Abstract:As wind power generation is a complicated nonlinear time-varying system, it's hard to extract effective fault feature. A novel algorithm that combined the modified local discriminant basis (LDB)algorithm and SOM-BP network is proposed to fault diagnosis and isolation. Extracting primal fault feature by improved LDB algorithm, then map this incipient fault feature into a new feature space with high class separability via self-organizing feature map (SOM) nonlinearly transform, finally BP is used as the nonlinear classifier to implement fault diagnosis and isolation.
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