Spacecraft Collision Risk Assessment with Probabilistic Programming
Giacomo Acciarini, Francesco Pinto, Sascha Metz, Sarah Boufelja,, Sylvester Kaczmarek, Klaus Merz, Jos\'e A. Martinez-Heras, Francesca Letizia,, Christopher Bridges, At{\i}l{\i}m G\"une\c{s} Baydin

TL;DR
This paper introduces a physics-based probabilistic model for space collision risk assessment, enabling better prediction, analysis, and synthetic data generation for conjunction events in orbit.
Contribution
It presents a novel probabilistic programming approach for conjunction assessment, improving understanding and prediction of collision risks in space debris management.
Findings
Model accurately predicts conjunction events using real data.
Enables generation of synthetic collision datasets.
Provides insights into variables influencing conjunctions.
Abstract
Over 34,000 objects bigger than 10 cm in length are known to orbit Earth. Among them, only a small percentage are active satellites, while the rest of the population is made of dead satellites, rocket bodies, and debris that pose a collision threat to operational spacecraft. Furthermore, the predicted growth of the space sector and the planned launch of megaconstellations will add even more complexity, therefore causing the collision risk and the burden on space operators to increase. Managing this complex framework with internationally agreed methods is pivotal and urgent. In this context, we build a novel physics-based probabilistic generative model for synthetically generating conjunction data messages, calibrated using real data. By conditioning on observations, we use the model to obtain posterior distributions via Bayesian inference. We show that the probabilistic programming…
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Taxonomy
TopicsSpace Science and Extraterrestrial Life
MethodsRandom Convolutional Kernel Transform
