Zhao Feifei, Zeng Yi, Han Bing, Fang Hongjian, Zhao Zhuoya
Research Center for Brain-Inspired Intelligence, Institute of Automation, Chinese Academy of Sciences, Beijing 100190, China.
National Laboratory of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences, Beijing 100190, China.
Patterns (N Y). 2022 Oct 28;3(11):100611. doi: 10.1016/j.patter.2022.100611. eCollection 2022 Nov 11.
Biological systems can exhibit intelligent swarm behavior through relatively independent individual, local interaction and decentralized decision-making. A major research challenge of self-organized swarm intelligence is the coupling influences between individual behaviors. Existing methods optimize the behavior of multiple individuals simultaneously from a global perspective. However, these methods lack in-depth inspiration from swarm behaviors in nature, so they are short of flexibly adapting to real multi-robot online decision-making tasks. To overcome such limits, this paper proposes a self-organized collision avoidance model for real drones incorporating a bio-inspired reward-modulated spiking neural network (RSNN). The local interaction and autonomous learning of a single individual leads to the emergence of swarm intelligence. We validated the proposed model on swarm collision avoidance tasks (a swarm of unmanned aerial vehicles without central control) in a bounded space, carrying out simulation and real-world experiments. Compared with artificial neural network-based online learning methods, our proposed method exhibits superior performance and better stability.
生物系统可以通过相对独立的个体、局部交互和分散决策表现出智能群体行为。自组织群体智能的一个主要研究挑战是个体行为之间的耦合影响。现有方法从全局角度同时优化多个个体的行为。然而,这些方法缺乏对自然界群体行为的深入启发,因此缺乏灵活适应实际多机器人在线决策任务的能力。为了克服这些限制,本文提出了一种用于真实无人机的自组织避碰模型,该模型结合了受生物启发的奖励调制脉冲神经网络(RSNN)。单个个体的局部交互和自主学习导致了群体智能的出现。我们在有界空间中的群体避碰任务(一群无中央控制的无人机)上验证了所提出的模型,进行了仿真和实际实验。与基于人工神经网络的在线学习方法相比,我们提出的方法表现出卓越的性能和更好的稳定性。