Novel Autonomous Algorithms of Path Planning for Mobile Robots: A Survey

Jian Zhang
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Abstract

As the demand for autonomous mobile robots has risen sharply, the collision-free path planning/navigation problem has become and still is a focus of attention for many researchers. This paper covers a rangeof path planning approaches for various types of mobile robots, such as ground mobile robots, unmanned aerial vehicles, and autonomous vehicles. The literature is classified into two categories: global path planning and reactive path planning. To help readers comprehend the flow within each category, we analyze and compare each category from the perspectives of environmental modeling, optimization criteria, and different methods for path planning. In comparison to earlier survey articles, we place a greater emphasis on Artificial Intelligence (AI) and self-learning navigation methods. In particular, different robot kinematic models are also discussed in thisarticle. Finally, we indicated some future research directions.
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移动机器人路径规划自主算法研究进展
随着人们对自主移动机器人需求的急剧增加,无碰撞路径规划/导航问题已经成为并仍然是许多研究者关注的焦点。本文涵盖了各种类型的移动机器人的路径规划方法,如地面移动机器人、无人驾驶飞行器和自动驾驶车辆。文献分为两类:全局路径规划和反应路径规划。为了帮助读者理解每个类别内的流程,我们从环境建模、优化标准和不同路径规划方法的角度对每个类别进行了分析和比较。与之前的调查文章相比,我们更加强调人工智能(AI)和自学习导航方法。特别地,本文还讨论了不同的机器人运动学模型。最后,提出了今后的研究方向。
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