A review on mobile robots motion path planning in unknown environments

W. Khaksar, S. Vivekananthen, Khairul Salleh Mohamed Saharia, M. Yousefi, F. Ismail
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引用次数: 15

Abstract

Robotics sector have achieved enormous founds in recent years due to its high demands in factories to carry out high-precision jobs like riveting and welding. They are also often applied in special situations that would be hazardous for humans such as disposing toxic wastes or defusing bombs. Mobile robots alone however have gained much focus from researches relating optimization of their motion path planning. In this paper, a brief review on mobile robots motion path planning in unknown environment have been done based on recent founds. The paper categorizes motion path planning into two groups which is the Optimized Classic Approaches and Evolutionary and Hybrid Approaches. The optimized classic approaches represents the recent optimized motion path planning that implies the classic approaches such as A* search algorithm, Rapidly-exploring Random Trees (RRT), D* and D* Lite algorithm. The evolutionary and hybrid approaches are those adapts Artificial Intelligence (AI) such as neural networks (NN), genetic algorithms (GA), fuzzy systems and reinforced learning either acting alone or as hybrids together with other algorithms. Finally a comparison between these two categories are done differentiating their advantages and disadvantages.
未知环境下移动机器人运动路径规划研究进展
近年来,由于工厂对铆接和焊接等高精度工作的高要求,机器人行业取得了巨大的成就。它们也经常应用于对人类有危险的特殊情况,如处理有毒废物或拆除炸弹。然而,移动机器人运动路径规划优化的研究已成为人们关注的焦点。本文对未知环境下移动机器人运动路径规划的研究进展进行了综述。本文将运动路径规划分为两类:优化经典方法和进化混合方法。优化后的经典方法代表了最近优化的运动路径规划,这意味着经典方法如A*搜索算法,快速探索随机树(RRT), D*和D* Lite算法。进化和混合方法是指那些适应人工智能(AI)的方法,如神经网络(NN)、遗传算法(GA)、模糊系统和强化学习,它们要么单独起作用,要么与其他算法混合在一起。最后,对这两种类型进行了比较,区分了它们的优缺点。
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