...
首页> 外文期刊>International Journal of Intelligent Systems and Applications >Performance-Based Adaptive Gradient Descent Optimal Coefficient Fuzzy Sliding Mode Methodology
【24h】

Performance-Based Adaptive Gradient Descent Optimal Coefficient Fuzzy Sliding Mode Methodology

机译:基于性能的自适应梯度下降最优系数模糊滑模方法

获取原文

摘要

Design a nonlinear controller for second order nonlinear uncertain dynamical systems is the main challenge in this paper. This paper focuses on the design and analysis of a chattering free Mamdani’s fuzzy-based tuning gradient descent optimal error-based fuzzy sliding mode controller for highly nonlinear dynamic six degrees of freedom robot manipulator, in presence of uncertainties. Conversely, pure sliding mode controller is used in many applications; it has two important drawbacks namely; chattering phenomenon and nonlinear equivalent dynamic formulation in uncertain dynamic parameter. In order to solve the uncertain nonlinear dynamic parameters, implement easily and avoid mathematical model base controller, Mamdani’s performance/error-based fuzzy logic methodology with two inputs and one output and 49 rules is applied to pure sliding mode controller. Pure sliding mode controller and error-based fuzzy sliding mode controller have difficulty in handling unstructured model uncertainties. To solve this problem applied fuzzy-based tuning method to error-based fuzzy sliding mode controller for adjusting the sliding surface gain. Since the sliding surface gain is adjusted by gradient descent optimization method. Fuzzy-based tuning gradient descent optimal error-based fuzzy sliding mode controller is stable model-free controller which eliminates the chattering phenomenon without to use the boundary layer saturation function. Lyapunov stability is proved in fuzzy-based tuning gradient descent optimal fuzzy sliding mode controller based on switching (sign) function. This controller has acceptable performance in presence of uncertainty (e.g., overshoot=0%, rise time=0.8 second, steady state error = 1e-9 and RMS error=1.8e-12).
机译:为二阶非线性不确定动力系统设计非线性控制器是本文的主要挑战。本文着重于在不确定性的情况下为高度非线性动态六自由度机械手设计的抖振式自由Mamdani的基于模糊的调谐梯度下降基于最优误差的模糊滑模控制器。相反,在许多应用中使用纯滑模控制器。它有两个重要的缺点:不确定动力参数中的颤振现象和非线性等效动力公式。为了解决不确定的非线性动力学参数,易于实现并避免使用数学模型库控制器,将Mamdani基于性能/错误的模糊逻辑方法(具有两个输入,一个输出和49个规则)应用于纯滑模控制器。纯滑模控制器和基于误差的模糊滑模控制器很难处理非结构化模型的不确定性。为了解决该问题,将基于模糊的整定方法应用于基于误差的模糊滑模控制器,以调节滑动面增益。由于滑动表面增益是通过梯度下降优化方法来调整的。基于模糊的调整梯度下降基于最优误差的模糊滑模控制器是一种稳定的无模型控制器,无需使用边界层饱和函数即可消除抖动现象。在基于切换(符号)函数的基于模糊的调节梯度下降最优模糊滑模控制器中证明了Lyapunov的稳定性。该控制器在存在不确定性的情况下具有可接受的性能(例如,过冲= 0%,上升时间= 0.8秒,稳态误差= 1e-9和RMS误差= 1.8e-12)。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号