Distributed Model Predictive Control for Linear-Quadratic Performance and Consensus State Optimization of Multiagent Systems

IEEE Trans Cybern. 2021 Jun;51(6):2905-2915. doi: 10.1109/TCYB.2020.3001347. Epub 2021 May 18.

Abstract

The optimal consensus problem of asynchronous sampling single-integrator and double-integrator multiagent systems is solved by distributed model predictive control (MPC) algorithms proposed in this article. In each predictive horizon, the finite-time linear-quadratic performance is minimized distributively by the control input with consensus state optimization. The MPC technique is then utilized to extend the optimal control sequence to the case of an infinite horizon. Conditions depending only on each agent's weighting scalar and sampling step are derived to guarantee the stability of the closed-loop system. Numerical examples of rendezvous control of multirobot systems illustrate the efficiency of the proposed algorithm.