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Lifelong Federated Reinforcement Learning: A Learning Architecture for Navigation in Cloud Robotic Systems

机译:终身联邦钢筋学习:云机器人系统中导航的学习架构

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This paper was motivated by the problem of how to make robots fuse and transfer their experience so that they can effectively use prior knowledge and quickly adapt to new environments. To address the problem, we present a learning architecture for navigation in cloud robotic systems: Lifelong Federated Reinforcement Learning (LFRL). In the work, we propose a knowledge fusion algorithm for upgrading a shared model deployed on the cloud. Then, effective transfer learning methods in LFRL are introduced. LFRL is consistent with human cognitive science and fits well in cloud robotic systems. Experiments show that LFRL greatly improves the efficiency of reinforcement learning for robot navigation. The cloud robotic system deployment also shows that LFRL is capable of fusing prior knowledge. In addition, we release a cloud robotic navigation-learning website to provide the service based on LFRL: www.shared-robotics.com.
机译:本文的激励是如何使机器人融合和转移其经验的问题,使他们能够有效地使用先前的知识并快速适应新环境。为了解决这个问题,我们为云机器人系统中的导航提供了一个学习架构:终身联合加固学习(LFRL)。在工作中,我们提出了一个知识融合算法来升级部署在云上的共享模型。然后,引入了LFRL中的有效转移学习方法。 LFRL与人类认知科学一致,适合云机器人系统。实验表明,LFRL大大提高了机器人导航钢筋学习的效率。云机器人系统部署还表明LFRL能够融合先验知识。此外,我们释放了云机器人导航学习网站,以基于LFRL:www.shared-robotics.com提供服务。

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