# Genetic Algorithms for Starshade Retargeting in Space-Based Telescopes

**Authors:** Ho Chit Siu, Victor Pankratius

arXiv: 1907.09789 · 2019-07-24

## TL;DR

This paper applies genetic algorithms to optimize the scheduling of space-based telescopes with starshades, incorporating physical constraints and human input to improve flexibility and efficiency in exoplanet observation planning.

## Contribution

It introduces a novel GA-based scheduling framework that integrates physical constraints and stakeholder preferences, enabling adaptive and efficient telescope operation planning.

## Key findings

- GA converges effectively on scheduling solutions
- Incorporating human suggestions improves schedule relevance
- Framework handles dynamic scenario changes efficiently

## Abstract

Future space-based telescopes will leverage starshades as components that can be independently positioned. Starshades will adjust the light coming in from exoplanet host stars and enhance the direct imaging of exoplanets and other phenomena. In this context, scheduling of space-based telescope observations is subject to a large number of dynamic constraints, including target observability, fuel, and target priorities. We present an application of genetic algorithm (GA) scheduling on this problem that not only takes physical constraints into account, but also considers direct human suggestions on schedules. By allowing direct suggestions on schedules, this type of heuristic can capture the scheduling preferences and expertise of stakeholders without the need to always formally codify such objectives. Additionally, this approach allows schedules to be constructed from existing ones when scenarios change; for example, this capability allows for optimization without the need to recompute schedules from scratch after changes such as new discoveries or new targets of opportunity. We developed a specific graph-traversal-based framework upon which to apply GA for telescope scheduling, and use it to demonstrate the convergence behavior of a particular implementation of GA. From this work, difficulties with regards to assigning values to observational targets are also noted, and recommendations are made for different scenarios.

## Full text

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## Figures

6 figures with captions in the complete paper: https://tomesphere.com/paper/1907.09789/full.md

## References

11 references — full list in the complete paper: https://tomesphere.com/paper/1907.09789/full.md

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Source: https://tomesphere.com/paper/1907.09789