EPCELGMLJan 15, 2018

Improving Orbit Prediction Accuracy through Supervised Machine Learning

arXiv:1801.04856v199 citations
Originality Incremental advance
AI Analysis

This work addresses collision avoidance challenges in space operations, but it appears incremental as it builds on existing physics-based methods with learning-based error reduction.

This paper tackles the problem of inaccurate orbit predictions for resident space objects (RSOs) by integrating physics-based models with a supervised machine learning approach, resulting in improved trajectory prediction accuracy demonstrated through simulation-based tests.

Due to the lack of information such as the space environment condition and resident space objects' (RSOs') body characteristics, current orbit predictions that are solely grounded on physics-based models may fail to achieve required accuracy for collision avoidance and have led to satellite collisions already. This paper presents a methodology to predict RSOs' trajectories with higher accuracy than that of the current methods. Inspired by the machine learning (ML) theory through which the models are learned based on large amounts of observed data and the prediction is conducted without explicitly modeling space objects and space environment, the proposed ML approach integrates physics-based orbit prediction algorithms with a learning-based process that focuses on reducing the prediction errors. Using a simulation-based space catalog environment as the test bed, the paper demonstrates three types of generalization capability for the proposed ML approach: 1) the ML model can be used to improve the same RSO's orbit information that is not available during the learning process but shares the same time interval as the training data; 2) the ML model can be used to improve predictions of the same RSO at future epochs; and 3) the ML model based on a RSO can be applied to other RSOs that share some common features.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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