基于神经形态数字双控制器的室内多无人机系统部署

Reza Ahmadvand;Sarah Safura Sharif;Yaser Mike Banad
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引用次数: 0

摘要

本研究为自主多无人机(UAV)系统引入了一种新的分布式云边缘框架,该框架将神经形态计算的计算效率与自然启发的控制策略相结合。所提出的架构为每架无人机配备了一个单独的峰值神经网络(SNN),该网络可以学习再现由基于云的控制器生成的最佳控制信号,即使在通信中断期间也能实现稳健的操作。通过将脉冲编码与受罗非鱼领地行为启发的自然控制原理相结合,我们的系统在复杂的城市环境中实现了复杂的编队控制和避障。分布式架构利用云计算进行复杂计算,同时通过基于边缘的snn保持本地自主性,与传统的集中式方法相比,显著降低了能耗和计算开销。我们的框架解决了传统方法的关键局限性,包括对预建模环境的依赖,传统方法的计算强度,以及势场方法中的局部最小问题。仿真结果证明了该系统在两种不同场景下的有效性:一种是由15架无人机组成的多无人机系统的室内部署,另一种是考虑避障的6架无人机移动群的无碰撞编队控制。由于峰值模式的稀疏性,以及整个无人机群平均snn基于事件的性质,与实现传统人工神经网络的传统冯·诺伊曼架构相比,该框架的计算负担减少了近90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuromorphic Digital-Twin-Based Controller for Indoor Multi-UAV Systems Deployment
This study introduces a novel distributed cloud-edge framework for autonomous multi-unmanned aerial vehicle (UAV) systems that combines the computational efficiency of neuromorphic computing with nature-inspired control strategies. The proposed architecture equips each UAV with an individual spiking neural network (SNN) that learns to reproduce optimal control signals generated by a cloud-based controller, enabling robust operation even during communication interruptions. By integrating spike coding with nature-inspired control principles inspired by tilapia fish territorial behavior, our system achieves sophisticated formation control and obstacle avoidance in complex urban environments. The distributed architecture leverages cloud computing for complex calculations while maintaining local autonomy through edge-based SNNs, significantly reducing energy consumption and computational overhead compared to traditional centralized approaches. Our framework addresses critical limitations of conventional methods, including the dependence on premodeled environments, computational intensity of traditional methods, and local minima issues in potential field approaches. Simulation results demonstrate the system's effectiveness across two different scenarios: first, the indoor deployment of a multi-UAV system made up of 15 UAVs, and second, the collision-free formation control of a moving UAV flock, including six UAVs considering the obstacle avoidance. Due to the sparsity of spiking patterns, and the event-based nature of SNNs on average for the whole group of UAVs, the framework achieves almost 90% reduction in computational burden compared to traditional von Neumann architectures implementing traditional artificial neural networks.
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