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Neural networks-based adaptive control for a class of nonlinear bioprocesses

机译:一类非线性生物过程的基于神经网络的自适应控制

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The paper studies the design and analysis of a neural adaptive control strategy for a class of square nonlinear bioprocesses with incompletely known and time-varying dynamics. In fact, an adaptive controller based on a dynamical neural network used as a model of the unknown plant is developed. The neural controller design is achieved by using an input–output feedback linearization technique. The adaptation laws of neural network weights are derived from a Lyapunov stability property of the closed-loop system. The convergence of the system tracking error to zero is guaranteed without the need of network weights convergence. The resulted control method is applied in a depollution control problem in the case of a wastewater treatment bioprocess, belonging to the square nonlinear class, for which kinetic dynamics are strongly nonlinear, time varying and not exactly known.
机译:本文研究了一类具有未知动态和时变动力学的正方形非线性生物过程的神经自适应控制策略的设计和分析。实际上,已经开发了基于动态神经网络的自适应控制器,该动态神经网络用作未知植物的模型。通过使用输入输出反馈线性化技术来实现神经控制器的设计。神经网络权重的自适应定律是从闭环系统的Lyapunov稳定性性质导出的。无需网络权重收敛即可保证系统跟踪误差收敛至零。所得的控制方法应用于污水处理生物过程中的污染控制问题,该过程属于方形非线性类,其动力学动力学是强非线性的,随时间变化的并且不确定。

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