Dynamic path planning algorithm in mobile robot navigation

S. Yun, S. Parasuraman, V. Ganapathy
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引用次数: 45

Abstract

Mobile Robot Navigation is an advanced technique where static, dynamic, known and unknown environment is involved. In this research, Genetic Algorithm (GA) is used to assist mobile robot to move, identify the obstacles in the environment, learn the environment and reach the desired goal in an unknown and unrecognized environment. This study is focused on exploring the algorithm that avoids acute obstacles in the environment. In the event of mobile robot encountering any dynamic obstacles when travelling from the starting position to the desired goal according to the optimum collision free path determined by the controller, the controller is capable of re-planning the new optimum collision free path. MATLAB simulation is developed to verify and validate the algorithm before they are real time implemented on Team AmigoBotℒ robot. The results obtained from both simulation and actual application confirmed the flexibility and robustness of the controllers designed in path planning.
移动机器人导航中的动态路径规划算法
移动机器人导航是一门涉及静态、动态、已知和未知环境的先进技术。在本研究中,利用遗传算法(Genetic Algorithm, GA)辅助移动机器人在未知和不可识别的环境中移动、识别环境中的障碍物、学习环境并达到预期目标。本研究的重点是探索避免环境中尖锐障碍物的算法。当移动机器人根据控制器确定的最优无碰撞路径从起始位置移动到期望目标时遇到任何动态障碍物时,控制器能够重新规划新的最优无碰撞路径。在团队AmigoBot®机器人上实时实现之前,开发了MATLAB仿真来验证和验证算法。仿真和实际应用结果验证了所设计控制器在路径规划方面的灵活性和鲁棒性。
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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