Comparative Performance Analysis of Deep Learning-Based Diagnostic and Predictive Models in Grid-Integrated Doubly Fed Induction Generator Wind Turbines
As the deployment of wind energy systems continues to rise globally, ensuring the reliability and efficiency of grid-connected Doubly Fed Induction Generator (DFIG) wind turbines has become increasingly critical. Two core challenges faced by these systems include fault diagnosis in power electronic...
| 發表在: | Energies |
|---|---|
| Main Authors: | , |
| 格式: | Article |
| 語言: | 英语 |
| 出版: |
MDPI AG
2025-09-01
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| 主題: | |
| 在線閱讀: | https://www.mdpi.com/1996-1073/18/17/4725 |
| _version_ | 1849267396135616512 |
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| author | Ramesh Kumar Behara Akshay Kumar Saha |
| author_facet | Ramesh Kumar Behara Akshay Kumar Saha |
| author_sort | Ramesh Kumar Behara |
| collection | DOAJ |
| container_title | Energies |
| description | As the deployment of wind energy systems continues to rise globally, ensuring the reliability and efficiency of grid-connected Doubly Fed Induction Generator (DFIG) wind turbines has become increasingly critical. Two core challenges faced by these systems include fault diagnosis in power electronic converters and accurate prediction of wind conditions for adaptive power control. Recent advancements in artificial intelligence (AI) have introduced powerful tools for addressing these challenges. This study presents the first unified comparative performance analysis of two deep learning-based models: (i) a Convolutional Neural Network-Long Short-Term Memory CNN-LSTM with Variational Mode Decomposition for real-time Grid Side Converter (GSC) fault diagnosis, and (ii) an Incremental Generative Adversarial Network (IGAN) for wind attribute prediction and adaptive droop gain control, applied to grid-integrated DFIG wind turbines. Unlike prior studies that address fault diagnosis and wind forecasting separately, both models are evaluated within a common MATLAB/Simulink framework using identical wind profiles, disturbances, and system parameters, ensuring fair and reproducible benchmarking. Beyond accuracy, the analysis incorporates multi-dimensional performance metrics such as inference latency, robustness to disturbances, scalability, and computational efficiency, offering a more holistic assessment than prior work. The results reveal complementary strengths: the CNN-LSTM achieves 88% accuracy with 15 ms detection latency for converter faults, while the IGAN delivers more than 95% prediction accuracy and enhances frequency stability by 18%. Comparative analysis shows that while the CNN-LSTM model is highly suitable for rapid fault localization and maintenance planning, the IGAN model excels in predictive control and grid performance optimization. Unlike prior studies, this work establishes the first direct comparative framework for diagnostic and predictive AI models in DFIG systems, providing novel insights into their complementary strengths and practical deployment trade-offs. This dual evaluation lays the groundwork for hybrid two-tier AI frameworks in smart wind energy systems. By establishing a reproducible methodology and highlighting practical deployment trade-offs, this study offers valuable guidance for researchers and practitioners seeking explainable, adaptive, and computationally efficient AI solutions for next-generation renewable energy integration. |
| format | Article |
| id | doaj-art-8b7f80fcd6cb4ff2be6988bd7b5245ea |
| institution | Directory of Open Access Journals |
| issn | 1996-1073 |
| language | English |
| publishDate | 2025-09-01 |
| publisher | MDPI AG |
| record_format | Article |
