Decentralized Autonomous Navigation Strategies for Multi-Robot Search and Rescue
Ahmad Baranzadeh

TL;DR
This paper introduces three novel decentralized algorithms for multi-robot search and formation building using a triangular grid pattern, with proven convergence and validated through simulations and real-world experiments.
Contribution
It presents new algorithms for multi-robot search and formation that are mathematically proven to converge and are tested in real and simulated environments.
Findings
Triangular grid pattern ensures optimal coverage with minimal robots.
Algorithms outperform existing methods in simulations and real tests.
Proposed formation algorithm achieves convergence even with anonymous robots.
Abstract
In this report, we try to improve the performance of existing approaches for search operations in multi-robot context. We propose three novel algorithms that are using a triangular grid pattern, i.e., robots certainly go through the vertices of a triangular grid during the search procedure. The main advantage of using a triangular grid pattern is that it is asymptotically optimal in terms of the minimum number of robots required for the complete coverage of an arbitrary bounded area. We use a new topological map which is made and shared by robots during the search operation. We consider an area that is unknown to the robots a priori with an arbitrary shape, containing some obstacles. Unlike many current heuristic algorithms, we give mathematically proofs of convergence of the algorithms. The computer simulation results for the proposed algorithms are presented using a simulator of real…
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