As unmanned systems such as Unmanned Aerial Vehicles (UAVs) and Unmanned Ground Vehicles (UGVs) become increasingly important to applications like urban sensing and emergency response, efficiently recruiting these autonomous devices to perform time-sensitive tasks has become a critical challenge. This paper presents MPBS (Mobility-aware Prediction and Behavior-based Scheduling), a scalable task recruitment framework that treats each device as a recruitable "user". MPBS integrates three key modules: a behavior-aware KNN classifier, a time-varying Markov prediction model for forecasting device mobility, and a dynamic priority scheduling mechanism that considers task urgency and base station performance. By combining behavioral classification with spatiotemporal prediction, MPBS adaptively assigns tasks to the most suitable devices in real time. Experimental evaluations on the real-world GeoLife dataset show that MPBS significantly improves task completion efficiency and resource utilization. The proposed framework offers a predictive, behavior-aware solution for intelligent and collaborative scheduling in unmanned systems.
翻译:随着无人机(UAVs)与无人地面车辆(UGVs)等无人系统在城市感知、应急响应等应用中日益重要,如何高效招募这些自主设备执行时效性任务已成为关键挑战。本文提出MPBS(移动感知预测与行为调度框架),一种可扩展的任务招募框架,将每个设备视为可招募的“用户”。MPBS集成了三个核心模块:行为感知KNN分类器、用于预测设备移动性的时变马尔可夫预测模型,以及综合考虑任务紧急程度与基站性能的动态优先级调度机制。通过将行为分类与时空预测相结合,MPBS能够自适应地实时将任务分配给最合适的设备。基于真实世界GeoLife数据集的实验评估表明,MPBS显著提升了任务完成效率与资源利用率。该框架为无人系统中的智能协同调度提供了一种预测性、行为感知的解决方案。