Pan Zebang, Wen Guilin, Yin Hanfeng, Yin Shan, Tan Zhao
State Key Laboratory of Advanced Design and Manufacture for Vehicle Body, Hunan University, Changsha 410082, China.
School of Mechanical Engineering, Yanshan University, Qinhuangdao 066004, China.
Sensors (Basel). 2024 May 12;24(10):3081. doi: 10.3390/s24103081.
Self-assembly formation is a key research topic for realizing practical applications in swarm robotics. Due to its inherent complexity, designing high-performance self-assembly formation strategies and proposing corresponding macroscopic models remain formidable challenges and present an open research frontier. Taking inspiration from crystallization, this paper introduces a distributed self-assembly formation strategy by defining , , , and states for robots. Robots in these states can spontaneously organize into user-specified two-dimensional shape formations with lattice structures through local interactions and communications. To address the challenges posed by complex spatial structures in modeling a macroscopic model, this work introduces the structural features estimation method. Subsequently, a corresponding non-spatial macroscopic model is developed to predict and analyze the self-assembly behavior, employing the proposed estimation method and a stock and flow diagram. Real-robot experiments and simulations validate the flexibility, scalability, and high efficiency of the proposed self-assembly formation strategy. Moreover, extensive experimental and simulation results demonstrate the model's accuracy in predicting the self-assembly process under different conditions. Model-based analysis indicates that the proposed self-assembly formation strategy can fully utilize the performance of individual robots and exhibits strong self-stability.
自组装编队是群体机器人实现实际应用的关键研究课题。由于其固有的复杂性,设计高性能的自组装编队策略并提出相应的宏观模型仍然是巨大的挑战,并且是一个开放的研究前沿领域。本文从结晶现象中获得灵感,通过为机器人定义 、 、 和 状态,引入了一种分布式自组装编队策略。处于这些状态的机器人可以通过局部交互和通信自发地组织成具有晶格结构的用户指定二维形状编队。为了应对在对宏观模型进行建模时复杂空间结构带来的挑战,这项工作引入了结构特征估计方法。随后,利用所提出的估计方法和存量与流量图,开发了一个相应的非空间宏观模型来预测和分析自组装行为。真实机器人实验和模拟验证了所提出的自组装编队策略的灵活性、可扩展性和高效性。此外,大量的实验和模拟结果证明了该模型在预测不同条件下自组装过程方面的准确性。基于模型的分析表明,所提出的自组装编队策略可以充分利用单个机器人的性能,并具有很强的自稳定性。