Literature DB >> 21844277

Response surface and neural network models for performance of broiler chicks fed diets varying in digestible protein and critical amino acids from 11 to 17 days of age.

H Ahmadi1, A Golian.   

Abstract

Central composite design (CCD; 5 levels and 4 factors), response surface methodology (RSM), and artificial neural network-genetic algorithm (ANN-GA) were used to evaluate the response of broiler chicks [ADG and feed conversion ratio (FCR)] to dietary standardized ileal digestible protein (dP), lysine (dLys), total sulfur amino acids (dTSAA), and threonine (dThr). A total of 84 battery brooder units of 5 birds each were assigned to 28 diets of CCD containing 5 levels of dP (18-22%), dLys (1.06-1.30%), dTSAA (0.81-1.01%), and dThr (0.66-0.86%) from 11 to 17 d of age. The experimental results of CCD were fitted with the quadratic and artificial neural network models. A ridge analysis (for RSM models) and a genetic algorithm (for ANN-GA models) were used to compute the optimal response for ADG and FCR. For both ADG and FCR, the goodness of fit in terms of R(2) and MS error corresponding to ANN-GA and RSM models showed a substantially higher accuracy of prediction for ANN models (ADG model: R(2) = 0.99; FCR model: R(2) = 0.97) compared with RSM models (ADG model: R(2) = 0.70; FCR model: R(2) = 0.71). The ridge maximum analysis on ADG and minimum analysis on FCR models revealed that the maximum ADG may be obtained with 18.5, 1.10, 0.89, and 0.73% dP, dLys, dTSAA, and dThr, respectively, in diet, and minimum FCR may be obtained with 19.44, 1.18, 0.90, and 0.75% of dP, dLys, dTSAA, and dThr, respectively, in diet. The optimization results of ANN-GA models showed the maximum ADG may be achieved with 19.93, 1.06, 0.90, and 0.76% of dP, dLys, dTSAA, and dThr, respectively, in diet, and minimum FCR may be achieved with 18.63, 1.26, 0.84, and 0.69% of dP, dLys, dTSAA, and dThr, respectively, in diet. The results of this study revealed that the platform of CCD (for conducting growth trials with minimum treatments), RSM model, and ANN-GA (for experimental data modeling and optimization) may be used to describe the relationship between dietary nutrient concentrations and broiler performance to achieve the optimal target.

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Year:  2011        PMID: 21844277     DOI: 10.3382/ps.2011-01367

Source DB:  PubMed          Journal:  Poult Sci        ISSN: 0032-5791            Impact factor:   3.352


  6 in total

1.  Artificial Neural Network Genetic Algorithm As Powerful Tool to Predict and Optimize In vitro Proliferation Mineral Medium for G × N15 Rootstock.

Authors:  Mohammad M Arab; Abbas Yadollahi; Abdolali Shojaeiyan; Hamed Ahmadi
Journal:  Front Plant Sci       Date:  2016-10-19       Impact factor: 5.753

2.  Mathematical Modeling and Optimizing of in Vitro Hormonal Combination for G × N15 Vegetative Rootstock Proliferation Using Artificial Neural Network-Genetic Algorithm (ANN-GA).

Authors:  Mohammad M Arab; Abbas Yadollahi; Hamed Ahmadi; Maliheh Eftekhari; Masoud Maleki
Journal:  Front Plant Sci       Date:  2017-11-01       Impact factor: 5.753

3.  Application of Artificial Neural Network and Support Vector Machines in Predicting Metabolizable Energy in Compound Feeds for Pigs.

Authors:  Hamed Ahmadi; Markus Rodehutscord
Journal:  Front Nutr       Date:  2017-06-30

4.  Development of an Artificial Neural Network as a Tool for Predicting the Targeted Phenolic Profile of Grapevine (Vitis vinifera) Foliar Wastes.

Authors:  Maliheh Eftekhari; Abbas Yadollahi; Hamed Ahmadi; Abdolali Shojaeiyan; Mahdi Ayyari
Journal:  Front Plant Sci       Date:  2018-06-19       Impact factor: 5.753

5.  Predicting In vitro Culture Medium Macro-Nutrients Composition for Pear Rootstocks Using Regression Analysis and Neural Network Models.

Authors:  S Jamshidi; A Yadollahi; H Ahmadi; M M Arab; M Eftekhari
Journal:  Front Plant Sci       Date:  2016-03-29       Impact factor: 5.753

6.  Modeling and Optimizing a New Culture Medium for In Vitro Rooting of G×N15 Prunus Rootstock using Artificial Neural Network-Genetic Algorithm.

Authors:  Mohammad Mehdi Arab; Abbas Yadollahi; Maliheh Eftekhari; Hamed Ahmadi; Mohammad Akbari; Saadat Sarikhani Khorami
Journal:  Sci Rep       Date:  2018-07-02       Impact factor: 4.379

  6 in total

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