Goal-oriented Communication for Fast and Robust Robotic Fault Detection and Recovery
Shutong Chen, Adnan Aijaz, and Yansha Deng

TL;DR
This paper introduces a goal-oriented communication framework for robotic fault detection and recovery that significantly reduces fault detection time and increases task success rates by integrating semantic scene understanding and specialized language models.
Contribution
The paper presents a novel goal-oriented communication framework that optimizes the 3C loop for fast, robust fault detection and recovery in robotics, including new semantic scene graph analysis and tailored language models.
Findings
Reduces fault detection and recovery time by up to 82.6%
Increases task success rate by up to 76%
Demonstrates effectiveness in extensive simulations
Abstract
Autonomous robotic systems are widely deployed in smart factories and operate in dynamic, uncertain, and human-involved environments that require low-latency and robust fault detection and recovery (FDR). However, existing FDR frameworks exhibit various limitations, such as significant delays in communication and computation, and unreliability in robot motion/trajectory generation, mainly because the communication-computation-control (3C) loop is designed without considering the downstream FDR goal. To address this, we propose a novel Goal-oriented Communication (GoC) framework that jointly designs the 3C loop tailored for fast and robust robotic FDR, with the goal of minimising the FDR time while maximising the robotic task (e.g., workpiece sorting) success rate. For fault detection, our GoC framework innovatively defines and extracts the 3D scene graph (3D-SG) as the semantic…
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Taxonomy
TopicsAdvanced Neural Network Applications · Multimodal Machine Learning Applications · Robotics and Sensor-Based Localization
