A Novel Self-organizing Fuzzy Cerebellar Model Articulation Controller Based Overlapping Gaussian Membership Function for Controlling Robotic System

Thanhquyen Ngo, Dinh-Khoi Hoang, Trong-Toan Tran, Anh-Tuan Nguyen
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Abstract

This paper introduces an effective intelligent controller for robotic systems with uncertainties. The proposed method is a novel self-organizing fuzzy cerebellar model articulation controller (NSOFC) which is a combination of a cerebellar model articulation controller (CMAC) and sliding mode control (SMC). We also present a new Gaussian membership function (GMF) that is designed by the combination of the prior and current GMF for each layer of CMAC. In addition, the relevant data of the prior GMF is used to check tracking errors more accurately. The inputs of the proposed controller can be mixed simultaneously between the prior and current states according to the corresponding errors. Moreover, the controller uses a self-organizing approach which can increase or decrease the number of layers, therefore the structures of NSOFC can be adjusted automatically. The proposed method consists of a NSOFC controller and a compensation controller. The NSOFC controller is used to estimate the ideal controller, and the compensation controller is used to eliminate the approximated error. The online parameters tuning law of NSOFC is designed based on Lyapunov’s theory to ensure stability of the system. Finally, the experimental results of a 2 DOF robot arm are used to demonstrate the efficiency of the proposed controller.
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基于重叠高斯隶属度函数的自组织模糊小脑模型关节控制器控制机器人系统
介绍了一种针对不确定机器人系统的有效智能控制器。该方法是一种将小脑模型关节控制器(CMAC)与滑模控制(SMC)相结合的自组织模糊小脑模型关节控制器(NSOFC)。我们还提出了一种新的高斯隶属度函数(GMF),该函数将CMAC的每一层的先验和当前GMF结合起来设计。此外,利用先验GMF的相关数据更准确地检查跟踪误差。根据相应的误差,该控制器的输入可以在先验状态和当前状态之间同时混合。此外,控制器采用自组织方法,可以增加或减少层数,因此NSOFC的结构可以自动调整。该方法由NSOFC控制器和补偿控制器组成。采用NSOFC控制器对理想控制器进行估计,采用补偿控制器对逼近误差进行消除。基于李亚普诺夫理论设计了NSOFC的在线参数整定律,以保证系统的稳定性。最后,通过一个2自由度机械臂的实验结果验证了所提控制器的有效性。
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