Litcius/Paper detail

Reconfigurable Fault-Tolerant Control for Spacecraft Formation Flying Based on Iterative Learning Algorithms

Yule Gui, Qingxian Jia, Huayi Li, Yuehua Cheng

2022Applied Sciences20 citationsDOIOpen Access PDF

Abstract

This paper investigates the issues of iterative learning algorithm-based robust thruster fault reconstruction and reconfigurable fault-tolerant control for spacecraft formation flying systems subject to space perturbations. Motivated by sliding mode methodology, a novel iterative learning observer (ILO) was developed to robustly reconstruct the thruster faults. Based on the fault signals obtained from the ILO, a learning output–feedback fault-tolerant control (LOF2TC) approach was explored such that the closed-loop spacecraft formation configuration was accurately maintained in the presence of space perturbations and thruster faults. Numerical simulations were employed to demonstrate the effectiveness and superiority of the proposed ILO-based fault-reconstructing approach and LOF2TC-based configuration maintenance approach for spacecraft formation flying systems.

Topics & Concepts

SpacecraftIterative learning controlObserver (physics)Control theory (sociology)Fault toleranceComputer scienceAlgorithmControl engineeringControl (management)EngineeringArtificial intelligenceAerospace engineeringPhysicsDistributed computingQuantum mechanicsSpace Satellite Systems and ControlAdvanced Control Systems OptimizationAstro and Planetary Science