This page has been validated.

McCant, M., (n.d.). Mike McCants' Satellite Tracking TLE ZIP Files. Prismnet.com. https://www.prismnet.com/~mmccants/tles/index.html

Oltrogge, D., Kelso, T. S. & Seago, J. (2011). Ephemeris requirements for Space Situational Awareness. 140. AAS 11-151. https://comspoc.com/Resources/Papers/20110215_Ephem_Rqmts_for_SSA_Oltrogge_Kelso_AAS11-151_SUBMITTED.pdf

Science Applications International Corporation. (2021, 27 September). Space-Track.org. https://space-track.org

SkyMaker. (2006). Astromatic.net Retrieved on September 27, 2021 from https://www.astromatic.net/software/skymaker/

Street, R. A., Bowman, M., Saunders, E. S. & Boroson, T. (2018). General-purpose software for managing astronomical observing programs in the LSST era. SPIE. 10707, 1070711. doi:10.1117/12.2312293

Teimoorinia, H. , Shishehchi, S., Tazwar, A. , Lin, P., Archinuk, F., Gwyn, S. D. J. & Kavelaars,J. J., (2021), An Astronomical Image Content-based Recommendation System Using Combined Deep Learning Models in a Fully Unsupervised Mode. The Astronomical Journal, 161, 227. https://doi.org/10.3847/1538-3881/abea7e

Vallado, D. A. (2001). Fundamentals of astrodynamics and applications (Vol. 12). Springer Science & Business Media.

Virtanen, J., Poikonen, J., Säntti, T., Komulainen, T., Torppa, J., Granvik, M., Muinonen, K., Pentikäinen, H., Martikainen, J., Näränen, J. & Lehti, J. (2016). Streak detection and analysis pipeline for space-debris optical images. Advances in Space Research, 57(8), 1607. doi: 10.1016/j.asr.2015.09.024

Walker, C., Hall, J., Allen, L., Green, R., Seitzer, P., Tyson, A., Bauer, A., Krafton, K., Lowenthal, J., Parriott, J., Puxley, P., Abbott, T., Bakos, G., Barentine, J., Bassa, C., Blakeslee, J., Bradshaw, A., Cooke, J., Devost, D.,... Yoachim, P. (2020). Impact of Satellite Constellations on Optical Astronomy and Recommendations Towards Mitigations. NSF’s NOIRLab. https://noirlab.edu/public/products/techdocs/techdoc003/

Xu, C., McCully, C., Dong, B., Howell, D. A., & Sen, P. (2021). Cosmic-CoNN: A Cosmic Ray Detection DeepLearning Framework, Dataset, and Toolkit. arXiv:2106.14922 https://arxiv.org/abs/2106.14922

SATCON2 Algorithms Working Group Report
34