TY - JOUR
T1 - Novel K-Medoids Based SMOTE Integrated With Locality Preserving Projections for Fault Diagnosis
AU - Zhu, Qun Xiong
AU - Wang, Xin Wei
AU - Zhang, Ning
AU - Xu, Yuan
AU - He, Yan Lin
N1 - Publisher Copyright:
© 1963-2012 IEEE.
PY - 2022
Y1 - 2022
N2 - In the field of the fault diagnosis of industrial processes, there are many problems in process data, such as missing critical fault data, high repeatability of normal state data, and poor representation of faults data, which may reduce the accuracy of fault diagnosis. In this article, a novel K-medoids-based synthetic minority oversampling technique that combines locality preserving projections (KMS-LPP) is proposed for fault diagnosis. First, the synthetic minority sampling technology (SMOTE) is designed based on K-medoid to generate minority fault samples to address the imbalanced problem of data. Second, to extract the key fault-relevant features and reserve the local structure information at the same time, the manifold learning (ML) approach locality preserving projections (LPP) is performed to reduce the dimensionality of data. Finally, the Adaboost. M2, as an ensemble classifier, is conducted for fault classification. Simulations of the Tennessee Eastman process (TEP) are performed for validation of the performance of the presented KMS-LPP method. The obtained results show that KMS-LPP has enhanced the performance of fault diagnosis due to its higher accuracy compared with traditional oversampling and feature extraction methods, which indicates the effectiveness of KMS-LPP.
AB - In the field of the fault diagnosis of industrial processes, there are many problems in process data, such as missing critical fault data, high repeatability of normal state data, and poor representation of faults data, which may reduce the accuracy of fault diagnosis. In this article, a novel K-medoids-based synthetic minority oversampling technique that combines locality preserving projections (KMS-LPP) is proposed for fault diagnosis. First, the synthetic minority sampling technology (SMOTE) is designed based on K-medoid to generate minority fault samples to address the imbalanced problem of data. Second, to extract the key fault-relevant features and reserve the local structure information at the same time, the manifold learning (ML) approach locality preserving projections (LPP) is performed to reduce the dimensionality of data. Finally, the Adaboost. M2, as an ensemble classifier, is conducted for fault classification. Simulations of the Tennessee Eastman process (TEP) are performed for validation of the performance of the presented KMS-LPP method. The obtained results show that KMS-LPP has enhanced the performance of fault diagnosis due to its higher accuracy compared with traditional oversampling and feature extraction methods, which indicates the effectiveness of KMS-LPP.
KW - Data imbalance
KW - fault diagnosis
KW - industrial process
KW - locality preserving projections (LPP)
KW - synthetic minority sampling technology (SMOTE)
UR - http://www.scopus.com/inward/record.url?scp=85141567727&partnerID=8YFLogxK
U2 - 10.1109/TIM.2022.3218551
DO - 10.1109/TIM.2022.3218551
M3 - Article
AN - SCOPUS:85141567727
SN - 0018-9456
VL - 71
JO - IEEE Transactions on Instrumentation and Measurement
JF - IEEE Transactions on Instrumentation and Measurement
M1 - 3528908
ER -