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Mobile robot obstacle avoidance using short memory: a dynamic recurrent neuro-fuzzy approach

机译:使用短内存的移动机器人避障:动态递归神经模糊方法

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This paper presents a dynamic recurrent neuro-fuzzy system (DRNFS) with short memory for obstacle avoidance of mobile robots in unknown environments. The DRNFS is developed to avoid obstacles through supervised learning from a set of obstacle-avoidance trajectories provided by a human driver. The feedback connections added in the second layer of the DRNFS make the system cope with temporal problems, which allows the robot to memorize the previous environment information. The parameters and structure of the DRNFS can be automatically optimized through the learning process. The parameter optimization is realized by the ordered derivative algorithm, and the structure simplification is completed by the fuzzy rules similarity measure. Simulation results are presented to verify the feasibility of the proposed system.
机译:本文提出了一种动态记忆递归神经模糊系统(DRNFS),该系统具有短内存,可用于未知环境中的移动机器人避障。开发DRNFS的目的是通过从驾驶员提供的一组避障轨迹进行监督学习来避开障碍。在DRNFS的第二层中添加的反馈连接使系统能够处理时间问题,从而使机器人可以存储先前的环境信息。 DRNFS的参数和结构可以通过学习过程自动优化。通过有序导数算法实现参数优化,并通过模糊规则相似性度量完成结构简化。仿真结果表明了该系统的可行性。

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