Voltage Stability Margin Index Estimation Using a Hybrid Kernel Extreme Learning Machine Approach
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Jesús M. López-Lezama | D. G. Colomé | Walter M. Villa-Acevedo | Delia G. Colomé | J. López-Lezama | W. M. Villa-Acevedo
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