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Condition monitoring of wind turbine using novel deep learning method and dynamic kernel principal components Mahalanobis distance

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Condition monitoring of wind turbine using novel deep learning method and dynamic kernel principal components Mahalanobis distance. / Chen, Wenhe; Zhou, Hanting; Cheng, Longsheng et al.
In: Engineering Applications of Artificial Intelligence, Vol. 125, 106757, 31.10.2023.

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Chen W, Zhou H, Cheng L, Liu J, Xia M. Condition monitoring of wind turbine using novel deep learning method and dynamic kernel principal components Mahalanobis distance. Engineering Applications of Artificial Intelligence. 2023 Oct 31;125:106757. Epub 2023 Jul 17. doi: 10.1016/j.engappai.2023.106757

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@article{4bc9fd92c4cc4023b580ec4a405f510b,
title = "Condition monitoring of wind turbine using novel deep learning method and dynamic kernel principal components Mahalanobis distance",
abstract = "Condition monitoring (CM) of wind turbine (WT) has been increasingly adopted for its fault diagnosis and maintenance decision-making. However, the data collected in CM is typically noisy, multidimensional, and highly nonlinear, which causes significant challenges in achieving the effective CM of WT. This paper proposes a novel CM method using a deep learning model with temporal pattern attention (TPA) and a dynamic kernel principal components Mahalanobis distance (DKPMD). The method can evaluate the WT performance accurately for detecting faults. First, outliers are recognized and removed using isolation forest improved by sparse autoencoder and fuzzy c-means clustering (FSIF) from raw wind turbine data of health state for enhancing the quality and reliability of data in modeling. Then, a gated recurrent unit (GRU) is developed for data reconstruction of the objective variables using LassoNet and TPA, which can capture the short- and long-term temporal relationships under different time steps based on selected variables. Meanwhile, kernel RMSE (KRMSE) is applied as a loss function, which avoids the negative effects of large reconstructed errors in parameter optimization. A condition index (CI) is constructed using DKPMD based on the reconstructed errors to consider the dynamic correlation between the variables. Finally, a delay perception-based IF(DPIF) is utilized to determine the threshold. Experiments with data from real WT demonstrate the effectiveness of the developed approach in detecting early abnormal conditions, which outperforms other state-of-the-art methods.",
keywords = "Wind turbine, Temporal pattern attention (TPA), Condition monitoring (CM), Kernel RMSE (KRMSE), Anomaly detection",
author = "Wenhe Chen and Hanting Zhou and Longsheng Cheng and Jing Liu and Min Xia",
year = "2023",
month = oct,
day = "31",
doi = "10.1016/j.engappai.2023.106757",
language = "English",
volume = "125",
journal = "Engineering Applications of Artificial Intelligence",
issn = "0952-1976",
publisher = "Elsevier Limited",

}

RIS

TY - JOUR

T1 - Condition monitoring of wind turbine using novel deep learning method and dynamic kernel principal components Mahalanobis distance

AU - Chen, Wenhe

AU - Zhou, Hanting

AU - Cheng, Longsheng

AU - Liu, Jing

AU - Xia, Min

PY - 2023/10/31

Y1 - 2023/10/31

N2 - Condition monitoring (CM) of wind turbine (WT) has been increasingly adopted for its fault diagnosis and maintenance decision-making. However, the data collected in CM is typically noisy, multidimensional, and highly nonlinear, which causes significant challenges in achieving the effective CM of WT. This paper proposes a novel CM method using a deep learning model with temporal pattern attention (TPA) and a dynamic kernel principal components Mahalanobis distance (DKPMD). The method can evaluate the WT performance accurately for detecting faults. First, outliers are recognized and removed using isolation forest improved by sparse autoencoder and fuzzy c-means clustering (FSIF) from raw wind turbine data of health state for enhancing the quality and reliability of data in modeling. Then, a gated recurrent unit (GRU) is developed for data reconstruction of the objective variables using LassoNet and TPA, which can capture the short- and long-term temporal relationships under different time steps based on selected variables. Meanwhile, kernel RMSE (KRMSE) is applied as a loss function, which avoids the negative effects of large reconstructed errors in parameter optimization. A condition index (CI) is constructed using DKPMD based on the reconstructed errors to consider the dynamic correlation between the variables. Finally, a delay perception-based IF(DPIF) is utilized to determine the threshold. Experiments with data from real WT demonstrate the effectiveness of the developed approach in detecting early abnormal conditions, which outperforms other state-of-the-art methods.

AB - Condition monitoring (CM) of wind turbine (WT) has been increasingly adopted for its fault diagnosis and maintenance decision-making. However, the data collected in CM is typically noisy, multidimensional, and highly nonlinear, which causes significant challenges in achieving the effective CM of WT. This paper proposes a novel CM method using a deep learning model with temporal pattern attention (TPA) and a dynamic kernel principal components Mahalanobis distance (DKPMD). The method can evaluate the WT performance accurately for detecting faults. First, outliers are recognized and removed using isolation forest improved by sparse autoencoder and fuzzy c-means clustering (FSIF) from raw wind turbine data of health state for enhancing the quality and reliability of data in modeling. Then, a gated recurrent unit (GRU) is developed for data reconstruction of the objective variables using LassoNet and TPA, which can capture the short- and long-term temporal relationships under different time steps based on selected variables. Meanwhile, kernel RMSE (KRMSE) is applied as a loss function, which avoids the negative effects of large reconstructed errors in parameter optimization. A condition index (CI) is constructed using DKPMD based on the reconstructed errors to consider the dynamic correlation between the variables. Finally, a delay perception-based IF(DPIF) is utilized to determine the threshold. Experiments with data from real WT demonstrate the effectiveness of the developed approach in detecting early abnormal conditions, which outperforms other state-of-the-art methods.

KW - Wind turbine

KW - Temporal pattern attention (TPA)

KW - Condition monitoring (CM)

KW - Kernel RMSE (KRMSE)

KW - Anomaly detection

U2 - 10.1016/j.engappai.2023.106757

DO - 10.1016/j.engappai.2023.106757

M3 - Journal article

VL - 125

JO - Engineering Applications of Artificial Intelligence

JF - Engineering Applications of Artificial Intelligence

SN - 0952-1976

M1 - 106757

ER -