基于多臂强盗优化的自主移动机器人任务卸载

Anis ur Rahman, A. Malik, Hasan Ali Khattak, M. Aloqaily
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引用次数: 0

摘要

无处不在和无线服务的发展使得自主网络物理系统的大规模采用能够改善动态环境中的工作流程。在其他应用中,人们已经目睹了这些现代技术在机器学习和高速通信的帮助下,可以优化和安全地利用资源来完成各种重复但危险的任务。工业5.0的愿景需要大量的设备与这样的编排一起工作,计算密集型任务可以卸载到附近的节点,以支持对时间关键但计算密集型任务的协作。在这项工作中,我们提出了一种基于多臂强盗的无人自主机器人任务卸载方法。通过实验验证,给出了概念的验证。实验证明,使用该方法可以在降低平均延迟的情况下实现更高的任务交付率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Task Offloading Using Multi-Armed Bandit Optimization in Autonomous Mobile Robots
Evolution in ubiquitous and wireless services has enabled the massive adoption of autonomous cyber-physical systems for improving the workflows in dynamic environments. Among other applications, it has been witnessed that these modern technologies with the help of machine learning and high-speed communications can enable optimum and safe utilization of resources to complete various repetitive yet hazardous tasks. The industry 5.0 vision requires a multitude of devices to work with such orchestration that compute-intensive tasks may be offloaded to nearby nodes to enable collaboration for such time-critical yet compute-intensive tasks. In this work, we present a multi-armed bandit-based approach for task offloading in unmanned autonomous robots. Through experimental validation, a proof of concept is given. It has been demonstrated that using the proposed technique we have achieved a higher task delivery rate with reduced average delay.
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