Satellite Navigation and Coordination with Limited Information Sharing

11/07/2022
by   Sydney Dolan, et al.
0

We explore space traffic management as an application of collision-free navigation in multi-agent systems where vehicles have limited observation and communication ranges. We investigate the effectiveness of transferring a collision avoidance multi-agent reinforcement (MARL) model trained on a ground environment to a space one. We demonstrate that the transfer learning model outperforms a model that is trained directly on the space environment. Furthermore, we find that our approach works well even when we consider the perturbations to satellite dynamics caused by the Earth's oblateness. Finally, we show how our methods can be used to evaluate the benefits of information-sharing between satellite operators in order to improve coordination.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/14/2018

Hierarchical Reinforcement Learning Framework towards Multi-agent Navigation

This paper proposes a navigation algorithm ori- ented to multi-agent dyn...
research
10/11/2017

ALAN: Adaptive Learning for Multi-Agent Navigation

In multi-agent navigation, agents need to move towards their goal locati...
research
02/27/2023

Exposure-Based Multi-Agent Inspection of a Tumbling Target Using Deep Reinforcement Learning

As space becomes more congested, on orbit inspection is an increasingly ...
research
02/06/2019

Space Navigator: a Tool for the Optimization of Collision Avoidance Maneuvers

The number of space objects will grow several times in a few years due t...
research
04/01/2022

Design of Low Thrust Controlled Maneuvers to Chase and De-orbit the Space Debris

Over the several decades, the space debris at LEO has grown rapidly whic...
research
09/22/2016

Deep-Learned Collision Avoidance Policy for Distributed Multi-Agent Navigation

High-speed, low-latency obstacle avoidance that is insensitive to sensor...

Please sign up or login with your details

Forgot password? Click here to reset