A Hybrid Approach for Noise Reduction in Acoustic Signal of Machining Process Using Neural Networks and ARMA Model
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Khurram Kamal | Senthan Mathavan | Tayyab Zafar | Mohammed Alkahtani | Mohamed K. Aboudaif | Ghulam Hussain | Fahad M. Alqahtani | G. Hussain | K. Kamal | T. Zafar | S. Mathavan | Mohammed Alkahtani | M. K. Aboudaif
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