Large Language Model-based Decision-making for COLREGs and the Control of Autonomous Surface Vehicles
Klinsmann Agyei, Pouria Sarhadi, Wasif Naeem

TL;DR
This paper introduces the first application of Large Language Models for decision-making and control in autonomous surface vehicles, enabling compliance with maritime COLREGs through explainable AI.
Contribution
It presents a novel LLM-based high-level decision-making framework for ASVs that ensures COLREGs compliance and integrates with local planning and control algorithms.
Findings
System maintains COLREGs compliance in tests
Achieves accurate waypoint tracking
Provides human-interpretable decision reasoning
Abstract
In the field of autonomous surface vehicles (ASVs), devising decision-making and obstacle avoidance solutions that address maritime COLREGs (Collision Regulations), primarily defined for human operators, has long been a pressing challenge. Recent advancements in explainable Artificial Intelligence (AI) and machine learning have shown promise in enabling human-like decision-making. Notably, significant developments have occurred in the application of Large Language Models (LLMs) to the decision-making of complex systems, such as self-driving cars. The textual and somewhat ambiguous nature of COLREGs (from an algorithmic perspective), however, poses challenges that align well with the capabilities of LLMs, suggesting that LLMs may become increasingly suitable for this application soon. This paper presents and demonstrates the first application of LLM-based decision-making and control for…
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Taxonomy
TopicsRisk and Safety Analysis · Advanced Data Processing Techniques · Maritime Navigation and Safety
