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Control of fed-batch bioreactors by a hybrid on-line optimal control strategy and neural network estimator

机译:混合在线最优控制策略和神经网络估计器控制分批补料生物反应器

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It is known that the performance of an optimal control strategy obtained from an off-line computation is degraded under the presence of model-plant mismatch. In order to improve the control performance, a hybrid neural network and on-line optimal control strategy are proposed in this study and demonstrated for the control of a fed-batch bioreactor for ethanol fermentation. The information of unmeasured state variables obtained from the neural network as an on-line estimator is used to modify the optimal feed profile of the fed-batch reactor. The simulation results show that the neural network provides a good estimate of unmeasured variables and the on-line optimal control with the neural network estimator gives a better control performance in terms of the amount of the desired ethanol product, compared with a conventional off-line optimal control method.
机译:已知在模型工厂不匹配的情况下,从离线计算获得的最优控制策略的性能会降低。为了提高控制性能,本研究提出了一种混合神经网络和在线最优控制策略,并证明了该方法可用于乙醇发酵的分批补料生物反应器的控制。从神经网络作为在线估计器获得的未测量状态变量的信息用于修改分批进料反应器的最佳进料曲线。仿真结果表明,与常规离线方法相比,神经网络提供了对未测变量的良好估计,并且使用神经网络估计器进行的在线最优控制在所需乙醇产物量方面具有更好的控制性能。最佳控制方法。

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