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Neurofuzzy-Based Approach to Mobile Robot Navigation in Unknown Environments

机译:基于Neurofuzzy的未知环境中移动机器人导航方法

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摘要

In this paper, a neurofuzzy-based approach is proposed, which coordinates the sensor information and robot motion together. A fuzzy logic system is designed with two basic behaviors, target seeking and obstacle avoidance. A learning algorithm based on neural network techniques is developed to tune the parameters of membership functions, which smooths the trajectory generated by the fuzzy logic system. Another learning algorithm is developed to suppress redundant rules in the designed rule base. A state memory strategy is proposed for resolving the “dead cycle” problem. Under the control of the proposed model, a mobile robot can adequately sense the environment around, autonomously avoid static and moving obstacles, and generate reasonable trajectories toward the target in various situations without suffering from the “dead cycle” problems. The effectiveness and efficiency of the proposed approach are demonstrated by simulation studies.
机译:本文提出了一种基于神经模糊的方法,该方法可以协调传感器信息和机器人运动。设计了具有两个基本行为的模糊逻辑系统,即目标寻找和避障。开发了一种基于神经网络技术的学习算法,对隶属函数的参数进行调整,从而使模糊逻辑系统生成的轨迹变得平滑。开发了另一种学习算法以抑制设计的规则库中的冗余规则。为解决“死循环”问题,提出了一种状态记忆策略。在所提出的模型的控制下,移动机器人可以在各种情况下充分感知周围的环境,自动避开静态和移动障碍,并向目标生成合理的轨迹,而不会遇到“死循环”问题。仿真研究证明了该方法的有效性和效率。

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