MLMar 1, 2018

Kernel Embedding Approaches to Orbit Determination of Spacecraft Clusters

arXiv:1803.00650v1
Originality Incremental advance
AI Analysis

This enables autonomous spacecraft operations using low-cost ground stations, though it appears incremental as it builds on existing learning techniques applied to a specific domain.

The paper tackles orbit determination for spacecraft clusters by formulating it as a learning problem, showing that domain generalization and distribution regression techniques can estimate orbits and identify individual satellites under noisy, non-linear observations like Doppler-only data, with validation on real and synthetic datasets.

This paper presents a novel formulation and solution of orbit determination over finite time horizons as a learning problem. We present an approach to orbit determination under very broad conditions that are satisfied for n-body problems. These weak conditions allow us to perform orbit determination with noisy and highly non-linear observations such as those presented by range-rate only (Doppler only) observations. We show that domain generalization and distribution regression techniques can learn to estimate orbits of a group of satellites and identify individual satellites especially with prior understanding of correlations between orbits and provide asymptotic convergence conditions. The approach presented requires only visibility and observability of the underlying state from observations and is particularly useful for autonomous spacecraft operations using low-cost ground stations or sensors. We validate the orbit determination approach using observations of two spacecraft (GRIFEX and MCubed-2) along with synthetic datasets of multiple spacecraft deployments and lunar orbits. We also provide a comparison with the standard techniques (EKF) under highly noisy conditions.

Foundations

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