A hybridized RA-APSO approach for humanoid navigation

P. Kumar, K. K. Pandey, Chinmaya Sahu, Animesh Chhotray, D. Parhi
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引用次数: 15

Abstract

With an increasing demand in the field of industrial automation, robotics research has occupied a significant attention of people dealing with automation technology. In this paper, a hybridization technique is proposed combining regression analysis with adaptive particle swarm optimization for navigation of humanoids. In context of humanoid navigation, sensory information regarding obstacle distances are fed as input parameters to a basic regression controller and the output of the regression controller is again fed as input to the adaptive particle swarm optimization controller to obtain the final output. The final output of the hybridized controller acts as the controlling factor for humanoid navigation in a complex environment. The logic of the proposed hybridized controller is tested in both simulated and experimental environments and the results obtained from both the environments are compared against each other with a good agreement between them. Finally, the proposed controller is also tested against other existing navigational techniques to validate the efficiency.
一种基于RA-APSO的仿人导航方法
随着工业自动化领域的需求日益增加,机器人技术的研究已经引起了从事自动化技术研究的人们的极大关注。提出了一种将回归分析与自适应粒子群优化相结合的机器人导航杂交技术。在类人导航中,将障碍物距离的感官信息作为输入参数馈送给基本回归控制器,再将回归控制器的输出作为输入馈送给自适应粒子群优化控制器,得到最终输出。混合控制器的最终输出作为复杂环境下仿人导航的控制因子。在仿真和实验两种环境下对所提出的混合控制器的逻辑进行了测试,并对两种环境下得到的结果进行了比较,结果吻合较好。最后,针对其他现有的导航技术,对所提出的控制器进行了测试,以验证其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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