Deterministic meeting of sniffing agents in the plane
Samir Elouasbi, Andrzej Pelc

TL;DR
This paper studies deterministic algorithms for two mobile agents with limited sensing capabilities to meet in the plane, considering different models of distance estimation and starting conditions.
Contribution
It introduces new models of distance sensing for agents and analyzes their impact on meeting strategies in a deterministic setting.
Findings
Agents can successfully meet under various sensing models.
The monotone model allows more efficient meeting strategies.
Meeting algorithms are robust to different initial conditions.
Abstract
Two mobile agents, starting at arbitrary, possibly different times from arbitrary locations in the plane, have to meet. Agents are modeled as discs of diameter 1, and meeting occurs when these discs touch. Agents have different labels which are integers from the set of 0 to L-1. Each agent knows L and knows its own label, but not the label of the other agent. Agents are equipped with compasses and have synchronized clocks. They make a series of moves. Each move specifies the direction and the duration of moving. This includes a null move which consists in staying inert for some time, or forever. In a non-null move agents travel at the same constant speed, normalized to 1. We assume that agents have sensors enabling them to estimate the distance from the other agent (defined as the distance between centers of discs), but not the direction towards it. We consider two models of estimation.…
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Taxonomy
TopicsOptimization and Search Problems · DNA and Biological Computing · Data Management and Algorithms
