Exploiting symmetries and progressive refinement for apodized pupil Lyot coronagraph design
Emiel H. Por, R\'emi Soummer, James Noss, Kathryn St. Laurent

TL;DR
This paper introduces symmetry exploitation and progressive refinement techniques to significantly reduce computational resources in designing apodized pupil Lyot coronagraphs, enabling more detailed and efficient optimization for future space telescopes.
Contribution
It presents novel methods to reduce problem size and computational load in APLC design by leveraging symmetries and multi-resolution optimization strategies.
Findings
Memory usage reduced by up to 256 times.
Optimization speed increased correspondingly.
Enables native resolution optimization of apodizers.
Abstract
Modern coronagraph design relies on advanced, large-scale optimization processes that require an ever increasing amount of computational resources. In this paper, we restrict ourselves to the design of Apodized Pupil Lyot Coronagraphs (APLCs). To produce APLC designs for future giant space telescopes, we require a fine sampling for the apodizer to resolve all small features, such as segment gaps, in the telescope pupil. Additionally, we require the coronagraph to operate in broadband light and be insensitive to small misalignments of the Lyot stop. For future designs we want to include passive suppression of low-order aberrations and finite stellar diameters. The memory requirements for such an optimization would exceed multiple terabytes for the problem matrix alone. We therefore want to reduce the number of variables and constraints to minimize the size of the problem matrix. We…
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