Graphical temporal semi-supervised deep learning-based principal fault localization in wind turbine systems

被引:12
作者
Jiang, Na [1 ]
Hu, Xiangzhi [1 ]
Li, Ning [1 ]
机构
[1] Shanghai Jiao Tong Univ, Minist Educ China, Key Lab Syst Control & Informat Proc, Dept Automat, Shanghai 200240, Peoples R China
关键词
Principal fault localization; faults chain; wind turbine systems; graphical temporal semi-supervised learning; deep learning; unlabeled data; multivariate time series; DIAGNOSIS; MODEL; CLASSIFICATION; ALGORITHM; NETWORKS;
D O I
10.1177/0959651819901034
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Principal fault localization of the faults chain, as a branch of fault diagnosis in wind turbine system, has been an essential problem to ensure the reliability and security in the real wind farms recently. It can be solved by machine learning techniques with historical data labeled with principal faults. However, most real data are unlabeled, since the labeled is expensive to obtain, which increases the difficulty to localize the principal fault if just using unlabeled data and few labeled data. So, in this article, a novel approach using unlabeled data is proposed for principal fault localization of the faults chain in wind turbine systems. First, a deep learning model, stacked sparse autoencoders, is introduced to learn and extract high-level features from data. Then, we present a graphical temporal semi-supervised learning algorithm to develop the pseudo-labeled data set with an unlabeled data set. Considering the temporal correlation of wind power data, we add a time weight vector and apply the cosine-similarity in the proposed algorithm. Finally, based on the pseudo-labeled data set, a classifier model is built and trained for the principal fault localization of the faults chain. The proposed approach is verified by the real buffer data set collected from two wind farms in China, and the experimental results show its effectiveness in practice.
引用
收藏
页码:985 / 999
页数:15
相关论文
共 44 条
  • [1] Fault Detection and Classification Based on Co-training of Semisupervised Machine Learning
    Abdelgayed, Tamer S.
    Morsi, Walid G.
    Sidhu, Tarlochan S.
    [J]. IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2018, 65 (02) : 1595 - 1605
  • [2] Amini M.-R., 2015, LEARNING PARTIALLY L
  • [3] A novel spectral-spatial co-training algorithm for the transductive classification of hyperspectral imagery data
    Appice, Annalisa
    Guccione, Pietro
    Malerba, Donato
    [J]. PATTERN RECOGNITION, 2017, 63 : 229 - 245
  • [4] Robust model-based fault diagnosis of mechanical drive train in V47/660kW wind turbine
    Asgari, Shadi
    Yazdizadeh, Alireza
    [J]. ENERGY SYSTEMS-OPTIMIZATION MODELING SIMULATION AND ECONOMIC ASPECTS, 2018, 9 (04): : 921 - 952
  • [5] Fault-tolerant cooperative control in an offshore wind farm using model-free and model-based fault detection and diagnosis approaches
    Badihi, Hamed
    Zhang, Youmin
    Hong, Henry
    [J]. APPLIED ENERGY, 2017, 201 : 284 - 307
  • [6] Signal-Based Sensor Fault Detection and Isolation for PMSG in Wind Energy Conversion Systems
    Beddek, Karim
    Merabet, Adel
    Kesraoui, Mohamed
    Tanvir, Aman A.
    Beguenane, Rachid
    [J]. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2017, 66 (09) : 2403 - 2412
  • [7] Bengio Y., 2007, Advances in Neural Information Processing Systems, V19, P153, DOI DOI 10.5555/2976456.2976476
  • [8] Berthelot D, 2019, ADV NEUR IN, V32
  • [9] Bhattacharyya A, 1946, SANKHYA, V7, P401
  • [10] Discrete maintenance optimization of complex multi-component systems
    Bris, Radim
    Byczanski, Petr
    Gono, Radomir
    Rusek, Stanislav
    [J]. RELIABILITY ENGINEERING & SYSTEM SAFETY, 2017, 168 : 80 - 89