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Fault detection of wind turbines via multivariate process monitoring based on vine copulas
This study seeks to develop a scheme for fault detection, under the framework of multivariate process monitoring, employing the d-vine copula-based dependence measure (D-VCDM). This measure adapts to nonlinear and non-Gaussian dependence among high-dimensional variables. We improve upon the previous...
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Published in: | Renewable energy 2020-12, Vol.161 (C), p.939-955 |
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Main Authors: | , , , |
Format: | Article |
Language: | English |
Subjects: | |
Citations: | Items that this one cites Items that cite this one |
Online Access: | Get full text |
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Summary: | This study seeks to develop a scheme for fault detection, under the framework of multivariate process monitoring, employing the d-vine copula-based dependence measure (D-VCDM). This measure adapts to nonlinear and non-Gaussian dependence among high-dimensional variables. We improve upon the previous procedures by incorporating the quantile regression neural network and kernel density estimation. Additionally, we modify the conventional generalized local probability through a variable scale trick (VSGLP), to describe the evolution process of anomalies in the most fault-prone region more intuitively. The scheme is termed as D-VCDM-VSGLP, and its feasibility is verified through a numerical experiment and a real-world application on supervisory control and data acquisition system data collected from a wind turbine. We find that it outperforms the initial C-vine copula-based dependence description and multilinear principal component analysis in terms of accuracy. Besides, the adjustable parameters, including the number of intervals and the coefficient of scale variability in VSGLP, are designed to be convenient for practical use.
•The D-VCDM-VSGLP scheme is proposed based on vine copulas for monitoring WTs.•It employs the quantile regression neural networkto identify the normal behavior.•It applies the D-VCDM to describe the relation among high-dimensional variables.•Itdevelops a VSGLP by modifying the conventional GLP via a variable scale trick.•Its efficacy is illustrated by the numerical experiment and real-world application. |
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ISSN: | 0960-1481 1879-0682 |
DOI: | 10.1016/j.renene.2020.06.091 |