Bearing Health Monitoring Using Relief-F-Based Feature Relevance Analysis and HMM
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Andrés Marino Álvarez-Meza | Álvaro A. Orozco-Gutiérrez | José Alberto Hernández-Muriel | Jhon Bryan Bermeo-Ulloa | Mauricio Holguin-Londoño | J. A. Hernández-Muriel | A. Álvarez-Meza | M. Holguín-Londoño | A. Orozco-Gutierrez
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