Score: 0

A Collaborative Reasoning Framework for Anomaly Diagnostics in Underwater Robotics

Published: November 4, 2025 | arXiv ID: 2511.03075v1

By: Markus Buchholz, Ignacio Carlucho, Yvan R. Petillot

Potential Business Impact:

Helps robots learn from humans to fix problems.

Business Areas:
Autonomous Vehicles Transportation

The safe deployment of autonomous systems in safety-critical settings requires a paradigm that combines human expertise with AI-driven analysis, especially when anomalies are unforeseen. We introduce AURA (Autonomous Resilience Agent), a collaborative framework for anomaly and fault diagnostics in robotics. AURA integrates large language models (LLMs), a high-fidelity digital twin (DT), and human-in-the-loop interaction to detect and respond to anomalous behavior in real time. The architecture uses two agents with clear roles: (i) a low-level State Anomaly Characterization Agent that monitors telemetry and converts signals into a structured natural-language problem description, and (ii) a high-level Diagnostic Reasoning Agent that conducts a knowledge-grounded dialogue with an operator to identify root causes, drawing on external sources. Human-validated diagnoses are then converted into new training examples that refine the low-level perceptual model. This feedback loop progressively distills expert knowledge into the AI, transforming it from a static tool into an adaptive partner. We describe the framework's operating principles and provide a concrete implementation, establishing a pattern for trustworthy, continually improving human-robot teams.

Page Count
8 pages

Category
Computer Science:
Robotics