移动机器人路径规划的深度强化学习算法综述

Ramanjeet Singh, Jing Ren, Xianke Lin
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引用次数: 0

摘要

路径规划是自主移动机器人最基本的需求。传统的路径规划是用解析法来解决的,但这些方法需要在环境中有完美的定位,需要有完整的地图来规划路径,不能处理复杂的环境和突发事件。近年来,深度神经网络已被应用于解决这一复杂问题。这篇综述文章讨论了使用神经网络的路径规划方法,包括深度强化学习,以及它的不同类型,如无模型和基于模型的方法,基于q值函数的方法,基于策略的方法和基于行动者关键的方法。此外,专门的部分深入研究了机器人与行人交互的细微差别和方法,探索了不同环境(如人行道、十字路口和室内空间)中的这些动态,强调了机器人导航中社会遵从性的重要性。最后,讨论了这些方法面临的共同挑战,以及应用奖励塑造、迁移学习、并行模拟等方法来优化解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review of Deep Reinforcement Learning Algorithms for Mobile Robot Path Planning
Path planning is the most fundamental necessity for autonomous mobile robots. Traditionally, the path planning problem was solved using analytical methods, but these methods need perfect localization in the environment, a fully developed map to plan the path, and cannot deal with complex environments and emergencies. Recently, deep neural networks have been applied to solve this complex problem. This review paper discusses path-planning methods that use neural networks, including deep reinforcement learning, and its different types, such as model-free and model-based, Q-value function-based, policy-based, and actor-critic-based methods. Additionally, a dedicated section delves into the nuances and methods of robot interactions with pedestrians, exploring these dynamics in diverse environments such as sidewalks, road crossings, and indoor spaces, underscoring the importance of social compliance in robot navigation. In the end, the common challenges faced by these methods and applied solutions such as reward shaping, transfer learning, parallel simulations, etc. to optimize the solutions are discussed.
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