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Neural network-assisted sliding mode observer for fault diagnosis of flying wing UAV actuators

  • Wen Qi Zhang
  • , Wenhui Mao
  • , Liangliang Li
  • , Zhen Bao Liu
  • , Zhen Jia
  • , Xiao Wang
  • Northwestern Polytechnical University Xian
  • PetroChina Changqing Oilfield Company

Research output: Contribution to journalArticlepeer-review

Abstract

Actuator degradations in flying-wing UAVs are difficult to diagnose because strong cross-axis aerodynamic coupling and limited control authority can mask weak loss-of-effectiveness (LOE) and incipient jamming under modeling mismatch, wind gusts, and sensor noise. To address this issue, this paper develops a disturbance-fault-decoupled neural network-assisted sliding-mode observer (NN-SMO) for real-time actuator fault detection and magnitude estimation. A nonlinear 6-DOF flying-wing model is used as a physically consistent basis, and a decoupling formulation is introduced to construct a fault-dominant subsystem, improving the structural observability of weak actuator faults. On this subsystem, an radial basis function network approximates the fault term online while a sliding-mode injection suppresses bounded uncertainties; a Lyapunov analysis provides verifiable convergence conditions and gain-selection guidance. The method is evaluated on a closed-loop Simulink platform under a fixed fault-injection time (t = 120 s) and is benchmarked against an EKF-residual detector and lightweight deep temporal models (TCN/LSTM/Transformer) under an identical protocol. For a 30% LOE fault and a small-angle jamming fault, NN-SMO detects the onset within 1.07 and 0.63 s, respectively, achieving area under the curves of 0.971 and 0.986 and root-mean-square errors of 0.047 and 0.031. Performance degradation remains below 5% under +10% sensor noise and ±8 m s−1 gust disturbances, indicating robustness suitable for safety-critical onboard monitoring.

Original languageEnglish
Article number156002
JournalMeasurement Science and Technology
Volume37
Issue number15
DOIs
StatePublished - 10 Apr 2026

Keywords

  • RBF neural network
  • actuator fault diagnosis
  • fault detection and isolation (FDI)
  • flying wing UAV
  • robust state estimation
  • sliding mode observer

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