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Role of Feed Forward Neural Networks Coupled with Genetic Algorithm in Capitalizing of Intracellular Alpha-Galactosidase Production by Acinetobacter sp.

机译:前馈神经网络结合遗传算法在不动杆菌属生产胞内α-半乳糖苷酶资本化中的作用。

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摘要

Alpha-galactosidase production in submerged fermentation by Acinetobacter sp. was optimized using feed forward neural networks and genetic algorithm (FFNN-GA). Six different parameters, pH, temperature, agitation speed, carbon source (raffinose), nitrogen source (tryptone), and K2HPO4, were chosen and used to construct 6-10-1 topology of feed forward neural network to study interactions between fermentation parameters and enzyme yield. The predicted values were further optimized by genetic algorithm (GA). The predictability of neural networks was further analysed by using mean squared error (MSE), root mean squared error (RMSE), mean absolute error (MAE), mean absolute percentage error (MAPE), and R 2-value for training and testing data. Using hybrid neural networks and genetic algorithm, alpha-galactosidase production was improved from 7.5 U/mL to 10.2 U/mL.
机译:不动杆菌在深层发酵中生产α-半乳糖苷酶。使用前馈神经网络和遗传算法(FFNN-GA)进行了优化。选择了6个不同的参数,即pH,温度,搅拌速度,碳源(棉子糖),氮源(色氨酸)和K2HPO4,并将其用于构建前馈神经网络的6-10-1拓扑结构,以研究发酵参数与酶产量。通过遗传算法(GA)进一步优化了预测值。通过使用均方误差(MSE),均方根误差(RMSE),平均绝对误差(MAE),平均绝对百分比误差(MAPE)和R 2 进一步分析了神经网络的可预测性。 -训练和测试数据的价值。使用混合神经网络和遗传算法,α-半乳糖苷酶的产量从7.5 U / mL提高到10.2 U / mL。

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