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Development of Hyperplane-based Adaptive T-S Fuzzy Controller for Micro Aerial Robots

机译:基于超平面的微空机器人自适应T-S模糊控制器的开发

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In recent times, numerous applications of autonomous systems are witnessed vividly. Efficient control of autonomous systems like micro aerial robots (MARs) is challenging since their dynamics is highly nonlinear and associated with uncertainties. Therefore, an increasing interest is noticed in developing adaptive and computationally effective intelligent controllers. In this work, a hyperplane-based adaptive Takagi-Sugeno (TS) fuzzy controller namely hyperplane-based adaptive fuzzy (HPAF) controller is developed. Unlike the existing adaptive fuzzy controller, HPAF is characterized by fewer system parameters since it has no antecedent parameters. Such feature yields a fast response to follow the desired control commands in a challenging environment. To observe a sharp convergence of tracking error to zero, the consequent parameters of the HPAF are tuned through adaptation laws derived from a radial basis function neural network (RBFNN). Our HPAF controller's closed-loop stability has also been proved using Lyapunov theorem. Finally, the proposed controller's performance has been evaluated by employing it to control the altitude of a bioinspired flapping wing MAR and compared with a proportional integral derivative (PID) and static TS-Fuzzy controller, where better tracking performances are perceived than the benchmark controllers.
机译:最近,自治系统的许多应用得到了生动的效果。有效地控制像微型空中机器人(火星)这样的自主系统是挑战,因为它们的动态是高度非线性的并且与不确定性相关。因此,在开发适应性和计算有效的智能控制器时,注意到越来越令人利益。在这项工作中,开发了一种基于超平面的自适应Takagi-Sugeno(TS)模糊控制器即超平面的自适应模糊(HPAF)控制器。与现有的自适应模糊控制器不同,HPAF的特征在于系统参数较少,因为它没有先进的参数。这种特征在充满挑战环境中遵循所需的控制命令,产生快速响应。为了观察跟踪误差的急剧会聚至零,通过从径向基函数神经网络(RBFNN)导出的适应法律来调整HPAF的随后参数。我们的HPAF控制器的闭环稳定性也使用Lyapunov定理证明。最后,通过采用它来控制BioinSpired翼翼MAR的高度并与比例积分衍生(PID)和静态TS模糊控制器进行比较,其中比基准控制器更好地跟踪性能来评估所提出的控制器的性能。

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