Development of L1-norm sliding mode observer for sensor fault diagnosis of an industrial gas turbine

Author:

Akbari Mahyar1,Khoshnood Abdol Majid1ORCID,Irani Saied1ORCID

Affiliation:

1. Faculty of Aerospace Engineering, K. N. Toosi University of Technology, Tehran, Iran

Abstract

In this article, a novel approach for model-based sensor fault detection and estimation of gas turbine is presented. The proposed method includes driving a state-space model of gas turbine, designing a novel L1-norm Lyapunov-based observer, and a decision logic which is based on bank of observers. The novel observer is designed using multiple Lyapunov functions based on L1-norm, reducing the estimation noise while increasing the accuracy. The L1-norm observer is similar to sliding mode observer in switching time. The proposed observer also acts as a low-pass filter, subsequently reducing estimation chattering. Since a bank of observers is required in model-based sensor fault detection, a bank of L1-norm observers is designed in this article. Corresponding to the use of the bank of observers, a two-step fault detection decision logic is developed. Furthermore, the proposed state-space model is a hybrid data-driven model which is divided into two models for steady-state and transient conditions, according to the nature of the gas turbine. The model is developed by applying a subspace algorithm to the real field data of SGT-600 (an industrial gas turbine). The proposed model was validated by applying to two other similar gas turbines with different ambient and operational conditions. The results of the proposed approach implementation demonstrate precise gas turbine sensor fault detection and estimation.

Funder

Iran National Science Foundation

Publisher

SAGE Publications

Subject

Mechanical Engineering,Control and Systems Engineering

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1. Data Acquiring System for Gas Turbine Engine’s Dynamic Performance; Build and Validate;Measurement: Interdisciplinary Research and Perspectives;2024-03-07

2. Fault detection and identification for rolling mill main drive system based on integrated observer under iterative learning strategy;Proceedings of the Institution of Mechanical Engineers, Part I: Journal of Systems and Control Engineering;2023-11-08

3. Sensor Fault Diagnosis Based on Multi Generator Countermeasure Network;2022 15th International Congress on Image and Signal Processing, BioMedical Engineering and Informatics (CISP-BMEI);2022-11-05

4. Application of Automatic Motor Control System Based on Sensor Technology;Wireless Communications and Mobile Computing;2022-07-27

5. A New Feature Selection-Aided Observer for Sensor Fault Diagnosis of an Industrial Gas Turbine;IEEE Sensors Journal;2021-08-15

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