IMROMay 18, 2020

Optimal target assignment for massive spectroscopic surveys

arXiv:2005.08853v15 citations
Originality Synthesis-oriented
AI Analysis

This work addresses a domain-specific challenge in robotic systems for astronomical surveys, offering incremental improvements to existing assignment methods.

The paper tackles the problem of assigning robotic fiber positioners to targets in cosmological spectroscopy to improve coordination speed and reduce collisions, resulting in faster convergence times and decreased collision percentages in simulations.

Robotics have recently contributed to cosmological spectroscopy to automatically obtain the map of the observable universe using robotic fiber positioners. For this purpose, an assignment algorithm is required to assign each robotic fiber positioner to a target associated with a particular observation. The assignment process directly impacts on the coordination of robotic fiber positioners to reach their assigned targets. In this paper, we establish an optimal target assignment scheme which simultaneously provides the fastest coordination accompanied with the minimum of colliding scenarios between robotic fiber positioners. In particular, we propose a cost function by whose minimization both of the cited requirements are taken into account in the course of a target assignment process. The applied simulations manifest the improvement of convergence rates using our optimal approach. We show that our algorithm scales the solution in quadratic time in the case of full observations. Additionally, the convergence time and the percentage of the colliding scenarios are also decreased in both supervisory and hybrid coordination strategies.

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