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A comparison study between static and dynamic recurrent neural networks based adaptive control of nonlinear multivariable systems

机译:基于静态和动态经常性神经网络的非线性多变量系统自适应控制的比较研究

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This paper considers the problem of real time adaptive control of nonlinear multivariable systems. Two neural networks techniques are presented to solve the problem mentioned above. The first technique combines the ability of a single-layer feedforward neural network for modeling purposes and a linear control law to design the controller. The second technique combines the ability of dynamic recurrent neural network for modeling purposes and a linear control law to design the controller. In this paper, we consider that the state of the system is accessible. A comparison between the simulation results for the above two techniques are presented to complete the study.
机译:本文考虑了非线性多变量系统实时自适应控制的问题。提出了两个神经网络技术以解决上述问题。第一技术结合了单层前馈神经网络来建模目的的能力和用于设计控制器的线性控制法。第二种技术结合了动态经常性神经网络来建模目的和线性控制定律来设计控制器的能力。在本文中,我们认为可以访问系统的状态。提出了上述两种技术的仿真结果的比较以完成研究。

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