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Learning Area Coverage for a Self-Sufficient Hexapod Robot Using a Cyclic Genetic Algorithm

机译:使用循环遗传算法的自给自足六足机器人的学习区域覆盖率

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Self-sufficient autonomous robots are able to perform independent tasks while maintaining enough energy to function. We develop a self-sufficient robot control system where a cyclic genetic algorithm (GA) is used to learn the control program for a hexapod robot equipped with a quick charge power supply. This robot uses high capacitance capacitors for its onboard power storage and a sensor system to detect power need related information. A detailed simulation is developed, to be used by a cyclic GA to learn control programs for the robot. These programs enable it to perform area coverage and periodically return to a recharging station to maintain power. In this paper, we expound on previous research and report the transfer of the complete simulated self-sufficient behavior to the physical robot and colony power supply system, where tests have been conducted to confirm the viability of our approach.
机译:自给自足的自主机器人能够执行独立的任务,同时保持足够的能量以发挥作用。我们开发了一个自给自足的机器人控制系统,其中使用循环遗传算法(GA)来学习配备了快速充电电源的六足机器人的控制程序。该机器人使用高电容电容器来存储其车载电力,并使用传感器系统来检测电力需求相关信息。开发了详细的仿真,循环GA可以使用它来学习机器人的控制程序。这些程序使它能够执行区域覆盖并定期返回到充电站以维持电量。在本文中,我们对先前的研究进行了阐述,并报告了完整的模拟自给自足行为向物理机器人和殖民地供电系统的转移,并在此进行了测试以确认我们方法的可行性。

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