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A Data-Driven Method for Metric Extraction to Detect Faults in Robot Swarms

Suet Lee, Emma Milner, Sabine Hauert

2022IEEE Robotics and Automation Letters19 citationsDOIOpen Access PDF

Abstract

Robot swarms are increasingly deployed in real-world applications. Making swarms safe will be critical to improve adoption and trust. Fault detection is a useful component in systems which require a level of safety: a key element of which are metrics that allow us to differentiate between faulty and normal (non-faulty) robots - metrics which are measurable on-board the individual robots for self-detection of faults. In this paper, we develop a method for identifying and evaluating such metrics and discuss how these metrics may be used in building a model for fault detection. We demonstrate this method for real-time error detection in a realistic use-case: intralogistics using swarms. We show that we are able to identify metrics of large effect size for various faults, demonstrating the potency of metrics selected in this way with a simple fault detection model.

Topics & Concepts

Fault detection and isolationComputer scienceMetric (unit)RobotKey (lock)Component (thermodynamics)Real-time computingData miningFault (geology)Artificial intelligenceDistributed computingReliability engineeringEngineeringComputer securityPhysicsActuatorOperations managementSeismologyGeologyThermodynamicsAnomaly Detection Techniques and ApplicationsSoftware System Performance and ReliabilitySoftware Testing and Debugging Techniques
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