首页> 外文会议>IFSA(International Fuzzy Systems Association); 2007; >Self-tunable Fuzzy Inference System: A Comparative Study for a Drone
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Self-tunable Fuzzy Inference System: A Comparative Study for a Drone

机译:自可调模糊推理系统:无人机的比较研究

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The work describes an automatically on-line Self-Tunable Fuzzy Inference System (STFIS) of a mini-flying called XSF drone. A Fuzzy controller based on an on-line optimization of a zero order Takagi-Sugeno fuzzy inference system (FIS) by a back propagation-like algorithm is successfully applied. It is used to minimize a cost function that is made up of a quadratic error term and a weight decay term that prevents an excessive growth of parameters. Simulation results and a comparison with a Static Feedback Linearization controller (SFL) are presented and discussed. A path-like flying road, described as straight-lines with rounded corners permits to prove the effectiveness of the proposed control law.
机译:该作品描述了一种称为XSF无人机的小型飞行器的自动在线自校正模糊推理系统(STFIS)。成功地应用了基于反向传播算法对零阶高木-Sugeno模糊推理系统(FIS)在线优化的模糊控制器。它用于最小化由二次误差项和权重衰减项组成的成本函数,以防止参数过度增长。给出并讨论了仿真结果并与静态反馈线性化控制器(SFL)进行了比较。被描述为带有圆角的直线的类似路径的飞行道路可以证明所提出的控制律的有效性。

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