Intestinal broiler microflora estimation by artificial neural network

被引:0
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作者
Hamid Reza Hemati Matin
Ali Asghar Saki
Hasan Aliarabi
Mojtaba Shadmani
Hamid Zare Abyane
机构
[1] Bu-Ali Sina University,Faculty of Agriculture, Department of Animal Science
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关键词
Modeling; Microflora population; Broiler;
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学科分类号
摘要
Microflora population of poultry was affected by various factors. Many methods and techniques were developed to study microflora population. But, most of them confronted some problems. Moreover, being costly, laborious, and time-consuming made it impossible to measure microflora population several times. In this study, we tried to estimate intestinal microflora population using artificial neural network (ANN). Lactic acid bacteria were used as model of microflora population. Time and lactic acid bacteria were used as input and output variables, respectively. The best model of ANN was determined based on coefficient of determination, root mean square error, and mean absolute error criteria. The results of current study have shown that ANN is appropriate, cheap, and reliable tools to estimate intestinal microflora population (lactic acid bacteria) of broiler at different ages.
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页码:1043 / 1047
页数:4
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