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  5. Fault detection for nonlinear networked systems based on quantization and dropout compensation: An interval type-2 fuzzy-model method

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Article
English
2016

Fault detection for nonlinear networked systems based on quantization and dropout compensation: An interval type-2 fuzzy-model method

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English
2016
Neurocomputing
Vol 191
DOI: 10.1016/j.neucom.2016.01.061

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Hamid Reza Karimi
Hamid Reza Karimi

Politecnico di Milano

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Chengwei Wu
Hongyi Li
Hak‐Keung Lam
+1 more

Abstract

This paper investigates the problem of filter-based fault detection for a class of nonlinear networked systems subject to parameter uncertainties in the framework of the interval type-2 (IT2) T–S fuzzy model-based approach. The Bernoulli random distribution process and logarithm quantizer are used to describe the measurement loss and signals quantization, respectively. In the framework of the IT2 T–S fuzzy model, the parameter uncertainty is handled by the membership functions with lower and upper bounds. A novel IT2 fault detection filter is designed to guarantee the residual system to be stochastically stable and satisfy the predefined H ∞ performance. It should be mentioned that the proposed filter does not use the same premise variables, number of fuzzy rules and membership functions as the fuzzy model, which will lead to more flexible design. Finally, two illustrative examples are provided to demonstrate the usefulness of the approach proposed in this paper.

How to cite this publication

Chengwei Wu, Hongyi Li, Hak‐Keung Lam, Hamid Reza Karimi (2016). Fault detection for nonlinear networked systems based on quantization and dropout compensation: An interval type-2 fuzzy-model method. Neurocomputing, 191, pp. 409-420, DOI: 10.1016/j.neucom.2016.01.061.

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Article

Year

2016

Authors

4

Datasets

0

Total Files

0

Language

English

Journal

Neurocomputing

DOI

10.1016/j.neucom.2016.01.061

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