Wind Power Converter Fault Diagnosis Using Reduced Kernel PCA-Based BiLSTM

Author:

Attouri Khadija1,Mansouri Majdi2ORCID,Hajji Mansour1,Kouadri Abdelmalek3,Bouzrara Kais4ORCID,Nounou Hazem2

Affiliation:

1. Research Unit Advanced Materials and Nanotechnologies (UR16ES03), Higher Institute of Applied Sciences and Technology of Kasserine, Kairouan University, Kasserine 1200, Tunisia

2. Electrical and Computer Engineering Program, Texas A&M University at Qatar, Doha P.O. Box 23874, Qatar

3. Signals and Systems Laboratory, Institute of Electrical and Electronic Engineering, University M’Hamed Bougara of Boumerdes, Avevue of Independence, Boumerdes 35000, Algeria

4. Laboratory of Automatic Signal and Image Processing, National Engineering School of Monastir, Monastir 5035, Tunisia

Abstract

In this paper, we present a novel and effective fault detection and diagnosis (FDD) method for a wind energy converter (WEC) system with a nominal power of 15 KW, which is designed to significantly reduce the complexity and computation time and possibly increase the accuracy of fault diagnosis. This strategy involves three significant steps: first, a size reduction procedure is applied to the training dataset, which uses hierarchical K-means clustering and Euclidean distance schemes; second, both significantly reduced training datasets are utilized by the KPCA technique to extract and select the most sensitive and significant features; and finally, in order to distinguish between the diverse WEC system operating modes, the selected features are used to train a bidirectional long-short-term memory classifier (BiLSTM). In this study, various fault scenarios (short-circuit (SC) faults and open-circuit (OC) faults) were injected, and each scenario comprised different cases (simple, multiple, and mixed faults) on different sides and locations (generator-side converter and grid-side converter) to ensure a comprehensive and global evaluation. The obtained results show that the proposed strategy for FDD via both applied dataset size reduction methods not only improves the accuracy but also provides an efficient reduction in computation time and storage space.

Funder

Qatar National Library

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction

Reference47 articles.

1. A survey of artificial neural network in wind energy systems;Perez;Appl. Energy,2018

2. Wind energy conversion systems fault diagnosis using wavelet analysis;Benbouzid;Int. Rev. Electr. Eng.,2008

3. Convolutional neural network fault classification based on time-series analysis for benchmark wind turbine machine;Rahimilarki;Renew. Energy,2022

4. Adaptive residual CNN-based fault detection and diagnosis system of small modular reactors;Yao;Appl. Soft Comput.,2022

5. Wind turbine fault detection based on SCADA data analysis using ANN;Zhang;Adv. Manuf.,2014

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