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Heuristic approaches in robot path planning: A survey

机译:机器人路径规划中的启发式方法:一项调查

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Autonomous navigation of a robot is a promising research domain due to its extensive applications. The navigation consists of four essential requirements known as perception, localization, cognition and path planning, and motion control in which path planning is the most important and interesting part. The proposed path planning techniques are classified into two main categories: classical methods and heuristic methods. The classical methods consist of cell decomposition, potential field method, subgoal network and road map. The approaches are simple; however, they commonly consume expensive computation and may possibly fail when the robot confronts with uncertainty. This survey concentrates on heuristic-based algorithms in robot path planning which are comprised of neural network, fuzzy logic, nature-inspired algorithms and hybrid algorithms. In addition, potential field method is also considered due to the good results. The strengths and drawbacks of each algorithm are discussed and future outline is provided. (C) 2016 Elsevier B.V. All rights reserved.
机译:机器人的自主导航由于其广泛的应用而成为有前途的研究领域。导航包含四个基本要求,即感知,定位,认知和路径规划以及运动控制,其中路径规划是最重要和最有趣的部分。提出的路径规划技术分为两大类:经典方法和启发式方法。经典方法包括细胞分解,势场方法,子目标网络和路线图。方法很简单;但是,它们通常会消耗大量的计算资源,并且当机器人面临不确定性时可能会失败。这项调查着重于机器人路径规划中基于启发式的算法,该算法包括神经网络,模糊逻辑,自然启发算法和混合算法。另外,由于效果好,也考虑了势场法。讨论了每种算法的优缺点,并提供了未来的概述。 (C)2016 Elsevier B.V.保留所有权利。

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