Mohammadzadeh Ardashir, Ghaemi Sehraneh
Control Engineering Department, Faculty of Electrical and Computer Engineering, University of Tabriz, Tabriz, Iran.
ISA Trans. 2015 Sep;58:318-29. doi: 10.1016/j.isatra.2015.03.016. Epub 2015 Apr 29.
This paper proposes a novel approach for training of proposed recurrent hierarchical interval type-2 fuzzy neural networks (RHT2FNN) based on the square-root cubature Kalman filters (SCKF). The SCKF algorithm is used to adjust the premise part of the type-2 FNN and the weights of defuzzification and the feedback weights. The recurrence property in the proposed network is the output feeding of each membership function to itself. The proposed RHT2FNN is employed in the sliding mode control scheme for the synchronization of chaotic systems. Unknown functions in the sliding mode control approach are estimated by RHT2FNN. Another application of the proposed RHT2FNN is the identification of dynamic nonlinear systems. The effectiveness of the proposed network and its learning algorithm is verified by several simulation examples. Furthermore, the universal approximation of RHT2FNNs is also shown.
本文提出了一种基于平方根容积卡尔曼滤波器(SCKF)训练所提出的递归分层区间二型模糊神经网络(RHT2FNN)的新方法。SCKF算法用于调整二型模糊神经网络的前提部分、去模糊化权重和反馈权重。所提出网络中的递归特性是每个隶属函数自身的输出反馈。所提出的RHT2FNN用于混沌系统同步的滑模控制方案中。滑模控制方法中的未知函数由RHT2FNN估计。所提出的RHT2FNN的另一个应用是动态非线性系统的辨识。通过几个仿真示例验证了所提出网络及其学习算法的有效性。此外,还展示了RHT2FNN的通用逼近能力。