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    GLDAN: Global and Local Domain Adaptation Network for Cross-Wind Turbine Fault Diagnosis

    Source: Journal of Engineering for Gas Turbines and Power:;2023:;volume( 146 ):;issue: 003::page 31009-1
    Author:
    Peng, Dandan
    ,
    Desmet, Wim
    ,
    Gryllias, Konstantinos
    DOI: 10.1115/1.4063578
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Operating under harsh conditions and exposed to fluctuating loads for extended periods, wind turbines experience a heightened vulnerability in their key components. Early fault detection is crucial to enhance the reliability of wind turbines, minimize downtime, and optimize power generation efficiency. Although deep learning techniques have been widely applied to fault diagnosis tasks, yielding remarkable performance, practical implementations frequently confront the obstacle of acquiring a substantial quantity of labeled data to train an effective deep learning model. Consequently, this paper introduces an unsupervised global and local domain adaptation network (GLDAN) for fault diagnosis across wind turbines, enabling the model to efficiently transfer acquired knowledge to the target domain in the absence of labeled data. This feature renders it an appropriate solution for situations with limited labeled data availability. Employing adversarial training, GLDAN aligns global domain distributions, diminishing the overall discrepancy between source and target domains, and local domain distributions within a single fault category for both domains, capturing more intricate and specific fault features. The proposed approach is corroborated using actual wind farm data, and comprehensive experimental results demonstrate that GLDAN surpasses deep global domain adaptation methods in cross-wind turbine fault diagnosis, underlining its practical value in the field.
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      GLDAN: Global and Local Domain Adaptation Network for Cross-Wind Turbine Fault Diagnosis

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4295183
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    contributor authorPeng, Dandan
    contributor authorDesmet, Wim
    contributor authorGryllias, Konstantinos
    date accessioned2024-04-24T22:25:12Z
    date available2024-04-24T22:25:12Z
    date copyright11/6/2023 12:00:00 AM
    date issued2023
    identifier issn0742-4795
    identifier othergtp_146_03_031009.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4295183
    description abstractOperating under harsh conditions and exposed to fluctuating loads for extended periods, wind turbines experience a heightened vulnerability in their key components. Early fault detection is crucial to enhance the reliability of wind turbines, minimize downtime, and optimize power generation efficiency. Although deep learning techniques have been widely applied to fault diagnosis tasks, yielding remarkable performance, practical implementations frequently confront the obstacle of acquiring a substantial quantity of labeled data to train an effective deep learning model. Consequently, this paper introduces an unsupervised global and local domain adaptation network (GLDAN) for fault diagnosis across wind turbines, enabling the model to efficiently transfer acquired knowledge to the target domain in the absence of labeled data. This feature renders it an appropriate solution for situations with limited labeled data availability. Employing adversarial training, GLDAN aligns global domain distributions, diminishing the overall discrepancy between source and target domains, and local domain distributions within a single fault category for both domains, capturing more intricate and specific fault features. The proposed approach is corroborated using actual wind farm data, and comprehensive experimental results demonstrate that GLDAN surpasses deep global domain adaptation methods in cross-wind turbine fault diagnosis, underlining its practical value in the field.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleGLDAN: Global and Local Domain Adaptation Network for Cross-Wind Turbine Fault Diagnosis
    typeJournal Paper
    journal volume146
    journal issue3
    journal titleJournal of Engineering for Gas Turbines and Power
    identifier doi10.1115/1.4063578
    journal fristpage31009-1
    journal lastpage31009-7
    page7
    treeJournal of Engineering for Gas Turbines and Power:;2023:;volume( 146 ):;issue: 003
    contenttypeFulltext
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