| spelling | doaj-art-8b7f80fcd6cb4ff2be6988bd7b5245ea2025-09-12T12:21:34ZengMDPI AGEnergies1996-10732025-09-011817472510.3390/en18174725Comparative Performance Analysis of Deep Learning-Based Diagnostic and Predictive Models in Grid-Integrated Doubly Fed Induction Generator Wind TurbinesRamesh Kumar Behara0Akshay Kumar Saha1Electrical, Electronic, and Computer Engineering, University of KwaZulu-Natal, Durban 4041, South AfricaElectrical, Electronic, and Computer Engineering, University of KwaZulu-Natal, Durban 4041, South AfricaAs the deployment of wind energy systems continues to rise globally, ensuring the reliability and efficiency of grid-connected Doubly Fed Induction Generator (DFIG) wind turbines has become increasingly critical. Two core challenges faced by these systems include fault diagnosis in power electronic converters and accurate prediction of wind conditions for adaptive power control. Recent advancements in artificial intelligence (AI) have introduced powerful tools for addressing these challenges. This study presents the first unified comparative performance analysis of two deep learning-based models: (i) a Convolutional Neural Network-Long Short-Term Memory CNN-LSTM with Variational Mode Decomposition for real-time Grid Side Converter (GSC) fault diagnosis, and (ii) an Incremental Generative Adversarial Network (IGAN) for wind attribute prediction and adaptive droop gain control, applied to grid-integrated DFIG wind turbines. Unlike prior studies that address fault diagnosis and wind forecasting separately, both models are evaluated within a common MATLAB/Simulink framework using identical wind profiles, disturbances, and system parameters, ensuring fair and reproducible benchmarking. Beyond accuracy, the analysis incorporates multi-dimensional performance metrics such as inference latency, robustness to disturbances, scalability, and computational efficiency, offering a more holistic assessment than prior work. The results reveal complementary strengths: the CNN-LSTM achieves 88% accuracy with 15 ms detection latency for converter faults, while the IGAN delivers more than 95% prediction accuracy and enhances frequency stability by 18%. Comparative analysis shows that while the CNN-LSTM model is highly suitable for rapid fault localization and maintenance planning, the IGAN model excels in predictive control and grid performance optimization. Unlike prior studies, this work establishes the first direct comparative framework for diagnostic and predictive AI models in DFIG systems, providing novel insights into their complementary strengths and practical deployment trade-offs. This dual evaluation lays the groundwork for hybrid two-tier AI frameworks in smart wind energy systems. By establishing a reproducible methodology and highlighting practical deployment trade-offs, this study offers valuable guidance for researchers and practitioners seeking explainable, adaptive, and computationally efficient AI solutions for next-generation renewable energy integration.https://www.mdpi.com/1996-1073/18/17/4725DFIG wind turbinesCNN-LSTMincremental GANfault diagnosiswind predictiondeep learning |
| spellingShingle | Ramesh Kumar Behara Akshay Kumar Saha Comparative Performance Analysis of Deep Learning-Based Diagnostic and Predictive Models in Grid-Integrated Doubly Fed Induction Generator Wind Turbines DFIG wind turbines CNN-LSTM incremental GAN fault diagnosis wind prediction deep learning |
| title | Comparative Performance Analysis of Deep Learning-Based Diagnostic and Predictive Models in Grid-Integrated Doubly Fed Induction Generator Wind Turbines |
| title_full | Comparative Performance Analysis of Deep Learning-Based Diagnostic and Predictive Models in Grid-Integrated Doubly Fed Induction Generator Wind Turbines |
| title_fullStr | Comparative Performance Analysis of Deep Learning-Based Diagnostic and Predictive Models in Grid-Integrated Doubly Fed Induction Generator Wind Turbines |
| title_full_unstemmed | Comparative Performance Analysis of Deep Learning-Based Diagnostic and Predictive Models in Grid-Integrated Doubly Fed Induction Generator Wind Turbines |
| title_short | Comparative Performance Analysis of Deep Learning-Based Diagnostic and Predictive Models in Grid-Integrated Doubly Fed Induction Generator Wind Turbines |
| title_sort | comparative performance analysis of deep learning based diagnostic and predictive models in grid integrated doubly fed induction generator wind turbines |
| topic | DFIG wind turbines CNN-LSTM incremental GAN fault diagnosis wind prediction deep learning |
| url | https://www.mdpi.com/1996-1073/18/17/4725 |
| work_keys_str_mv | AT rameshkumarbehara comparativeperformanceanalysisofdeeplearningbaseddiagnosticandpredictivemodelsingridintegrateddoublyfedinductiongeneratorwindturbines AT akshaykumarsaha comparativeperformanceanalysisofdeeplearningbaseddiagnosticandpredictivemodelsingridintegrateddoublyfedinductiongeneratorwindturbines |
