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Neuro-adaptive Modeling and Control of a Cement Mill Using a Sliding Mode Learning Mechanism

机译:使用滑模学习机制的神经自适应建模和控制水泥厂

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A novel neural network adaptive control scheme for cement milling circuits is presented. Estimates of the one-step-ahead errors in control signals are calculated through a neural predictive model of the plant and used for controller tuning. A robust on-line learning algorithm, based on the direct use of sliding mode control (SMC) theory is applied to both: to the controller and to the model as well. The proposed approach allows handling of mismatches, uncertainties and parameter changes in the plant model. The results from simulations show that both the neural model and the controller inherit some of the advantages of SMC, such as high speed of learning and robustness. Fast convergence ability and good performance on reducing mapping error are observed, leading to an improvement of the transient response of the closed-loop system.
机译:提出了一种用于水泥铣削电路的新型神经网络自适应控制方案。通过工厂的神经预测模型计算控制信号中的一步误差的估计,并用于控制器调谐。基于直接使用滑模控制(SMC)理论的基于直接使用的稳健的在线学习算法应用于:到控制器和模型。所提出的方法允许处理工厂模型中的不匹配,不确定性和参数变化。仿真结果表明,神经模型和控制器都继承了SMC的一些优点,例如高学习和鲁棒性。观察到快速收敛能力和降低映射误差的良好性能,从而提高闭环系统的瞬态响应。

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