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Conjunction Data Messages behave as a Poisson Process

Authors :
Caldas, Francisco
Soares, Claudia
Nunes, Cláudia
Guimarães, Marta
Filipe, Mariana
Ventura, Rodrigo
Source :
AI for Spacecraft Longevity conference proceedings (IJCAI 2021 workshop)
Publication Year :
2021

Abstract

Space debris is a major problem in space exploration. International bodies continuously monitor a large database of orbiting objects and emit warnings in the form of conjunction data messages. An important question for satellite operators is to estimate when fresh information will arrive so that they can react timely but sparingly with satellite maneuvers. We propose a statistical learning model of the message arrival process, allowing us to answer two important questions: (1) Will there be any new message in the next specified time interval? (2) When exactly and with what uncertainty will the next message arrive? The average prediction error for question (2) of our Bayesian Poisson process model is smaller than the baseline in more than 4 hours in a test set of 50k close encounter events.<br />Comment: Presented at AI4Spacecraft (IJCAI 2021 workshop)

Details

Database :
arXiv
Journal :
AI for Spacecraft Longevity conference proceedings (IJCAI 2021 workshop)
Publication Type :
Report
Accession number :
edsarx.2105.08509
Document Type :
Working Paper