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Hybrid architecture of multi-robot systems based on formation control and SOM neural networks

机译:基于编队控制和SOM神经网络的多机器人系统混合架构

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The main goal of formation control strategies is to coordinate a robot team to achieve a desired formation pattern. Some applications of formation control, for instance sensing coverage, searching and rescue, transportation of large objects, etc. require to establish the desired positions of the robots according to an strategic and equidistant spatial coverage within the work area or boundary. This paper presents a hybrid architecture where a SOM neural network establishes the strategic positions of a 2D area or perimeter using the formation graph of robots. This information is transmitted online to a low-level control strategy based on artificial potential functions which ensures the convergence to the desired formation and collision avoidance based on decentralized repulsive vector fields instead the common repulsive potential functions. Some numerical simulations with virtual reality show the performance of the control architecture.
机译:编队控制策略的主要目标是协调机器人团队以实现所需的编队模式。编队控制的某些应用(例如感应覆盖范围,搜索和救援,大型物体的运输等)要求根据工作区域或边界内的战略且等距的空间覆盖范围来确定机器人的所需位置。本文提出了一种混合架构,其中SOM神经网络使用机器人的形成图确定2D区域或周边的战略位置。该信息在线传输到基于人工势函数的低级控制策略,该策略可确保基于分散的排斥矢量场(而不是常见的排斥势函数)收敛到所需的编队和避免碰撞。一些带有虚拟现实的数值模拟显示了控制体系结构的性能。

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