基于深度强化学习的路径规划算法综述

A Survey of Path Planning Algorithms Based on Deep Reinforcement Learning

  • 摘要: 传统的路径规划方法在复杂多变的环境中存在明显的局限性,本文首先探讨了这些传统方法的不足,接着引入深度强化学习作为新的解决思路。全面总结了基于价值函数、基于策略和基于值策略混合 3 种深度强化学习方法的原理、优缺点以及近年来在各个应用领域上具有代表性的研究成果,并将代表性算法在统一平台上进行测试,给出了实际对比分析。最后对基于深度强化学习的路径规划技术面临的挑战和研究展望进行了总结。

     

    Abstract: Traditional path planning methods have obvious limitations in complex and changing environments. Firstly, the shortcomings of these traditional methods are discussed, and then deep reinforcement learning as a new solution is introduced. The principles, advantages and disadvantages of 3 deep reinforcement learning methods including value function based, strategy based and hybrid value based strategies, as well as their representative research results in various application fields in recent years are summarized. The representative algorithms are tested on a unified platform, and actual comparative analysis is performed. Finally, the challenges and research prospects of path planning techniques based on deep reinforcement learning are summarized.

     

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