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User-friendly optimization approach of fed-batch fermentation conditions for the production of iturin A using artificial neural networks and support vector machine

机译:使用人工神经网络和支持向量机的分批补料发酵条件生产Iturin A的用户友好优化方法

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Background: In the field of microbial fermentation technology, how to optimize the fermentation conditions is of great crucial for practical applications. Here, we use artificial neural networks (ANNs) and support vector machine (SVM) models to offer a series of effective optimization methods for the production of iturin A. The concentration levels of asparagine (Asn), glutamic acid (Glu) and proline (Pro) (mg/L) were set as independent variables, while the Iturin A titer (U/mL) was set as dependent variable. General regression neural network (GRNN), multilayer feed-forward neural networks (MLFN) and the SVM model were developed. Comparisons were made among different ANN models and the SVM model. Results: The GRNN model has the lowest RMS error (457.88) and training time (1s), with a steady fluctuation after repeated experiments, whereas the MLFN models have comparatively higher RMS errors and training times, which have a significant fluctuation with the change of nodes. In terms of the SVM, it also has a relatively low RMS error (466.13), with a low training time (1s). Conclusion: According to the modeling results, the GRNN model is considered as the most suitable ANN model for the design of the fed-batch fermentation conditions for the production of Iturin A because of its high robustness and precision. And the SVM model is also considered as an very suitable alternative model. Under the tolerance of 30%, the prediction accuracy of the GRNN and SVM models are both 100% respectively in repeated experiments.
机译:背景:在微生物发酵技术领域,如何优化发酵条件对实际应用至关重要。在这里,我们使用人工神经网络(ANN)和支持向量机(SVM)模型为生产Iturin A提供了一系列有效的优化方法。天冬酰胺(Asn),谷氨酸(Glu)和脯氨酸( Pro)(mg / L)设置为自变量,而Iturin A滴度(U / mL)设置为因变量。建立了通用回归神经网络(GRNN),多层前馈神经网络(MLFN)和支持向量机模型。在不同的人工神经网络模型和支持向量机模型之间进行了比较。结果:GRNN模型具有最低的RMS误差(457.88)和训练时间(1s),经过反复实验后波动稳定,而MLFN模型具有相对较高的RMS误差和训练时间,随着误差的变化有较大的波动节点。就SVM而言,它还具有相对较低的RMS误差(466.13)和较短的训练时间(1s)。结论:根据建模结果,GRNN模型具有很高的鲁棒性和精度,被认为是最适合用于生产Iturin A生产的分批补料发酵条件设计的ANN模型。 SVM模型也被认为是非常合适的替代模型。在30%的误差范围内,GRNN和SVM模型的预测精度在重复实验中均分别为100%。

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