安徽农业科学2016,Issue(5) :21-23,35.

卷烟劲头的BP神经网络模型预测

Model Prediction of BP Neural Network of Cigarette Impact

李力群 纪旭东 乔月梅 牛文广 叶亚军 郭春生
安徽农业科学2016,Issue(5) :21-23,35.

卷烟劲头的BP神经网络模型预测

Model Prediction of BP Neural Network of Cigarette Impact

李力群 1纪旭东 1乔月梅 1牛文广 1叶亚军 1郭春生1
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作者信息

  • 1. 内蒙古昆明卷烟有限责任公司,内蒙古呼和浩特010020
  • 折叠

摘要

[目的]科学地评价卷烟配方中劲头的大小,通过建立BP神经网络模型预测卷烟劲头.[方法]以烟叶游离烟碱百分含量、总烟碱百分含量、结合态烟碱百分含量、游离烟碱占总烟碱比率和水浸液pH作为BP神经网络的输入,感官劲头作为输出,网络训练前对输入指标作归一化处理,然后通过训练样本数据对网络进行充分的训练,获得适宜的参数矩阵,得到卷烟劲头的网络预测模型,最后用训练好的网络模型对检验样本数据进行预测.[结果]卷烟配方中劲头大小的预测值与实际值相对标准偏差小于5%,达到了较好的预测结果.[结论]建立了卷烟劲头的BP神经网络预测模型,该模型对于预测卷烟劲头具有指导意义.

Abstract

[Objective] To scientifically evaluate the cigarette impact,and to predict the cigarette impact through the BP neural network.[Method] The percentage of free nicotine in leaves,the percentage of total nicotine,the percentage of combined state nicotine,the percentage of free nicotine in total nicotine,and pH value of aqueous extracts were used as the input of BP neural network.And sensory momentum was used as the output.Normalization processing of input index was carried out before network training.Network was fully trained before network training.Then,network was fully trained by training sample data,so as to obtain the proper parameter matrix,and to obtain the network forecast model of cigarette impact.Finally,test sample data were forecasted by the trained network model.[Result] Relative standard deviation between predicted value and actual value was smaller than 5%,which reached relatively good predicted value.[Conclusion] Prediction model of cigarette impact through the BP neural network is established,which has guiding significance for the prediction of cigarette impact.

关键词

BP神经网络/烟碱/卷烟劲头

Key words

BP neural network/Nicotine/Cigarette impact

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出版年

2016
安徽农业科学
安徽省农业科学院

安徽农业科学

影响因子:0.413
ISSN:0517-6611
参考文献量5
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