Time Invariant Sensor Tasking for Catalog Maintenance of LEO Space objects using Stochastic Geometry

Chowdhury, Partha, M, Harsha, Georg, Chinni Prabhunath, Buduru, Arun Balaji, Biswas, Sanat K

arXiv.org Artificial Intelligence 

Catalog maintenance of space objects by limited number of ground-based sensors presents a formidable challenging task to the space community. This article presents a methodology for time-invariant tracking and surveillance of space objects in low Earth orbit (LEO) by optimally directing ground sensors. Our methodology aims to maximize the expected number of space objects from a set of ground stations by utilizing concepts from stochastic geometry, particularly the Poisson point process. We have provided a systematic framework to understand visibility patterns and enhance the efficiency of tracking multiple objects simultaneously. Our approach contributes to more informed decision-making in space operations, ultimately supporting efforts to maintain safety and sustainability in LEO.