Fast k-connectivity restoration in multi-robot systems for robust communication maintenance: algorithmic and learning-based solutions

Maintaining a robust communication network is crucial for the success of multi-robot online task planning. A key capability of such systems is the ability to repair the communication topology in the event of robot failures, thereby ensuring continued coordination. In this paper, we address the Fast...

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Vydané v:Autonomous robots Ročník 49; číslo 4; s. 34
Hlavní autori: Shi, Guangyao, Ishat-E-Rabban, Md, Bonner, Griffin, Tokekar, Pratap
Médium: Journal Article
Jazyk:English
Vydavateľské údaje: New York Springer US 01.12.2025
Springer Nature B.V
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ISSN:0929-5593, 1573-7527
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Shrnutí:Maintaining a robust communication network is crucial for the success of multi-robot online task planning. A key capability of such systems is the ability to repair the communication topology in the event of robot failures, thereby ensuring continued coordination. In this paper, we address the Fast k -Connectivity Restoration (FCR) problem, which seeks to restore a network’s k -connectivity with minimal robot movement. Here, a k -connected network refers to a topology that remains connected despite the removal of up to nodes. We first formulate the FCR problem as a Quadratically Constrained Program (QCP), which yields optimal solutions but is computationally intractable for large-scale instances. To overcome this limitation, we propose EA-SCR, a scalable algorithm grounded in graph-theoretic principles, which leverages global network information to guide robot movements. Furthermore, we develop a learning-based approach, GNN-EA-SCR, which employs aggregation graph neural networks to learn a decentralized counterpart of EA-SCR, relying solely on local information exchanged among neighboring robots. Through empirical evaluation, we demonstrate that EA-SCR achieves solutions within 10% of the optimal while being orders of magnitude faster. Additionally, EA-SCR surpasses existing methods by 30% in terms of the FCR distance metric. For the learning-based solution, GNN-EA-SCR, we show it attains a success rate exceeding 90% and exhibits comparable maximum robot movement to EA-SCR.
Bibliografia:ObjectType-Article-1
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content type line 14
ISSN:0929-5593
1573-7527
DOI:10.1007/s10514-025-10224-5