未知非线性系统的稳定学习自适应层次模糊CMAC控制器

F. Ortiz, Wen Yu, M. Moreno-Armendáriz
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引用次数: 0

摘要

针对一类非线性动态系统,提出了自适应层次模糊CMAC神经网络控制器(hfmac)。自适应HFCMAC控制的主要优点是:由于自适应HFCMAC可以根据变化的环境进行自我调整,因此控制器的性能更好,并且可以在实时应用中实现。该方法提供了一种融合了层次结构、CMAC神经网络和模糊逻辑的简单控制体系结构。CMAC中的输入空间维度是一项耗时的任务,特别是当输入数量巨大时,这将使内存过载,使神经模糊系统难以实现。这可以用一些层次形式的低维模糊CMAC来简化。对于所提出的方法,得到了一种新的自适应律,整体自适应方案保证了闭环系统在所有信号一致有界的情况下的全局稳定性。最后给出了一个算例的仿真结果,验证了该方法的有效性。
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Adaptive Hierarchical Fuzzy CMAC Controller with Stable Learning Algorithm for Unknown Nonlinear Systems
In this paper, adaptive hierarchical fuzzy CMAC neural network controller (HFCMAC), for a certain class of nonlinear dynamical system is presented. The main advantages of adaptive HFCMAC control are: Better performance of the controller because adaptive HFCMAC can adjust itself to the changing enviroment and can be implemented in real time applications. The proposed method provides a simple control architecture that merges hierarchical structure, CMAC neural network and fuzzy logic. The input space dimension in CMAC is a time-consuming task especially when the number of inputs is huge this would be overload the memory and make the neuro-fuzzy system very hard to implement. This is can be simplified using a number of low-dimensional fuzzy CMAC in a hierarchical form. A new adaptation law is obtained for the method proposed, the overall adaptive scheme guarantees the global stability of the resulting closed-loop system in the sense that all signals involved are uniformly bounded. Simulation results for its applications to one example is presented to demonstrate the performance of the proposed methodology.
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