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首页> 外文期刊>IEEE transactions on automation science and engineering: a publication of the IEEE Robotics and Automation Society >A Multiagent Mission Coordination System for Continuous Situational Awareness of Bushfires
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A Multiagent Mission Coordination System for Continuous Situational Awareness of Bushfires

机译:用于持续感知丛林大火的多智能体任务协调系统

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This paper devises a multi-agent Mission Coordinating Architecture (MCA) to achieve continuous situational awareness (SA) in bushfires, which can help with quick detection and accurate response to the hazards. In this paper, we use Unmanned Aerial Vehicles (UAVs) as instantiations of physical agents. MCA is a scalable architecture and aims to provide the UAVs with parallel mission plans, adopting a fire spread probability map and the Fuzzy C-means method to avoid mission overlap and duplicate information. The architecture is then enhanced by integrating a synchronized communication framework to facilitate UAVs’ adaptive cooperation and total flight time optimization. Furthermore, integrating the communication framework minimizes the number of deployed UAVs to fully cover the same area, saving considerable cost and energy compared to the Parallel Mode. The scalability challenge of the Parallel Mode, determining the required number of UAVs to cover the entire area, and the efficiency of the mission planning algorithm are thoroughly investigated and compared to the performance of the Communication Mode. Finally, the simulation results prove the MCA’s effectiveness in enhancing the UAVs’ exploration capability, resulting in comprehensive monitoring of all affected areas. Note to Practitioners—The proposed architecture in this research could offer flexibility to increase the number of UAVs on demand without requiring a change and adjustment of the parameters. Furthermore, a synchronized communication framework enhances MCA, enabling all UAVs to share their resources and exploit residual battery time to assist each other, manage the overall operation time, and reduce the total operation cost.
机译:本文设计了一种多智能体任务协调架构(MCA),以实现森林火灾中的持续态势感知(SA),这有助于快速检测和准确响应危害。在本文中,我们使用无人机(UAV)作为物理代理的实例。MCA是一种可扩展的架构,旨在为无人机提供平行的任务计划,采用火势蔓延概率图和模糊C均值方法,避免任务重叠和重复信息。然后通过集成同步通信框架来增强该架构,以促进无人机的自适应合作和总飞行时间优化。此外,集成通信框架可最大限度地减少部署的无人机数量,以完全覆盖同一区域,与并行模式相比,可节省大量成本和能源。对并行模式的可扩展性挑战、确定覆盖整个区域所需的无人机数量以及任务规划算法的效率进行了深入研究,并与通信模式的性能进行了比较。最后,仿真结果验证了MCA在增强无人机探测能力方面的有效性,从而对所有受影响区域进行了全面监测。从业者须知 - 本研究中提出的架构可以提供灵活性,以按需增加无人机的数量,而无需更改和调整参数。此外,同步通信框架增强了MCA,使所有无人机能够共享其资源并利用剩余电池时间相互协助,管理整体运行时间,并降低总运行成本。

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