CVAILGROSep 20, 2023

Orbital AI-based Autonomous Refuelling Solution

arXiv:2309.11648v1h-index: 58
Originality Incremental advance
AI Analysis

This addresses cost reduction and sensor dependency issues for space agencies and companies involved in orbital operations, though it is incremental as it builds on existing AI and camera technologies.

The paper tackled the problem of using visible wavelength cameras as the primary sensor for space docking and on-orbit servicing, reducing reliance on lidar, and achieved position estimates within 1% range-normalized and attitude estimates within 1 degree on synthetic ISS docking data.

Cameras are rapidly becoming the choice for on-board sensors towards space rendezvous due to their small form factor and inexpensive power, mass, and volume costs. When it comes to docking, however, they typically serve a secondary role, whereas the main work is done by active sensors such as lidar. This paper documents the development of a proposed AI-based (artificial intelligence) navigation algorithm intending to mature the use of on-board visible wavelength cameras as a main sensor for docking and on-orbit servicing (OOS), reducing the dependency on lidar and greatly reducing costs. Specifically, the use of AI enables the expansion of the relative navigation solution towards multiple classes of scenarios, e.g., in terms of targets or illumination conditions, which would otherwise have to be crafted on a case-by-case manner using classical image processing methods. Multiple convolutional neural network (CNN) backbone architectures are benchmarked on synthetically generated data of docking manoeuvres with the International Space Station (ISS), achieving position and attitude estimates close to 1% range-normalised and 1 deg, respectively. The integration of the solution with a physical prototype of the refuelling mechanism is validated in laboratory using a robotic arm to simulate a berthing procedure.

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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