The cost of probabilistic gathering in oblivious robot networks
Julien Clement (1), Xavier Defago (2), Maria Gradinariu Potop-Butucaru, (2), Stephane Messika (1) ((1) LRI, Universite Paris 11, France (2) JAIST,, Japon, (3) LIP6, Universite Paris 6)

TL;DR
This paper analyzes the complexity of probabilistic gathering and scattering algorithms in oblivious robot networks, providing improved convergence time bounds and considering fault-prone environments.
Contribution
It offers a detailed complexity analysis of existing algorithms, improves convergence bounds using Markov chains, and extends results to fault-prone environments.
Findings
Gathering convergence time reduced to O(n ln n) in fault-free environments.
Gathering in crash-prone environments achieved in O(n ln n + 2f).
Scattering converges in O(n) in fault-free systems and O(n-f) in crash-prone environments.
Abstract
In this paper we address the complexity issues of two agreement problems in oblivious robot networks namely gathering and scattering. These abstractions are fundamental coordination problems in cooperative mobile robotics. Moreover, their oblivious characteristics makes them appealing for self-stabilization since they are self-stabilizing with no extra-cost. Given a set of robots with arbitrary initial location and no initial agreement on a global coordinate system, gathering requires that all robots reach the exact same but not predetermined location while scattering aims at scatter robots such that no two robots share the same location. Both deterministic gathering and scattering have been proved impossible under arbitrary schedulers therefore probabilistic solutions have been recently proposed. The contribution of this paper is twofold. First, we propose a detailed complexity…
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Taxonomy
TopicsDistributed systems and fault tolerance · Optimization and Search Problems · Age of Information Optimization
