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Application of EOS-ELM with binary Jaya-based feature selection to real-time transient stability assessment using PMU data
Recent studies show that pattern-recognition-based transient stability
assessment (PRTSA) is a promising approach for predicting the transient
stability status of power systems. However, many of the current well-known
PRTSA methods suffer from excessive training time and complex tuning of
parameters, resulting in inefficiency for real-time implementation and lacking
the online model updating ability. In this paper, a novel PRTSA approach based
on an ensemble of OS-extreme learning machine (EOSELM) with binary Jaya
(BinJaya)-based feature selection is proposed with the use of phasor
measurement units (PMUs) data. After briefly describing the principles of
OS-ELM, an EOS-ELM-based PRTSA model is built to predict the post-fault
transient stability status of power systems in real time by integrating OS-ELM
and an online boosting algorithm, respectively, as a weak classifier and an
ensemble learning algorithm. Furthermore, a BinJaya-based feature selection
approach is put forward for selecting an optimal feature subset from the entire
feature space constituted by a group of system-level classification features
extracted from PMU data. The application results on the IEEE 39-bus system and
a real provincial system show that the proposal has superior computation speed
and prediction accuracy than other state-of-the-art sequential learning
algorithms. In addition, without sacrificing the classification performance,
the dimension of the input space has been reduced to about one-third of its
initial value.Comment: Accepted by IEEE Acces
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