Experimental Setup and Software Pipeline to Evaluate Optimization based Autonomous Multi-Robot Search Algorithms
Aditya Bhatt, Mary Katherine Corra, Franklin Merlo, Prajit KrisshnaKumar, Souma Chowdhury

TL;DR
This paper introduces a practical physical setup and open-source software pipeline for evaluating multi-robot search algorithms in real-world conditions, enabling better comparison and benchmarking beyond simulations.
Contribution
It provides a reproducible lab-scale physical environment and software tools to test and benchmark multi-robot search algorithms in real settings, addressing the simulation-to-reality gap.
Findings
Demonstrated evaluation of two advanced algorithms and a baseline in real-world conditions.
Showed the setup's ability to assess algorithm performance and real-time computing.
Validated the utility of the physical setup for benchmarking multi-robot search strategies.
Abstract
Signal source localization has been a problem of interest in the multi-robot systems domain given its applications in search & rescue and hazard localization in various industrial and outdoor settings. A variety of multi-robot search algorithms exist that usually formulate and solve the associated autonomous motion planning problem as a heuristic model-free or belief model-based optimization process. Most of these algorithms however remains tested only in simulation, thereby losing the opportunity to generate knowledge about how such algorithms would compare/contrast in a real physical setting in terms of search performance and real-time computing performance. To address this gap, this paper presents a new lab-scale physical setup and associated open-source software pipeline to evaluate and benchmark multi-robot search algorithms. The presented physical setup innovatively uses an…
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