4.7 Article

Prediction of the Transient Stability Boundary Based on Nonparametric Additive Modeling

Journal

IEEE TRANSACTIONS ON POWER SYSTEMS
Volume 32, Issue 6, Pages 4362-4369

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TPWRS.2017.2669839

Keywords

Additive model; backfitting algorithm; dynamic security assessment; kernel estimate; nonlinearmodeling; nonparametric regression; system identification; system modeling; transient stability

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This paper applies modern statistical nonparametric methodology to the problem of prediction of the transient stability boundary of large-scale power engineering systems. The stability issue is characterized by the critical clearing time (CCT) that is employed to determine whether a precontingency steady-state condition is stable for a given fault in the power system. The multidimensional mapping between the precontingency steady-state conditions and the corresponding CCT is modeled as an additive structure of one-dimensional functions. Nonparametric kernel estimation methods are applied to the assumed additive model yielding the boundary prediction algorithm that is easily interpretable and avoids the curse of dimensionality. The precision of our additive nonlinear modeling is demonstrated in the context of fault prediction of the 470-bus power network. For the specified fault type, we demonstrate a stronger prediction accuracy compared to other large-scale machine learning methods that have been used for the transient stability boundary problem so far.

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