首页> 外文期刊>Journal of Food Science >PREDICTING MILK SHELF-LIFE BASED ON ARTIFICIAL NEURAL NETWORKS AND HEADSPACE GAS CHROMATOGRAPHIC DATA
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PREDICTING MILK SHELF-LIFE BASED ON ARTIFICIAL NEURAL NETWORKS AND HEADSPACE GAS CHROMATOGRAPHIC DATA

机译:基于人工神经网络和顶空色谱数据的牛奶货架期预测

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The usefulness of artificial neural networks (ANN) for milk shelf-life prediction by multivariate interpretation of gas chromatographic profiles and flavor-related shelf-life was evaluated and compared to principal components regression (PCR). The training set consisted of dynamic headspace gas chromatographic data collected during storage of pasteurized milk (input information for the neural network used to make a decision) and its corresponding shelf-life (prediction or response). ANN had better predictability than PCR. A standard error of the estimate of 2 days in shelf-life resulting from regression analysis of experimental vs predicted values indicated a high predictability of ANN. [References: 19]
机译:评估了人工神经网络(ANN)通过对气相色谱图和风味相关的货架期进行多变量解释来预测牛奶的货架期,并将其与主成分回归(PCR)进行了比较。训练集包括在巴氏杀菌牛奶存储期间收集的动态顶空气相色谱数据(用于决策的神经网络输入信息)及其相应的保质期(预测或响应)。 ANN具有比PCR更好的可预测性。实验值与预测值的回归分析得出的保质期2天估算值的标准误表明,人工神经网络的可预测性很高。 [参考:19]

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