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Neural network model-based predictive control of liquid-liquid extraction contactors

机译:基于神经网络模型的液液萃取接触器预测控制

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The inherent complex nonlinear dynamic characteristics and time varying transients of the liquid-liquid extraction process draw the attention to the application of nonlinear control techniques. In this work, neural network-based control algorithms were applied to control the product compositions of a Scheibel agitated extractor of type I. Model predictive control algorithm was implemented to control the extractor. The extractor hydrodynamics and mass transfer behavior were modeled using the non-equilibrium backflow mixing cell model. It was found that model predictive control is capable of solving the servo control problem efficiently with minimum controller moves. This study will be followed by more work concentrated on using different neural network-based control algorithms for the control of extraction contactors. (C) 2004 Elsevier Ltd. All rights reserved.
机译:液-液萃取过程固有的复杂非线性动力学特性和时变瞬变吸引了人们对非线性控制技术应用的关注。在这项工作中,基于神经网络的控制算法被应用于控制类型为I的Scheibel搅拌式提取器的产品组成。实现了模型预测控制算法来控制提取器。使用非平衡回流混合池模型对萃取器的流体动力学和传质行为进行建模。发现模型预测控制能够以最小的控制器动作有效地解决伺服控制问题。这项研究之后将进行更多的工作,重点是使用不同的基于神经网络的控制算法来控制萃取接触器。 (C)2004 Elsevier Ltd.保留所有权利。

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