Mohamad Hafiz Abu Bakar, Abu Ubaidah bin Shamsudin, Zubair Adil Soomro, Satoshi Tadokoro, C. J. Salaan
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引用次数: 0
摘要
如今,自主机器人的进步是受新技术包围的世界发展的最新影响。深度强化学习(DRL)可以让系统自动运行,因此机器人会根据与环境的交互来学习下一个动作。此外,由于机器人需要持续行动,软行为批判深度强化学习(Soft Actor Critic Deep Reinforcement Learning,SAC DRL)被认为是最新的 DRL 方法解决方案。之所以使用 SAC,是因为它能够控制连续动作,从而产生更精确的动作。SAC 的基本原理对不可预测性具有鲁棒性,但也发现了一些弱点,特别是在探索过程中,准确性学习的成熟度较低。为解决这一问题,研究确定了一种解决方案,即使用适合系统的奖励函数来引导学习过程。本研究在 SAC 方法中提出了几种基于稀疏奖励和塑造奖励的奖励函数,以研究移动机器人学习的有效性。最后,实验结果表明,在 SAC DRL 中使用融合稀疏和整形奖励的方法,可以成功地导航到目标位置,而且还能提高精度,平均误差结果为 4.99%。
FUSION SPARSE AND SHAPING REWARD FUNCTION IN SOFT ACTOR-CRITIC DEEP REINFORCEMENT LEARNING FOR MOBILE ROBOT NAVIGATION
Nowadays, the advancement in autonomous robots is the latest influenced by the development of a world surrounded by new technologies. Deep Reinforcement Learning (DRL) allows systems to operate automatically, so the robot will learn the next movement based on the interaction with the environment. Moreover, since robots require continuous action, Soft Actor Critic Deep Reinforcement Learning (SAC DRL) is considered the latest DRL approach solution. SAC is used because its ability to control continuous action to produce more accurate movements. SAC fundamental is robust against unpredictability, but some weaknesses have been identified, particularly in the exploration process for accuracy learning with faster maturity. To address this issue, the study identified a solution using a reward function appropriate for the system to guide in the learning process. This research proposes several types of reward functions based on sparse and shaping reward in SAC method to investigate the effectiveness of mobile robot learning. Finally, the experiment shows that using fusion sparse and shaping rewards in the SAC DRL successfully navigates to the target position and can also increase accuracy based on the average error result of 4.99%.