Focal-plane wavefront sensing with photonic lanterns I: theoretical framework

Authors: Jonathan Lin, Michael Fitzgerald, Yinzi Xin, Olivier Guyon, Sergio Leon-Saval, Barnaby Norris, Nemanja Jovanovic

arXiv: 2208.10563v1 - DOI (astro-ph.IM)
Accepted to JOSA B
License: CC BY 4.0

Abstract: The photonic lantern (PL) is a tapered waveguide that can efficiently couple light into multiple single-mode optical fibers. Such devices are currently being considered for a number of tasks, including the coupling of telescopes and high-resolution, fiber-fed spectrometers, coherent detection, nulling interferometry, and vortex-fiber nulling (VFN). In conjunction with these use cases, PLs can simultaneously perform low-order focal-plane wavefront sensing. In this work, we provide a mathematical framework for the analysis of the photonic lantern wavefront sensor (PLWFS), deriving linear and higher-order reconstruction models as well as metrics through which sensing performance -- both in the linear and nonlinear regimes -- can be quantified. This framework can be extended to account for additional optics such as beam-shaping optics and vortex masks, and is generalizable to other wavefront sensing architectures. Lastly, we provide initial numerical verification of our mathematical models, by simulating a 6-port PLWFS. In a companion paper, we provide a more comprehensive numerical characterization of few-port PLWFSs, and consider how the sensing properties of these devices can be controlled and optimized.

Submitted to arXiv on 22 Aug. 2022

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