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Adaptive neuro-fuzzy controller for navigation of mobile robot

机译:用于移动机器人导航的自适应神经模糊控制器

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Fuzzy systems are able to treat uncertain and imprecise information; they make use of knowledge in the form of linguistic rules. Their drawbacks are caused mainly by the difficulty of defining accurate membership functions and lack of a systematic procedure for the transformation of expert knowledge into the rule base. Neural networks have the ability to learn but with some neural networks, knowledge representation and extraction are difficult. First, we consider a rule based fuzzy controller and a learning procedure based on the stochastic approximation method. The radial basis function neural network is then considered and it is shown that a modified form of this network is identical with the fuzzy controller which may thus be considered as a neuro-fuzzy controller. Numerical examples are presented to demonstrate the validity of the approach and it is shown that such an adaptive neuro-fuzzy system is successful in the control of a mobile robot.
机译:模糊系统能够治疗不确定和不精确的信息;他们以语言规则的形式利用知识。他们的缺点主要是难以定义准确的隶属函数和缺乏系统程序,以便将专家知识转换为规则基础。神经网络有能力学习,但是有一些神经网络,知识表示和提取很困难。首先,我们考虑基于规则的模糊控制器和基于随机近似方法的学习过程。然后考虑径向基函数神经网络,并示出了该网络的修改形式与模糊控制器相同,这可以被认为是神经模糊控制器。提出了数值例证以证明方法的有效性,并且示出了这种自适应神经模糊系统在移动机器人的控制中成功。

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