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Artificial neural networks as a tool for soft-modelling in quantitative analytical chemistry: the prediction of the water content of cheese

机译:人工神经网络作为定量分析化学软建模的工具:奶酪中水分的预测

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摘要

The application of artificial neural networks for the modelling of a complex process was examined. A real data set concerning the batch production of cheese from an actual plant was used to predict the resulting water content of the cheese from the milk composition and process parameters. Owing to the complex nature of the data and the limited number of available patterns, difficulties were encountered when the standard backward error propagation algorithm was applied and no solution was derived. Several adaptions to the algorithm as suggested in the literature were then examined, and several gave satisfactory solutions. The resulting mean of the absolute values of the absolute prediction errors was 0.25% and 0.29% for known and unknown patterns, respectively, with a worst case error of 0.8%.
机译:研究了人工神经网络在复杂过程建模中的应用。有关从实际工厂批量生产奶酪的真实数据集用于根据牛奶成分和工艺参数预测奶酪的含水量。由于数据的复杂性和可用模式的数量有限,在应用标准后向误差传播算法且未导出任何解决方案时会遇到困难。然后研究了文献中提出的对该算法的几种改进,并给出了令人满意的解决方案。对于已知和未知模式,绝对预测误差的绝对值的所得平均值分别为0.25%和0.29%,最坏情况的误差为0.8%。

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