Floating offshore wind turbine fault diagnosis using stacked denoising autoencoder with temporal information

Journal Article (2021)
Author(s)

Xujie Zhang (Zhejiang Sci-Tech University)

Ping Wu (Zhejiang Sci-Tech University)

Jiajun He (Zhejiang Sci-Tech University)

Y. Liu (TU Delft - Team Riccardo Ferrari)

Lin Wang Wang (Zhejiang Windey Co.)

Jinfeng Gao (Zhejiang Windey Co.)

Research Group
Team Riccardo Ferrari
DOI related publication
https://doi.org/10.1177/01423312211057994
More Info
expand_more
Publication Year
2021
Language
English
Research Group
Team Riccardo Ferrari

Abstract

Currently, the offshore wind turbine has become a hot research area in the wind energy industry. Among different offshore wind turbines, floating offshore wind turbine (FOWT) can harvest abundant wind energy in deepwater areas. However, the harsh working environment will dramatically increase the maintenance cost and downtime of FOWTs. Wind turbine fault diagnosis is being regarded as an indispensable system for maintenance issues. Owing to the complexity of FOWT, it imposes an enormous challenge for effective fault diagnosis. This paper develops a novel FOWT fault diagnosis method based on a stacked denoising autoencoder (SDAE). First, a sliding window technique is adopted for time-series data to preserve temporal information. Then, SDAE is employed to extract the features from high-dimensional data. Based on the extracted features from SDAE, a classifier using multilayer perceptrons (MLP) is developed to determine the health status of the FOWT. To verify the performance of the proposed method, a FOWT simulation benchmark based on the National Renewable Energy Laboratory (NREL) FAST simulator is employed. Results show the superior performance of the proposed method by comparison with other relevant methods.

No files available

Metadata only record. There are no files for this record.