CrowdBot:用于校内服务的开放环境机器人管理系统

IF 3.6 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Yufei Wang, Wenting Zeng, Changzhen Liu, Zhuohan Ye, Jiawei Sun, Junxiang Ji, Zhihan Jiang, Xianyi Yan, Yongyi Wu, Yigao Wang, Dingqi Yang, Leye Wang, Daqing Zhang, Cheng Wang, Longbiao Chen
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引用次数: 0

摘要

在当代校园环境中,由于交通不便以及环境的复杂性和开放性,提供及时高效的服务越来越具有挑战性。现有的服务机器人虽然可以运行,但在适应性和动态任务管理方面往往力不从心,导致效率低下。为了克服这些局限性,我们推出了 CrowdBot 机器人管理系统,以增强校园环境中的服务。我们的系统利用基于分层强化学习的云边混合调度框架(REDIS),实现高效的在线流式任务分配和动态行动调度。为了验证 REDIS 框架,我们开发了一个数字孪生模拟平台,该平台集成了大型语言模型和热插拔技术。这有助于实现无缝的人机交互、高效的任务分配以及通过重复使用机器人设备实现经济高效的执行。我们的综合模拟证实了该系统的显著功效,任务完成时间缩短了 24.46%,行进距离缩短了 9.37%,耗电量节省了 3%。此外,该系统完成的任务数量增加了 7.95%,响应时间缩短了 9.49%。现实世界的案例研究进一步肯定了 CrowdBot 熟练执行任务和明智回收资源的能力,从而为简化校园服务管理提供了一个智能而可行的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CrowdBot: An Open-Environment Robot Management System for On-Campus Services
In contemporary campus environments, the provision of timely and efficient services is increasingly challenging due to limitations in accessibility and the complexity and openness of the environment. Existing service robots, while operational, often struggle with adaptability and dynamic task management, leading to inefficiencies. To overcome these limitations, we introduce CrowdBot, a robot management system that enhances service in campus environments. Our system leverages a hierarchical reinforcement learning-based cloud-edge hybrid scheduling framework (REDIS), for efficient online streaming task assignment and dynamic action scheduling. To verify the REDIS framework, we have developed a digital twin simulation platform, which integrates large language models and hot-swapping technology. This facilitates seamless human-robot interaction, efficient task allocation, and cost-effective execution through the reuse of robot equipment. Our comprehensive simulations corroborate the system's remarkable efficacy, demonstrating significant improvements with a 24.46% reduction in task completion times, a 9.37% decrease in travel distances, and up to a 3% savings in power usage. Additionally, the system achieves a 7.95% increase in the number of tasks completed and a 9.49% reduction in response time. Real-world case studies further affirm CrowdBot's capability to adeptly execute tasks and judiciously recycle resources, thereby offering a smart and viable solution for the streamlined management of campus services.
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来源期刊
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Computer Science-Computer Networks and Communications
CiteScore
9.10
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0.00%
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154
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