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Sensor Fault Diagnosis Using a Machine Fuzzy Lyapunov-based Computed Ratio Algorithm

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Alternative Title
Sensor Fault Diagnosis Using a Machine Fuzzy Lyapunov-based Computed Ratio Algorithm
Abstract
Anomaly identification for internal combustion engine (ICE) sensors has become an important research area in recent years. In this work, a proposed indirect fuzzy Lyapunov-based computed ratio observer integrated with a support vector machine (SVM) was designed for sensor fault classification. The proposed fuzzy Lyapunov-based computed ratio observer integrated with SVM has three main layers. In the preprocessing (first) layer, the resampled root mean square (RMS) signals are extracted from the original signals to the designed indirect observer. The second (observation) layer is the principal part with the proposed indirect fuzzy sensor-fault-classification technique. This layer has two sub-layers: signal modeling and estimation. The Gaussian autoregressive-Laguerre approach integrated with the fuzzy approach is designed for resampled RMS fuel-to-air-ratio normal signal modeling, while the subsequent sub-layer is used for resampled RMS fuel-to-air-ratio signal estimation using the proposed fuzzy Lyapunov-based computed ratio observer. The third layer, for residual signal generation and classification, is used to identify ICE sensor anomalies, where residual signals are generated by the difference between the original and estimated resampled RMS fuel-to-air-ratio signals. Moreover, SVM is suggested for residual signal classification. To test the effectiveness of the proposed method, the results are compared with two approaches: a Lyapunov-based computed ratio observer and a computed ratio observer. The results show that the accuracy of sensor anomaly classification by the proposed fuzzy Lyapunov-based computed ratio observer is 98.17%. Furthermore, the proposed scheme improves the accuracy of sensor fault classification by 8.37%, 2.17%, 6.17%, 4.57%, and 5.37% compared to other existing methods such as the computed ratio observer, the Lyapunov-based computed ratio observer, fuzzy feedback linearization observation, self-tuning fuzzy robust multi-integral observer, and Kalman filter technique, respectively.
Author(s)
Shahnaz TayebiHaghighiInsoo Koo
Issued Date
2022
Type
Article
Keyword
internal combustion enginesensor anomaly detectionGaussian autoregressive methodfuzzy approachcomputed ratio observerLyapunov robust methodsupport vector machine
DOI
10.3390/s22082974
URI
https://oak.ulsan.ac.kr/handle/2021.oak/14516
Publisher
SENSORS
Language
영어
ISSN
1424-8220
Citation Volume
22
Citation Number
8
Citation Start Page
1
Citation End Page
19
Appears in Collections:
Medicine > Nursing
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