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首页> 外文期刊>Control Systems Technology, IEEE Transactions on >Cooperative Coevolutionary Algorithm-Based Model Predictive Control Guaranteeing Stability of Multirobot Formation
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Cooperative Coevolutionary Algorithm-Based Model Predictive Control Guaranteeing Stability of Multirobot Formation

机译:基于协同进化算法的多机器人编队稳定性模型预测控制

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摘要

This paper proposes a novel cooperative coevolutionary algorithm (CCEA)-based distributed model predictive control (MPC) that guarantees asymptotic stability of multiagent systems whose state vectors are coupled and nonseparable in a cost function. While conventional evolutionary algorithm-based MPC approaches cannot guarantee stability, the proposed CCEA-based MPC approach guarantees asymptotic stability regardless of the optimality of the solution that the CCEA-based algorithm generates with a small number of individuals. To guarantee stability, a terminal state constraint is found, and then a repair algorithm is applied to all candidate solutions to meet the constraint. Furthermore, as the proposed CCEA-based algorithm finds the Nash-equilibrium state in a distributed way, robots can quickly move into a desired formation from their locations. A novel dynamic cooperatively coevolving particle swarm optimization (CCPSO), dynamic CCPSO (dCCPSO) in short, is proposed to deal with the formation control problem based on the conventional CCPSO, which was the most recently developed algorithm among CCEAs. Numerical simulations and experimental results demonstrate that the CCEA-based MPC greatly improves the performance of multirobot formation control compared with conventional particle swarm optimization-based MPC.
机译:本文提出了一种基于合作协同进化算法(CCEA)的分布式模型预测控制(MPC),该模型可保证状态向量在成本函数中耦合且不可分离的多主体系统的渐近稳定性。尽管传统的基于进化算法的MPC方法无法保证稳定性,但无论基于CCEA的算法使用少量个体生成的解决方案的最优性如何,所提出的基于CCEA的MPC方法都可以保证渐近稳定性。为了保证稳定性,找到终端状态约束,然后对所有候选解决方案应用修复算法以满足约束。此外,由于提出的基于CCEA的算法以分布式方式找到Nash平衡状态,因此机器人可以从其位置快速移入所需的编队。提出了一种新颖的动态协同进化粒子群优化算法(CCPSO),简称为动态CCPSO(dCCPSO),以解决基于常规CCPSO的地层控制问题,该算法是CCEA中最新开发的算法。数值模拟和实验结果表明,与传统的基于粒子群优化的MPC相比,基于CCEA的MPC大大提高了多机器人编队控制的性能。

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