Predictive Maintenance on the Machining Process and Machine Tool
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Basilio Sierra | Itziar Irigoien | Fernando Boto | German Rodriguez | Alberto Jimenez-Cortadi | B. Sierra | I. Irigoien | F. Boto | Alberto Jimenez-Cortadi | Germán Rodríguez | Fernando Boto
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