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Growth Characteristics Modeling of Mixed Culture of Bifidobacterium bifidum and Lactobacillus acidophilus using Response Surface Methodology and Artificial Neural Network

机译:双歧杆菌和嗜酸乳杆菌混合培养的生长特性模型的响应面法和人工神经网络

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Different culture conditions viz. additional carbon and nitrogen content, inoculum size and age, temperature and pH of the mixed culture of Bifidobacterium bifidum and Lactobacillus acidophilus were optimized using response surface methodology (RSM) and artificial neural network (ANN). Kinetic growth models were fitted for the cultivations using a Fractional Factorial (FF) design experiments for different variables. This novel concept of combining the optimization and modeling presented different optimal conditions for the mixture of B. bifidum and L. acidophilus growth from their one variable at-a-time (OVAT) optimization study. Through these statistical tools, the product yield (cell mass) of the mixture of B. bifidum and L. acidophilus was increased. Regression coefficients (R2) of both the statistical tools predicted that ANN was better than RSM and the regression equation was solved with the help of genetic algorithms (GA). The normalized percentage mean squared error obtained from the ANN and RSM models were 0.08 and 0.3%, respectively. The optimum conditions for the maximum biomass yield were at temperature 38°C, pH 6.5, inoculum volume 1.60 mL, inoculum age 30 h, carbon content 42.31% (w/v), and nitrogen content 14.20% (w/v). The results demonstrated a higher prediction accuracy of ANN compared to RSM.
机译:不同的培养条件。使用响应表面方法(RSM)和人工神经网络(ANN)对双歧双歧杆菌和嗜酸乳杆菌的混合培养物中的其他碳和氮含量,接种物大小和年龄,温度和pH值进行了优化。使用分数因子(FF)设计实验对不同变量进行动力学生长模型拟合。这种结合了优化和建模的新颖概念,从双歧双歧杆菌和嗜酸乳杆菌的混合物的一次可变(OVAT)优化研究中提出了不同的最佳条件。通过这些统计工具,双歧双歧杆菌和嗜酸乳杆菌的混合物的产物产量(细胞质量)得以提高。两种统计工具的回归系数(R2)均预测ANN优于RSM,并且借助遗传算法(GA)解决了回归方程。从ANN和RSM模型获得的归一化均方误差百分比分别为0.08和0.3%。获得最大生物量的最佳条件是温度38°C,pH 6.5,接种量1.60 mL,接种量30 h,碳含量42.31%(w / v)和氮含量14.20%(w / v)。结果表明,与RSM相比,ANN的预测精度更高。

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