面向无人集群协同的通信模型影响机理与评估

Influence Mechanism and Evaluation of Communication Models for Unmanned Swarm Cooperation

  • 摘要: 为了解决无人机集群协同控制在实际通信约束下的性能退化问题,本文深入研究了通信模型对群体智能算法的影响机制与性能差异。通过构建集成完整网络协议栈的高保真通信仿真环境,建立了能够准确刻画时延与丢包距离相关动态特性的通信性能模型。基于此模型,系统分析了5种典型群体智能算法在不同通信质量、集群规模及环境复杂度下的性能表现,建立了涵盖连通性、收敛性、任务执行表现等多维度的量化评价指标体系。研究结果揭示了时延与丢包导致群体协同行为失效的内在机理,即通信约束会导致决策信息滞后和邻域信息缺失,同时发现不同算法对此表现出显著的敏感度差异。本文深化了对通信与控制耦合效应的理解,并基于定量评估结果为实际工程应用中的算法选择提供了参考依据。

     

    Abstract: To solve the problem of performance degradation of unmanned aerial vehicle (UAV) swarm cooperative control under practical communication constraints, we deeply investigate the influence mechanism and performance differences of communication models on swarm intelligence algorithms. By constructing a high-fidelity communication simulation environment that integrates a complete network protocol stack, a communication performance model capable of accurately characterizing the distance-dependent dynamic characteristics of time delay and packet loss is established. Based on this model, the performance of five typical swarm intelligence algorithms under different communication qualities, swarm sizes, and environmental complexities is systematically analyzed, and a quantitative evaluation index system covering multiple dimensions such as connectivity, convergence, and task execution performance is established. The results reveal the internal mechanism of swarm cooperative behavior failure caused by time delay and packet loss, namely, communication constraints lead to decision information delay and neighborhood information loss, and different algorithms show significant differences in sensitivity to these constraints. This study deepens the understanding of the coupling effects between communication and control, and provides a reference for algorithm selection in practical engineering applications based on the quantitative evaluation results.

     

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