Hierarchical Integration of Model Predictive and Fuzzy Logic Control for Combined Coverage and Target-Oriented Search-and-Rescue via Robots with Imperfect Sensors
Christopher de Koning, Anahita Jamshidnejad

TL;DR
This paper presents a hierarchical multi-agent control system that combines human-inspired heuristics and mathematical optimization to improve search-and-rescue robot efficiency in unknown, uncertain environments.
Contribution
It introduces a novel hierarchical control architecture integrating fuzzy logic and model predictive control for better coordination and decision-making in SaR robots with imperfect sensors.
Findings
Enhanced victim detection efficiency compared to heuristic methods
Maintains comparable area coverage with improved target localization
Avoids conflicts in multi-robot coordination
Abstract
Search-and-rescue (SaR) in unknown environments requires precise, optimal, and fast decisions. Robots are promising candidates for autonomously performing SaR tasks in unknown environments. While humans use their heuristics to effectively deal with uncertainties, optimisation of multiple objectives in the presence of physical and control constraints is a mathematical challenge that requires machine computations. Thus having both human-inspired and mathematical control capabilities is desired for SaR robots. Moreover, coordinating the decisions of robots with little computation cost in large-scale SaR missions is an open challenge. Finally, in real-life data perceived by SaR robots may be prone to uncertainties. We introduce a hierarchical multi-agent control architecture that exploits non-homogeneous and imperfect perception capabilities of SaR robots, as well as the computational…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Energy Efficient Wireless Sensor Networks · Distributed Control Multi-Agent Systems
