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Dynamic Modeling Using Artificial Neural Network of

机译:用人工神经网络动态建模

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摘要

Cross-flow microfiltration is a broadly accepted technique for separation of microbial biomass after the cultivation process. However, membrane fouling emerges as the main problem affecting permeate flux decline and separation process efficiency. Hydrodynamic methods, such as turbulence promoters and air sparging, were tested to improve permeate flux during microfiltration. In this study, a non-recurrent feed-forward artificial neural network (ANN) with one hidden layer was examined as a tool for microfiltration modeling using Bacillus velezensis cultivation broth as the feed mixture, while the Kenics static mixer and two-phase flow, as well as their combination, were used to improve permeate flux in microfiltration experiments. The results of this study have confirmed successful application of the ANN model for prediction of permeate flux during microfiltration of Bacillus velezensis cultivation broth with a coefficient of determination of 99.23% and absolute relative error less than 20% for over 95% of the predicted data. The optimal ANN topology was 5-13-1, trained by the Levenberg–Marquardt training algorithm and with hyperbolic sigmoid transfer function between the input and the hidden layer.
机译:交叉流动微滤是一种广泛接受的技术,用于在培养过程之后分离微生物生物质。然而,膜污染成为影响渗透助焊剂的主要问题,分离过程效率。测试诸如湍流启动子和空气喷射的流体动力学方法,以改善微滤期间的渗透助焊剂。在该研究中,将具有一个隐藏层的非经常性馈送人工神经网络(ANN)作为使用Bacillus Velezensis培养肉汤作为饲料混合物进行微滤建模的工具,而吉尔斯静态混合器和两相流,除了它们的组合,用于改善微滤实验中的渗透助焊剂。该研究的结果证实了在芽孢杆菌培养液的微滤过程中,在芽孢杆菌微滤液中预测渗透助焊剂的预测的成功应用,其测定系数99.23%,绝对相对误差超过95%的预测数据。最佳ANN拓扑结构为5-13-1,由Levenberg-Marquardt训练算法训练,并在输入和隐藏层之间进行双曲型符合矩形传递函数。

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