IEEE Trans Neural Netw Learn Syst. 2016 Feb;27(2):322-33. doi: 10.1109/TNNLS.2015.2464314. Epub 2015 Aug 25.
The optimal formation problem of multirobot systems is solved by a recurrent neural network in this paper. The desired formation is described by the shape theory. This theory can generate a set of feasible formations that share the same relative relation among robots. An optimal formation means that finding one formation from the feasible formation set, which has the minimum distance to the initial formation of the multirobot system. Then, the formation problem is transformed into an optimization problem. In addition, the orientation, scale, and admissible range of the formation can also be considered as the constraints in the optimization problem. Furthermore, if all robots are identical, their positions in the system are exchangeable. Then, each robot does not necessarily move to one specific position in the formation. In this case, the optimal formation problem becomes a combinational optimization problem, whose optimal solution is very hard to obtain. Inspired by the penalty method, this combinational optimization problem can be approximately transformed into a convex optimization problem. Due to the involvement of the Euclidean norm in the distance, the objective function of these optimization problems are nonsmooth. To solve these nonsmooth optimization problems efficiently, a recurrent neural network approach is employed, owing to its parallel computation ability. Finally, some simulations and experiments are given to validate the effectiveness and efficiency of the proposed optimal formation approach.
本文通过递归神经网络解决多机器人系统的最优编队问题。期望的编队由形状理论来描述。该理论可以生成一组具有机器人之间相同相对关系的可行编队。最优编队意味着从可行编队集中找到一个与多机器人系统的初始编队距离最小的编队。然后,编队问题被转化为优化问题。此外,还可以将编队的方向、比例和允许范围考虑为优化问题的约束条件。此外,如果所有机器人都是相同的,它们在系统中的位置是可互换的。那么,每个机器人不一定移动到编队中的一个特定位置。在这种情况下,最优编队问题变成了一个组合优化问题,其最优解很难获得。受罚方法的启发,这个组合优化问题可以近似地转化为凸优化问题。由于距离中涉及到欧几里得范数,这些优化问题的目标函数是非光滑的。为了有效地解决这些非光滑优化问题,我们采用了递归神经网络方法,因为它具有并行计算能力。最后,通过一些仿真和实验验证了所提出的最优编队方法的有效性和效率。