English

Active Learning-based Model Predictive Coverage Control

Systems and Control 2024-04-01 v2 Systems and Control

Abstract

The problem of coverage control, i.e., of coordinating multiple agents to optimally cover an area, arises in various applications. However, coverage applications face two major challenges: (1) dealing with nonlinear dynamics while respecting system and safety critical constraints, and (2) performing the task in an initially unknown environment. We solve the coverage problem by using a hierarchical framework, in which references are calculated at a central server and passed to the agents' local model predictive control (MPC) tracking schemes. Furthermore, to ensure that the environment is actively explored by the agents a probabilistic exploration-exploitation trade-off is deployed. In addition, we derive a control framework that avoids the hierarchical structure by integrating the reference optimization in the MPC formulation. Active learning is then performed drawing inspiration from Upper Confidence Bound (UCB) approaches. For all developed control architectures, we guarantee closed-loop constraint satisfaction and convergence to an optimal configuration. Furthermore, all methods are tested and compared on hardware using a miniature car platform.

Keywords

Cite

@article{arxiv.2303.09910,
  title  = {Active Learning-based Model Predictive Coverage Control},
  author = {Rahel Rickenbach and Johannes Köhler and Anna Scampicchio and Melanie N. Zeilinger and Andrea Carron},
  journal= {arXiv preprint arXiv:2303.09910},
  year   = {2024}
}

Comments

Extended version of accepted paper in IEEE Transactions on Automatic Control, 2024