Robust Fault Diagnosis for a Quadrotor with Actuator Fault

Authors

  • N. P. Nguyen
  • S. K. Hong

How to Cite

P. Nguyen, N., & K. Hong, S. (2018). Robust Fault Diagnosis for a Quadrotor with Actuator Fault. International Journal of Engineering and Technology, 7(4.39), 74-77. https://doi.org/10.14419/ijet.v7i4.39.23709

Received date: December 12, 2018

Accepted date: December 12, 2018

Published date: December 13, 2018

DOI:

https://doi.org/10.14419/ijet.v7i4.39.23709

Keywords:

Quadrotorter, adaptive observer, sliding mode observer, fault estimation, fault diagnosis.

Abstract

Background/Objectives: Fault diagnosis (FD) is a main role in active fault tolerant control system. It can not only determine the location but also estimate the magnitude of fault.

Methods/Statistical analysis: This article presents an adaptive fault diagnosis approach for a quadrotor with a simulated actuator fault. Firstly, the dynamics of the quadrotor are considered as a state space model. The magnitude of fault is identified through an adaptive law. Designed matrices and parameters are solving by linear matrix inequalities (LMI).

Findings: Unlike previous studies, the present method can determine time-varying actuator faults with disturbances consideration.

Improvements/Applications: Simulation results demonstrate that proposed method can estimate time-varying faults with high accuracy.

 

 

References

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How to Cite

P. Nguyen, N., & K. Hong, S. (2018). Robust Fault Diagnosis for a Quadrotor with Actuator Fault. International Journal of Engineering and Technology, 7(4.39), 74-77. https://doi.org/10.14419/ijet.v7i4.39.23709

Received date: December 12, 2018

Accepted date: December 12, 2018

Published date: December 13, 2018