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Model based control of a yeast fermentation bioreactor using optimally designed artificial neural networks

机译:使用优化设计的人工神经网络的基于模型的酵母发酵生物反应器控制

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摘要

Artificial Neural Networks(ANN)have been used for a wide variety of chemical applications because of their ability to learn system features.This paper presents the use of feedforward neural networks for dynamic modeling and temperature control of a continuous yeast fermentation bioreactor.The analytical model of this nonlinear process is also presented and it was used to generate the training data.Different ANNs were trained using the backpropagation learning algorithm.To avoid over-fitting of the data and achieve the best prediction ability with the simplest structure possible,a pruning algorithm is proposed for topology optimization of the ANN.The resulting ANNs were introduced in a Model Predictive Control scheme to test the control performance of the structure.The robustness of this control structure was studied in the case of setpoint changes and noisy temperature measurement,when the network used for prediction had been trained including noisy data in the training set.Results obtained with Linear Model Predictive Control(LMPC)as well as with proportional-integral-derivative(PID)control are also presented and compared with those obtained with the neural network model based predictive control(NNMPC)strategy.The use of inverse neural models for dynamic modeling and control of this process is also discussed and exemplified via simulations.
机译:人工神经网络(ANN)具有学习系统功能的能力,因此已被广泛用于化学应用中。本文介绍了前馈神经网络在连续酵母发酵生物反应器动态建模和温度控制中的应用。使用反向传播学习算法对不同的人工神经网络进行训练,为避免数据过度拟合并以最简单的结构获得最佳预测能力,提出了一种修剪算法提出了一种用于ANN拓扑优化的方法。将所得的ANNs引入到模型预测控制方案中以测试结构的控制性能。研究了在设定值变化和噪声温度测量情况下该控制结构的鲁棒性。用于预测的网络已经过训练,包括训练集中的嘈杂数据。还介绍了线性模型预测控制(LMPC)和比例积分微分(PID)控制的方法,并将其与基于神经网络模型的预测控制(NNMPC)策略获得的结果进行了比较。还通过仿真讨论并举例说明了该过程的动态建模和控制。

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