A new approach for prediction of the wear loss of PTA surface coatings using artificial neural network and basic, kernel-based, and weighted extreme learning machine
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Mustafa Ulas | Osman Altay | Turan Gurgenc | Cihan Özel | Turan Gurgenc | Osman Altay | M. Ulaş | C. Özel
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