Model Predictive Fuzzy Control: A Hierarchical Multi-Agent Control Architecture for Outdoor Search-and-Rescue Robots
Craig Maxwell, Mirko Baglioni, Anahita Jamshidnejad

TL;DR
This paper introduces a hierarchical control architecture combining model predictive control and fuzzy logic for multi-robot search-and-rescue missions, enhancing efficiency and performance while reducing computational load.
Contribution
The novel MPFC architecture integrates MPC and FLC for efficient, real-time multi-robot mission planning in unknown environments, balancing optimality and computational efficiency.
Findings
MPFC improves multi-robot search performance over decentralized FLC.
MPFC achieves similar results to centralized MPC with less computation.
Simulation demonstrates MPFC's effectiveness in disaster victim detection.
Abstract
Autonomous robots deployed in unknown search-and-rescue (SaR) environments can significantly improve the efficiency of the mission by assisting in fast localisation and rescue of the trapped victims. We propose a novel integrated hierarchical control architecture, called model predictive fuzzy control (MPFC), for autonomous mission planning of multi-robot SaR systems that should efficiently map an unknown environment: We combine model predictive control (MPC) and fuzzy logic control (FLC), where the robots are locally controlled by computationally efficient FLC controllers, and the parameters of these local controllers are tuned via a centralised MPC controller, in a regular or event-triggered manner. The proposed architecture provides three main advantages: (1) The control decisions are made by the FLC controllers, thus the real-time computation time is affordable. (2) The centralised…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Robotic Path Planning Algorithms · Distributed Control Multi-Agent Systems
