无人系统蜂群异质性分类与韧性影响

Arxiv cs.RO2026-04-01🔗 查看原文
本文提出基于代理性质、硬件结构与作业空间三维的无人载具蜂群异质性分类框架,综述表明战略性异质性能提升性能与整体韧性。文章讨论了通信架构、能量感知协调、控制系统集成、sim-to-real迁移与统一评估指标等实施挑战,并以学习型协同、GPS缺失下多机器人SLAM和行业部署为例,指出异质蜂群正向高价值应用的可用性迈进。
原文内容
arXiv:2603.28831v1 Announce Type: new
Abstract: Combining different types of agents in uncrewed vehicle (UV) swarms has emerged as an approach to enhance mission resilience and operational capabilities across a wide range of applications. This study offers a systematic framework for grouping different types of swarms based on three main factors: agent nature (behavior and function), hardware structure (physical configuration and sensing capabilities), and operational space (domain of operation). A literature review indicates that strategic heterogeneity significantly improves swarm performance. Operational challenges, including communication architecture constraints, energy-aware coordination strategies, and control system integration, are also discussed. The analysis shows that heterogeneous swarms are more resilient because they can leverage diverse capabilities, adapt roles on the fly, and integrate data from multidimensional sensor feeds. Some important factors to consider when implementing are sim-to-real-world transfer for learned policies, standardized evaluation metrics, and control architectures that can work together. Learning-based coordination, GPS (Global Positioning System)-denied multi-robot SLAM (Simultaneous Localization and Mapping), and domain-specific commercial deployments collectively demonstrate that heterogeneous swarm technology is moving closer to readiness for high-value applications. This study offers a single taxonomy and evidence-based observations on methods for designing mission-ready heterogeneous swarms that balance complexity and increased capability.