Containment Control of Multi-Agent Systems with Dynamic Leaders Based on a $PI^n$-Type Approach
Yunpeng Wang, Long Cheng, Wei Ren, Zeng-Guang Hou, Min Tan

TL;DR
This paper introduces a $PI^n$-type containment control algorithm for multi-agent systems with dynamic leaders, applicable in both discrete and continuous time, capable of handling followers with any order integral dynamics, and avoiding chattering.
Contribution
It extends containment control to discrete-time systems, handles leaders with polynomial trajectories, and eliminates chattering by not using the sign function.
Findings
Proves the $PI^n$-algorithm's effectiveness in both discrete and continuous domains.
Demonstrates applicability to followers with any-order integral dynamics.
Shows simulation results confirming the algorithm's practical effectiveness.
Abstract
This paper studies the containment control problem of multi-agent systems with multiple dynamic leaders in both the discrete-time domain and the continuous-time domain. The leaders' motions are described by -order polynomial trajectories. This setting makes practical sense because given some critical points, the leaders' trajectories are usually planned by the polynomial interpolations. In order to drive all followers into the convex hull spanned by the leaders, a -type ( and are short for {\it Proportion} and {\it Integration}, respectively; implies that the algorithm includes high-order integral terms) containment algorithm is proposed. It is theoretically proved that the -type containment algorithm is able to solve the containment problem of multi-agent systems where the followers are described by any order integral dynamics. Compared with the previous…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Optimization and Search Problems · Reinforcement Learning in Robotics
