Early and extremely early multi-label fault diagnosis in induction motors.
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Álvar Arnaiz-González | César García-Osorio | Juan José Saucedo-Dorantes | Mario Juez-Gil | Carlos López-Nozal | David Lowe | C. García-Osorio | J. Saucedo-Dorantes | D. Lowe | Carlos López-Nozal | Mario Juez-Gil | Álvar Arnaiz-González
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