Distributed Data-Driven Predictive Control for Multi-Agent Collaborative Legged Locomotion
ICRANov 13, 2022Outstanding Paper
The aim of this work is to define a planner that enables robust legged
locomotion for complex multi-agent systems consisting of several holonomically
constrained quadrupeds. To this end, we employ a methodology based on
behavioral systems theory to model the sophisticated and high-dimensional
structure induced by the holonomic constraints. The resulting model is then
used in tandem with distributed control techniques such that the computational
burden is shared across agents while the coupling between agents is preserved.
Finally, this distributed model is framed in the context of a predictive
controller, resulting in a robustly stable method for trajectory planning. This
methodology is tested in simulation with up to five agents and is further
experimentally validated on three A1 quadrupedal robots subject to various
uncertainties, including payloads, rough terrain, and push disturbances.