基于模糊逻辑的仿生移动机器人导航系统

Lei Wang, Simon X. Yang, M. Biglarbegian
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引用次数: 10

摘要

提出了一种新的移动机器人在未知环境下的路径规划方法。该算法的结构是一个混合模糊逻辑神经网络,因此它受益于这两种技术的潜力。对于移动机器人的建模,该系统采用了针对智能体开发的Braitenberg自动机模型。机器人的轮子由神经网络的仿生神经元表示,其中每个轮子接收不同的传感器输入,指示来自兴奋性或抑制性突触的不同信号。神经网络权值的训练是通过模糊系统自动完成的,该模糊系统可以调节网络中每个突触和神经元之间的权值。为了评估所开发算法的性能,给出了仿真结果。实验结果表明,该方法能够成功地将机器人导航到目标位置,并在转角处实现给定角度的转弯。本文提出的方法改进了Braitenberg导航方案,并为使用生物学启发系统进行路径规划提供了见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fuzzy logic based bio-inspired system for mobile robot navigation
This paper presents a new path planning method for mobile robots in unknown environments. The structure of the proposed algorithm is a hybrid fuzzy logic neural networks, and hence it benefits from the potentials of these two techniques. For modeling the mobile robot, the proposed system adopts the Braitenberg's automata models that were developed for agents. Wheels of the robot are represented by a bio-inspired neuron of a neural network, where each wheel receives different sensor inputs indicating different signals from either excitatory or inhibitory synapses. Training of the neural network weighting is automatically achieved through the fuzzy system that is developed to adjust the weighting between each synapse and neuron of the network. To assess the performance of the developed algorithm, simulation results are presented. It was shown that the proposed method can successfully navigate the robot to the target, and turn the robot at corners for given desired angles. The methodology proposed herein improves the Braitenberg navigation scheme and offers insights into using biologically inspired systems for path planning.
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