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Growth characteristics modeling of Bifidobacterium bifidum using RSM and ANN

机译:双歧双歧杆菌生长特性的RSM和ANN建模

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The aim of this work was to optimize the biomass production by Bifidobacterium bifidum 255 using the response surface methodology (RSM) and artificial neural network (ANN) both coupled with GA. To develop the empirical model for the yield of probiotic bacteria, additional carbon and nitrogen content, inoculum size, age, temperature and pH were selected as the parameters. Models were developed using ? fractional factorial design (FFD) of the experiments with the selected parameters. The normalized percentage mean squared error obtained from the ANN and RSM models were 0.05 and 0.1%, respectively. Regression coefficient (R2) of the ANN model showed higher prediction accuracy compared to that of the RSM model. The empirical yield model (for both ANN and RSM) obtained were utilized as the objective functions to be maximized with the help of genetic algorithm. The optimal conditions for the maximal biomass yield were 37.4 °C, pH 7.09, inoculum volume 1.97 ml, inoculum age 58.58 h, carbon content 41.74% (w/v), and nitrogen content 46.23% (w/v). The work reported is a novel concept of combining the statistical modeling and evolutionary optimization for an improved yield of cell mass of B. bifidum 255.
机译:这项工作的目的是使用响应面分析法(RSM)和人工神经网络(ANN)结合遗传算法,优化双歧双歧杆菌255的生物量生产。为了建立益生菌产量的经验模型,选择额外的碳和氮含量,接种量,年龄,温度和pH作为参数。模型是使用?所选参数的实验的分数阶乘设计(FFD)。从ANN和RSM模型获得的归一化均方误差百分比分别为0.05和0.1%。与RSM模型相比,ANN模型的回归系数(R2)显示出更高的预测精度。所获得的经验产量模型(对于ANN和RSM)都被用作目标函数,借助遗传算法可以使其最大化。生物量最大产量的最佳条件是37.4°C,pH 7.09,接种量1.97 ml,接种物年龄58.58 h,碳含量41.74%(w / v)和氮含量46.23%(w / v)。报告的工作是结合统计建模和进化优化以提高双歧双歧杆菌255细胞质量产量的新概念。

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