Litcius/Paper detail

Fault-tolerant Control of Robot Manipulators with Sensory Faults using Unbiased Active Inference

Mohamed Baioumy, Corrado Pezzato, Riccardo Ferrari, Carlos Hernández, Nick Hawes

20212021 European Control Conference (ECC)16 citationsDOIOpen Access PDF

Abstract

This work presents a novel fault-tolerant control scheme based on active inference. Specifically, a new formulation of active inference which, unlike previous solutions, provides unbiased state estimation and simplifies the definition of probabilistically robust thresholds for fault-tolerant control of robotic systems using the free-energy. The proposed solution makes use of the sensory prediction errors in the free-energy for the generation of residuals and thresholds for fault detection and isolation of sensory faults, and it does not require additional controllers for fault recovery. Results validating the benefits in a simulated 2-DOF manipulator are presented, and future directions to improve the current fault recovery approach are discussed.

Topics & Concepts

InferenceFault toleranceFault detection and isolationComputer scienceControl theory (sociology)Fault (geology)Control engineeringSensory systemRobot manipulatorRobotControl (management)Artificial intelligenceEngineeringDistributed computingGeologySeismologyCognitive psychologyPsychologyActuatorNeural dynamics and brain functionAdvanced Memory and Neural ComputingEmbodied and Extended Cognition