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An improved inverse neural control structure for nonlinear dynamic systems

机译:一种改进的非线性动力学系统逆神经控制结构

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Neural networks with their inherent parallelism and their ability to learn has been seen by many authors in the field of system control, as an exciting possibility to design adaptive controllers. This paper focuses on the capabilities and performances of the inverse neural control structure. Usually, a traditional inverse neural controller performs very well on setpoint changes, but is not so good on the disturbance rejection. In the paper, we propose an improved structure of inverse neural control, and we are concerned mainly with two aspects: disturbance rejection, and the control system behaviour with regard to the process parameters variation and to the manifestation of the unmodeled dynamics.
机译:神经网络及其固有的并行性和学习能力已被系统控制领域的许多作者视为设计自适应控制器的令人兴奋的可能性。本文重点介绍了逆神经控制结构的功能和性能。通常,传统的逆向神经控制器在设定值变化方面表现非常出色,但在干扰抑制方面却表现不佳。在本文中,我们提出了一种改进的逆神经控制结构,主要涉及两个方面:扰动抑制和控制系统在过程参数变化和未建模动力学表现方面的行为。

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