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Data‐driven sensor fault detection and isolation of nonlinear systems: Deep neural‐network Koopman operator

Mohammadhosein Bakhtiaridoust, Fatemeh Negar Irani, Meysam Yadegar, Nader Meskin

Year
2022
Citations
23
Access
Open access

Abstract

Abstract This paper proposes a data‐driven sensor fault detection and isolation approach for the general class of nonlinear systems. The proposed method uses deep neural network architecture to obtain an invariant set of basis functions for the Koopman operator to form a linear predictor for a nonlinear system. Then, the obtained Koopman predictor has been used in a geometric framework for sensor fault detection and isolation purposes without relying on a priori knowledge about the underlying dynamics as well as requiring faulty data, leading to a data‐driven sensor fault detection and isolation framework for nonlinear systems. Finally, the approach's efficacy is demonstrated using simulation case study on a two‐degree of freedom robot arm.

Keywords

Fault detection and isolationArtificial neural networkControl theory (sociology)Nonlinear systemComputer scienceIsolation (microbiology)Operator (biology)Control engineeringFault (geology)Artificial intelligence

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