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Alarms-related wind turbine fault detection based on kernel support vector machines

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Alarms-related wind turbine fault detection based on kernel support vector machines. / Wu, Yueqi; Ma, Xiandong.
In: The Journal of Engineering, Vol. 2019, No. 18, 01.07.2019, p. 4980 – 4985.

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Wu Y, Ma X. Alarms-related wind turbine fault detection based on kernel support vector machines. The Journal of Engineering. 2019 Jul 1;2019(18):4980 – 4985. Epub 2019 Mar 15. doi: 10.1049/joe.2018.9283

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Wu, Yueqi ; Ma, Xiandong. / Alarms-related wind turbine fault detection based on kernel support vector machines. In: The Journal of Engineering. 2019 ; Vol. 2019, No. 18. pp. 4980 – 4985.

Bibtex

@article{e95b61bcaf2c45f9b346750071b16389,
title = "Alarms-related wind turbine fault detection based on kernel support vector machines",
abstract = "Wind power is playing an increasingly significant role in daily life. However, wind farms are usually far away from cities especially for offshore wind farms, which brought inconvenience for maintenance. Two conventional maintenance strategies, namely corrective maintenance and preventive maintenance, cannot provide condition-based maintenance to identify potential anomalies and predicts turbines' future operation trend. In this study, a model based data-driven condition monitoring method is proposed for fault detection of the wind turbines (WTs) with SCADA data acquired from an operational wind farm. Due to the nature of the alarm signals, the alarm data can be used as an intermedium to link the normal data and fault data. First, KPCA is employed to select principal components (PCs) to retain the dominant information from the original dataset to reduce the computation load for further modelling. Then the selected PCs are processed for normal-abnormal condition classification to extract those abnormal condition data that are classified further into false alarms and true alarms related to the faults. This two stage classification approach is implemented based on the KSVM algorithm. The results demonstrate that the two-stage fault detection method can identify the normal, alarm and fault conditions of the WTs accurately and effectively.",
author = "Yueqi Wu and Xiandong Ma",
year = "2019",
month = jul,
day = "1",
doi = "10.1049/joe.2018.9283",
language = "English",
volume = "2019",
pages = "4980 – 4985",
journal = "The Journal of Engineering",
issn = "2051-3305",
publisher = "IET",
number = "18",

}

RIS

TY - JOUR

T1 - Alarms-related wind turbine fault detection based on kernel support vector machines

AU - Wu, Yueqi

AU - Ma, Xiandong

PY - 2019/7/1

Y1 - 2019/7/1

N2 - Wind power is playing an increasingly significant role in daily life. However, wind farms are usually far away from cities especially for offshore wind farms, which brought inconvenience for maintenance. Two conventional maintenance strategies, namely corrective maintenance and preventive maintenance, cannot provide condition-based maintenance to identify potential anomalies and predicts turbines' future operation trend. In this study, a model based data-driven condition monitoring method is proposed for fault detection of the wind turbines (WTs) with SCADA data acquired from an operational wind farm. Due to the nature of the alarm signals, the alarm data can be used as an intermedium to link the normal data and fault data. First, KPCA is employed to select principal components (PCs) to retain the dominant information from the original dataset to reduce the computation load for further modelling. Then the selected PCs are processed for normal-abnormal condition classification to extract those abnormal condition data that are classified further into false alarms and true alarms related to the faults. This two stage classification approach is implemented based on the KSVM algorithm. The results demonstrate that the two-stage fault detection method can identify the normal, alarm and fault conditions of the WTs accurately and effectively.

AB - Wind power is playing an increasingly significant role in daily life. However, wind farms are usually far away from cities especially for offshore wind farms, which brought inconvenience for maintenance. Two conventional maintenance strategies, namely corrective maintenance and preventive maintenance, cannot provide condition-based maintenance to identify potential anomalies and predicts turbines' future operation trend. In this study, a model based data-driven condition monitoring method is proposed for fault detection of the wind turbines (WTs) with SCADA data acquired from an operational wind farm. Due to the nature of the alarm signals, the alarm data can be used as an intermedium to link the normal data and fault data. First, KPCA is employed to select principal components (PCs) to retain the dominant information from the original dataset to reduce the computation load for further modelling. Then the selected PCs are processed for normal-abnormal condition classification to extract those abnormal condition data that are classified further into false alarms and true alarms related to the faults. This two stage classification approach is implemented based on the KSVM algorithm. The results demonstrate that the two-stage fault detection method can identify the normal, alarm and fault conditions of the WTs accurately and effectively.

U2 - 10.1049/joe.2018.9283

DO - 10.1049/joe.2018.9283

M3 - Journal article

VL - 2019

SP - 4980

EP - 4985

JO - The Journal of Engineering

JF - The Journal of Engineering

SN - 2051-3305

IS - 18

ER -