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Culture conditions optimization of hyaluronic acid production by Streptococcus zooepidemicus based on radial basis function neural network and quantum-behaved particle swarm optimization algorithm

机译:基于径向基函数神经网络和量子行为粒子群算法的兽疫链球菌生产透明质酸的培养条件优化

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摘要

This study aimed to optimize the culture conditions (agitation speed, aeration rate and stirrer number) of hyaluronic acid production by Streptococcus zooepidemicus. Two optimization algorithms were used for comparison: response surface methodology (RSM) and radial basis function neural network coupling quantum-behaved particle swarm optimization algorithm (RBF-QPSO). In RBF-QPSO approach, RBF is employed to model the microbial HA production and QPSO algorithm is used to find the optimal culture conditions with the established RBF estimator as the objective function. The predicted maximum HA yield by RSM and RBF-QPSO was 5.27 and 5.62 g/l, respectively, while a maximum HA yield of 5.21 and 5.58 g/l was achieved in the validation experiments under the optimal culture conditions obtained by RSM and RBF-QPSO, respectively. It was indicated that both models provided similar quality predictions for the above three independent variables in terms of HA yield, but RBF model gives a slightly better fit to the measured data compared to RSM model. This work shows that the combination of RBF neural network with QPSO algorithm has good predictability and accuracy for bioprocess optimization and may be helpful to the other industrial bioprocesses optimization to improve productivity.
机译:本研究旨在优化兽疫链球菌生产透明质酸的培养条件(搅拌速度,通气速率和搅拌器数量)。比较了两种优化算法:响应面方法(RSM)和径向基函数神经网络耦合量子行为粒子群优化算法(RBF-QPSO)。在RBF-QPSO方法中,采用RBF对微生物HA的产生进行建模,并使用QPSO算法以建立的RBF估计量为目标函数来找到最佳培养条件。 RSM和RBF-QPSO预测的最大HA产量分别为5.27和5.62 g / l,而在通过RSM和RBF-Q获得的最佳培养条件下的验证实验中,最大HA产量为5.21和5.58 g / l。 QPSO,分别。结果表明,两个模型在HA产量方面都为上述三个自变量提供了相似的质量预测,但与RSM模型相比,RBF模型对测量数据的拟合度稍好。这项工作表明,RBF神经网络与QPSO算法的结合对于生物工艺优化具有良好的可预测性和准确性,可能有助于其他工业生物工艺优化以提高生产率。

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