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Mobile Robot Obstacle Avoidance System Based on GA-Aided OIF-Elman Network

机译:基于GA辅助的OIF-Elman网络的移动机器人避障系统

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Obstacle avoidance is one of the most basic and significant research directions of mobile robot. However, the present obstacle avoidance algorithms of many mobile robots are complex and unable to adapt to complex and changeable environments. This paper proposed an obstacle avoidance system based on GA-aided OIF-Elman neural network. The system can guide mobile robot to complete the movement and obstacle avoidance in the environment with obstacles. Based on the data collected by the robot’s six infrared sensors, the system adjusts their direction and changes the robot’s motion at the next moment. After data training, the information of network is saved as system file. Then put the system file in simulation software for test. The experimental results prove that the system designed by GA-aided OIF-Elman network is more effective for obstacle avoidance, compared with the performance of general Elman network, GA-aided OHF-Elman/Elman network.
机译:避障是移动机器人最基础,最重要的研究方向之一。但是,目前许多移动机器人的避障算法都很复杂,无法适应复杂多变的环境。提出了一种基于遗传算法的OIF-Elman神经网络的避障系统。该系统可以引导移动机器人在有障碍物的环境中完成运动并避开障碍物。根据机器人的六个红外传感器收集的数据,系统会调整它们的方向并在下一刻改变机器人的运动。经过数据训练后,网络信息将保存为系统文件。然后将系统文件放在仿真软件中进行测试。实验结果证明,与通用Elman网络,GA辅助OHF-Elman / Elman网络的性能相比,由GA辅助的OIF-Elman网络设计的系统在避障方面更有效。

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