大型协同蜂群的随机有限集理论与集中控制

Bryce Doerr, R. Linares, Pingping Zhu, S. Ferrari
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引用次数: 0

摘要

控制大型机器人智能体群提出了许多挑战,包括但不限于,由于大量智能体而导致的计算复杂性,群体中每个智能体功能的不确定性以及群体配置的不确定性。本文利用随机有限集(RFS)理论对群体状态进行泛化,并利用模型预测控制(MPC)解决了一个拟牛顿优化的集中控制问题,克服了上述挑战。这项工作使用RFS公式来控制代理的分布,假设代理的数量未知或未指定。计算效率的解决方案也通过MPC版本的迭代线性二次调节器(ILQR),微分动态规划(DDP)的一种变体。通过使用改进的$L_2^2$距离,使用信息散度来定义群体RFS与期望群体配置之间的距离。利用MPC和ILQR进行的仿真结果表明,群强度收敛到期望的强度。此外,RFS控制公式在群中的代理数量和所需高斯混合物的配置方面显示出非常灵活。最后,结合ILQR和高斯混合概率假设密度滤波器解决了一个不完全信息下的航天器相对运动问题,证明了集中RFS控制在该现实场景下的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Random Finite Set Theory and Centralized Control of Large Collaborative Swarms
Controlling large swarms of robotic agents presents many challenges including, but not limited to, computational complexity due to a large number of agents, uncertainty in the functionality of each agent in the swarm, and uncertainty in the swarm's configuration. This work generalizes the swarm state using Random Finite Set (RFS) theory and solves a centralized control problem with a Quasi-Newton optimization through the use of Model Predictive Control (MPC) to overcome the aforementioned challenges. This work uses the RFS formulation to control the distribution of agents assuming an unknown or unspecified number of agents. Computationally efficient solutions are also obtained via the MPC version of the Iterative Linear Quadratic Regulator (ILQR), a variant of Differential Dynamic Programming (DDP). Information divergence is used to define the distance between the swarm RFS and the desired swarm configuration through the use of the modified $L_2^2$ distance. Simulation results using MPC and ILQR show that the swarm intensity converges to the desired intensity. Additionally, the RFS control formulation is shown to be very flexible in terms of the number of agents in the swarm and configuration of the desired Gaussian mixtures. Lastly, the ILQR and the Gaussian Mixture Probability Hypothesis Density filter are used in conjunction to solve a spacecraft relative motion problem with imperfect information to show the viability of centralized RFS control for this real-world scenario.
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