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Wind Turbine
A Covariate-Regulated Sparse Subspace Learning Model and Its Application to Process Monitoring and Fault Isolation
This paper proposes a covariate-regulated sparse subspace learning (CSSL) model to address the challenges of complex, time-varying cross-correlation in multivariate functional data, and demonstrates its application in process monitoring and fault isolation using SCADA data from wind turbines.
Xingchen Liu
,
Juan Du
,
Zhi-Sheng Ye
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A Condition Monitoring and Fault Isolation System for Wind Turbine Based on SCADA Data
This article develops a novel condition monitoring and fault isolation system for wind turbines using SCADA data, addressing challenges such as low sampling rates, time-varying working conditions, and a lack of historical fault data.
Xingchen Liu
,
Juan Du
,
Zhi-Sheng Ye
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