食品工业科技2024,Vol.45Issue(4) :205-210.DOI:10.13386/j.issn1002-0306.2023020107

基于BP神经网络的UHT纯牛奶包装货架期预测

Shelf Life Prediction of UHT Milk Packaging Based on BP Neural Network

习鸿杰 宋利君 邓玉明 李泽鹏 卢立新 曾科
食品工业科技2024,Vol.45Issue(4) :205-210.DOI:10.13386/j.issn1002-0306.2023020107

基于BP神经网络的UHT纯牛奶包装货架期预测

Shelf Life Prediction of UHT Milk Packaging Based on BP Neural Network

习鸿杰 1宋利君 2邓玉明 2李泽鹏 1卢立新 1曾科2
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作者信息

  • 1. 江南大学机械工程学院,江苏无锡 214122;江苏省食品先进制造装备技术重点实验室,江苏无锡 214122
  • 2. 内蒙古乳业技术研究院有限责任公司,内蒙古呼和浩特 010100
  • 折叠

摘要

为探究初始蛋白质与脂肪含量、贮藏温度对UHT纯牛奶包装货架期的影响,以三种UHT纯牛奶为研究对象,试验测定 23、30和 37℃贮藏过程中样品褐变指数、蛋白水解度指标.将数据集整合,根据其在预测集上的表现确定具体的输入参数,开展基于BP神经网络的UHT纯牛奶包装货架期预测.结果表明,BP神经网络模型对UHT牛奶褐变指数、蛋白水解度指标的拟合度为 0.9412、0.9527,相较于传统多元线性回归模型的 0.8799和0.9211,经优化隐含层神经元数的BP神经网络模型对UHT纯牛奶贮藏期间的特征指标变化预测精度更高,为不同配方UHT纯牛奶货架期的快速准确预测提供技术支持.

Abstract

To investigate the effects of initial protein,fat content,and storage temperature on the shelf life of UHT pure milk packaging,three types of UHT pure milk were used as research objects to experimentally measure sample browning index and protein hydrolysis index during storage at 23,30,and 37℃.Integrate the dataset and determine specific input parameters based on its performance on the prediction set,and carry out UHT pure milk packaging shelf life prediction based on BP neural network.The results showed that the fitting degrees of the BP neural network model for the browning index and protein hydrolysis index of UHT milk were 0.9412 and 0.9527,respectively,and compared with traditional multiple linear regression model's number of 0.8799 and 0.9211,the BP neural network model with optimized hidden layer neuron numbers had higher prediction accuracy for the changes in characteristic indicators during the storage period of UHT pure milk,providing technical support for rapid and accurate prediction of the shelf life of UHT pure milk with different formulas.

关键词

UHT纯牛奶/蛋白质含量/脂肪含量/货架期/预测模型/BP神经网络

Key words

UHT milk/fat content/protein content/shelf life/prediction model/BP neural network

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出版年

2024
食品工业科技
北京一轻研究院

食品工业科技

CSTPCD北大核心
影响因子:0.842
ISSN:1002-0306
参考文献量13
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