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Batch-to-batch control of fed-batch processes using control-affine feedforward neural network

机译:使用控制仿射前馈神经网络的分批补料过程的逐批控制

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摘要

A control strategy for fed-batch processes is proposed based on control affine feed-forward neural network (CAFNN). Many fed-batch processes can be considered as a class of control affine nonlinear systems. CAFNN is constructed by a special structure to fit the control affine system. It is similar to a multi-layer feedforward neural network, but it has its own particular feature to model the fed-batch process. CAFNN can be trained by a modified Levenberg-Marquardt (LM) algorithm. However, due to model-plant mismatches and unknown disturbances, the optimal control policy calculated based on the CAFNN model may not be optimal when applied to the fed-batch process. In terms of the repetitive nature of fed-batch processes, iterative learning control (ILC) can be used to improve the process performance from batch to batch. Due to the special structure of CAFNN, the gradient information of CAFNN can be computed analytically and applied to the batch-to-batch ILC. Under the ILC strategy from batch to batch, endpoint product qualities of fed-batch processes can be improved gradually. The proposed control scheme is illustrated on a simulated fed-batch ethanol fermentation process.
机译:提出了一种基于仿射前馈神经网络(CAFNN)的批量生产控制策略。许多补料分批过程可以视为一类控制仿射非线性系统。 CAFNN由特殊的结构构造,以适合控制仿射系统。它类似于多层前馈神经网络,但是它具有自己的特殊功能,可对补料分批过程进行建模。 CAFNN可以通过改良的Levenberg-Marquardt(LM)算法进行训练。但是,由于模型工厂不匹配和未知干扰,基于CAFNN模型计算的最优控制策略在应用于分批投料过程时可能不是最优的。就补料分批过程的重复性而言,迭代学习控制(ILC)可用于提高批次之间的过程性能。由于CAFNN的特殊结构,可以分析CAFNN的梯度信息,并将其应用于逐批ILC。在批次之间的ILC策略下,分批补料过程的最终产品质量可以逐步提高。在模拟补料分批乙醇发酵过程中说明了所提出的控制方案。

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