Multi-robot path planning is a fundamental yet challenging problem due to its combinatorial complexity and the need to balance global efficiency with fair task allocation among robots. Traditional swarm intelligence methods, although effective on small instances, often converge prematurely and struggle to scale to complex environments. In this work, we present a structure-induced exploration framework that integrates structural priors into the search process of the ant colony optimization (ACO). The approach leverages the spatial distribution of the task to induce a structural prior at initialization, thereby constraining the search space. The pheromone update rule is then designed to emphasize structurally meaningful connections and incorporates a load-aware objective to reconcile the total travel distance with individual robot workload. An explicit overlap suppression strategy further ensures that tasks remain distinct and balanced across the team. The proposed framework was validated on diverse benchmark scenarios covering a wide range of instance sizes and robot team configurations. The results demonstrate consistent improvements in route compactness, stability, and workload distribution compared to representative metaheuristic baselines. Beyond performance gains, the method also provides a scalable and interpretable framework that can be readily applied to logistics, surveillance, and search-and-rescue applications where reliable large-scale coordination is essential.
翻译:多机器人路径规划是一个基础且具有挑战性的问题,这源于其组合复杂性以及需要在全局效率与机器人间的公平任务分配之间取得平衡。传统的群体智能方法虽然在小型实例上有效,但常常过早收敛,难以扩展到复杂环境中。本文提出了一种结构引导探索框架,将结构先验信息集成到蚁群优化(ACO)的搜索过程中。该方法利用任务的空间分布,在初始化阶段引入结构先验,从而约束搜索空间。随后设计的信息素更新规则强调具有结构意义的连接,并引入负载感知目标以协调总行进距离与单个机器人工作量。此外,一种显式的重叠抑制策略进一步确保任务在团队中保持区分度与均衡性。所提框架在涵盖广泛实例规模和机器人团队配置的多种基准场景中进行了验证。结果表明,与代表性的元启发式基线方法相比,该方法在路径紧凑性、稳定性及工作负载分布方面均取得了持续改进。除了性能提升之外,该方法还提供了一个可扩展且可解释的框架,可轻松应用于物流、监控和搜救等需要可靠大规模协调的应用场景。