Optimal consensus control for double-integrator multi-agent systems with
unknown dynamics using adaptive dynamic programming
- Yang Yang,
- Qi Zhang,
- Xue Song,
- Xiaoran Xie,
- Naibo Zhu,
- Zhi Liu
Xiaoran Xie
Changchun University of Science and Technology
Author ProfileAbstract
The purpose of this paper is to utilize adaptive dynamic programming to
solve an optimal consensus problem for double-integrator multi-agent
systems with completely unknown dynamics. In double-integrator
multi-agent systems, flocking algorithms that neglect agents' inertial
effect can cause unstable group behavior. Despite the fact that an
inertias-independent protocol exists, the design of its control law is
decided by dynamics and inertia. However, inertia in reality is
difficult to measure accurately, therefore, the control gain in the
consensus protocol was solved by developing adaptive dynamic programming
to enable the double-integrator systems to ensure the consensus of the
agents in the presence of entirely unknown dynamics. Firstly, we
demonstrate in a typical example how flocking algorithms that ignore the
inertial effect of agents can lead to unstable group behavior. And even
though the protocol is independent of inertia, the control gain depends
quite strongly on the inertia and dynamic of the agent. Then, to address
these shortcomings, an online policy iteration-based adaptive dynamic
programming is designed to tackle the challenge of double-integrator
multi-agent systems without dynamics. Finally, simulation results are
shown to prove how effective the proposed approach is.19 Jan 2023Submitted to Optimal Control, Applications and Methods 23 Jan 2023Submission Checks Completed
23 Jan 2023Assigned to Editor
23 Jan 2023Review(s) Completed, Editorial Evaluation Pending
04 Mar 2023Reviewer(s) Assigned
09 May 2023Editorial Decision: Accept