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Neurogenetic Modeling of Moisture Sorption Isotherms in Dried Acid Casein

机译:干酸酪蛋白中水分吸附等温线的神经遗传学建模

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A hybrid computational neurogenetic modeling (CNGM) algorithm has been investigated to predict moisture sorption isotherms in dried acid casein powder at three temperatures, i.e., 25, 35 and 45 degrees centigrade, and over water activity range of 0.11-0.97. The neurogenetic model was developed using a novel algorithm, which was utilized for training neural network rather than traditional learning methods like error back-propagation method. Also, six conventional empirical models, viz., Oswin, Smith, Halsey, Caurie, modified Mizrahi and Guggenheim-Anderson-de Boer (GAB) models were considered from elsewhere (that were fitted to the same data as used in this study) for comparison of the neurogenetic models' prediction potential. Accordingly, neurogenetic and GAB (best among the conventional models studied) models predicted sorption isotherms with accuracy, in terms of root mean squared percent error, ranging as 0.18-0.26 and 1.93-5.78 for adsorption; and 0.17-0.39 and 1.40-5.01 for desorption, respectively. Evidently, neurogenetic models outperformed conventional empirical sorption models. Hence, it is deduced that hybrid CNGM approach is potentially intelligent precision modeling tool for predicting adsorption and desorption isotherms in dried acid casein powder.
机译:已经研究了一种混合计算神经遗传模型(CNGM)算法,以预测干燥的酸酪蛋白粉末在三种温度(即25、35和45摄氏度)以及水活度范围为0.11-0.97的情况下的水分吸附等温线。使用新算法开发了神经遗传模型,该算法用于训练神经网络,而不是像误差反向传播方法那样的传统学习方法。此外,还从其他地方考虑了六个常规的经验模型,即Oswin,Smith,Halsey,Caurie,改良的Mizrahi模型和Guggenheim-Anderson-de Boer(GAB)模型(与本研究中使用的数据相同)神经遗传学模型的预测潜力的比较。因此,神经遗传模型和GAB模型(在研究的传统模型中最好)预测吸附等温线的准确性,就均方根误差百分比而言,准确度为0.18-0.26和1.93-5.78;解吸分别为0.17-0.39和1.40-5.01。显然,神经遗传学模型优于传统的经验吸附模型。因此,可以推断出,混合CNGM方法是潜在的智能精密建模工具,可用于预测干燥的酸性酪蛋白粉末中的吸附和解吸等温线。

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