Learning-Based Adaptive Management of QoS and Energy for Mobile Robotic Missions

Dinh-Khanh Ho, K. B. Chehida, Benoît Miramond, M. Auguin
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Abstract

Mobile robotic systems are normally confronted with the shortage of on-board resources such as computing capabilities and energy, as well as significantly influenced by the dynamics of surrounding environmental conditions. This context requires adaptive decisions at run-time that react to the dynamic and uncertain operational circumstances for guaranteeing the performance requirements while respecting the other constraints. In this paper, we propose a reinforcement learning (RL)-based approach for Quality of Service QoS and energy-aware autonomous robotic mission manager. The mobile robotic mission manager leverages the idea of (RL) by monitoring actively the state of performance and energy consumption of the mission and then selecting the best mapping parameter configuration by evaluating an accumulative reward feedback balancing between QoS and energy. As a case study, we apply this methodology to an autonomous navigation mission. Our simulation results demonstrate the efficiency of the proposed management framework and provide a promising solution for the real mobile robotic systems.
基于学习的移动机器人任务QoS和能量自适应管理
移动机器人系统通常面临着计算能力和能源等机载资源的不足,以及受周围环境条件动态影响较大。此上下文需要在运行时对动态和不确定的操作环境做出自适应决策,以在尊重其他约束的同时保证性能需求。本文提出了一种基于强化学习(RL)的服务质量QoS和能量感知自主机器人任务管理器方法。移动机器人任务管理器利用(RL)的思想,主动监测任务的性能状态和能量消耗,然后通过评估QoS和能量之间的累积奖励反馈平衡来选择最佳映射参数配置。作为案例研究,我们将此方法应用于自主导航任务。仿真结果证明了所提出的管理框架的有效性,为实际的移动机器人系统提供了一个有希望的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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