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Neural network inverse model-based controller for the control of a steel pickling process

机译:基于神经网络逆模型的控制器,用于控制钢的酸洗过程

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摘要

The present work investigates the use of neural network direct inverse model-based control strategy(NNDIC)to control a steel pickling process.The process is challenging due to the fact that the pH of effluent streams must be regulated accurately to protect aquatic and human welfare,and to comply with limits imposed by legislation.At the same time,the concentration of acid solution in the pickling step needs to be maintained at the optimum value in order to obtain the maximum reaction rate.Various changes in the open-loop dynamics are performed before implementation of the inverse neural network modeling technique.The optimal neural network architectures are determined by the mean squared error(MSE)minimization technique.The robustness of the proposed inverse model neural network control strategy is investigated with respect to changes in disturbances,model mismatch and noise effects.Simulation results show the superiority of the NNDIC controller in the cases involving disturbance,model mismatch and noise while the conventional controller gives better results in the nominal case.
机译:目前的工作是研究基于神经网络直接逆模型的控制策略(NNDIC)来控制钢的酸洗过程。该过程具有挑战性,因为必须精确调节废水的pH值以保护水生和人类福祉同时,为了获得最大的反应速率,酸洗步骤中酸溶液的浓度必须保持在最佳值。开环动力学的各种变化是在实施逆神经网络建模技术之前执行该操作。最佳的神经网络架构由均方误差(MSE)最小化技术确定。针对干扰,模型变化的影响,研究了所提出的逆模型神经网络控制策略的鲁棒性。仿真结果表明,在涉及扰动,模型的情况下,NNDIC控制器的优越性。失配和噪声,而常规控制器在正常情况下可提供更好的结果。

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