Model Reference Adaptive Neural Control for nonlinear systems based on Back-Propagation and Extreme Learning Machine

Hai-Jun Rong, Rong-Jing Bao, Guangshe Zhao
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引用次数: 3

Abstract

In this paper, a Model Reference Adaptive Neural Control (MRANC) that uses both off-line and online learning strategies and Single Hidden Layer Feedforward Networks (SLFNs) is proposed for a class of nonlinear systems. In the proposed scheme, one SLFN is used as the identifier to identify the unknown nonlinear system and then the other SLFN is used as the controller to construct the control law based on the information of the identified model. The neural-network parameters of the NNI and NNC are adapted off-line. The off-line trained neural controller ensures the stability and provides the necessary tracking performance. If there is a change in the system dynamics or characteristics, the trained neural identifier and controller are also adapted online for providing the appropriate control input to maintain the system's satisfactory tracking performance. Different from the existing technology where the Back-Propagation (BP) is employed to train the two SLFNs, the identifier is trained using a fast neural algorithm developed recently, namely Extreme Learning Machine (ELM) while the controller is trained using the Dynamic BP method. Simulation results show that the proposed approach has faster learning speed and higher tracking performance than the existing method.
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基于反向传播和极限学习机的非线性系统模型参考自适应神经控制
针对一类非线性系统,提出了一种采用离线和在线学习策略和单隐层前馈网络的模型参考自适应神经控制(MRANC)。在该方案中,使用一个SLFN作为辨识器对未知非线性系统进行辨识,然后使用另一个SLFN作为控制器根据辨识出的模型信息构造控制律。NNI和NNC的神经网络参数是离线自适应的。离线训练的神经控制器保证了稳定性并提供了必要的跟踪性能。如果系统动力学或特性发生变化,训练后的神经辨识器和控制器也在线适应,以提供适当的控制输入,以保持系统令人满意的跟踪性能。与现有的BP方法训练两个SLFNs不同,辨识器的训练采用了最近发展起来的一种快速神经算法,即极限学习机(Extreme Learning Machine, ELM),而控制器的训练采用了动态BP方法。仿真结果表明,该方法比现有方法具有更快的学习速度和更高的跟踪性能。
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