.  Deciphering death: a commentary on Gompertz (1825) 'On the nature of the function expressive of the law of human mortality, and on a new mode of determining the value of life contingencies'.

Authors:  Thomas B L Kirkwood
Journal:  Philos Trans R Soc Lond B Biol Sci       Date:  2015-04-19       Impact factor: 6.237

  6 in total
  3 in total

1.  Egg production forecasting: Determining efficient modeling approaches.

Authors:  H A Ahmad
Journal:  J Appl Poult Res       Date:  2011-12       Impact factor: 1.178

2.  Relationships between obesity and cardiovascular diseases in four southern states and Colorado.

Authors:  Luma Akil; H Anwar Ahmad
Journal:  J Health Care Poor Underserved       Date:  2011

3.  Salmonella infections modelling in Mississippi using neural network and geographical information system (GIS).

Authors:  Luma Akil; H Anwar Ahmad
Journal:  BMJ Open       Date:  2016-03-03       Impact factor: 2.692

  3 in total

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