LGSYJan 28, 2025

Fine-Tuned Language Models as Space Systems Controllers

arXiv:2501.16588v15 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses the challenge of developing general controllers for space systems, which is incremental as it applies existing fine-tuning methods to a new domain.

The paper tackles the problem of controlling space systems by fine-tuning language models, showing they can generate accurate multi-dimensional vectors with up to 10 significant digits for tasks like orbit transfer and powered descent guidance, while requiring less data than traditional deep neural networks and generalizing well.

Large language models (LLMs), or foundation models (FMs), are pretrained transformers that coherently complete sentences auto-regressively. In this paper, we show that LLMs can control simplified space systems after some additional training, called fine-tuning. We look at relatively small language models, ranging between 7 and 13 billion parameters. We focus on four problems: a three-dimensional spring toy problem, low-thrust orbit transfer, low-thrust cislunar control, and powered descent guidance. The fine-tuned LLMs are capable of controlling systems by generating sufficiently accurate outputs that are multi-dimensional vectors with up to 10 significant digits. We show that for several problems the amount of data required to perform fine-tuning is smaller than what is generally required of traditional deep neural networks (DNNs), and that fine-tuned LLMs are good at generalizing outside of the training dataset. Further, the same LLM can be fine-tuned with data from different problems, with only minor performance degradation with respect to LLMs trained for a single application. This work is intended as a first step towards the development of a general space systems controller.

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