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A note of hybrid GR-SVM for prediction of surface roughness in abrasive water jet machining: a response

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A Commentary to to this article was published on 17 October 2016

Abstract

This paper is the responses for a note submitted by Dr. Antoni Wibowo based on the article entitle “Hybrid GR-SVM for prediction of surface roughness in abrasive water jet (AWJ) machining”. The author of the note pointed out some problems in the original paper. The paper presented a proposed hybridization approach of grey relational analysis and support vector machine in predicting surface roughness (Ra) in AWJ machining. We deny all the claims given by Dr. Wibowo based on the justifications stated in this paper.

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Reference

  1. Deris AM, Zain AM, Sallehuddin R (2013) Hybrid GR-SVM for prediction of surface roughness in abrasive water jet machining. Meccanica 48(8):1937–1945

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Correspondence to Ashanira Mat Deris.

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Deris, A.M., Zain, A.M. & Sallehuddin, R. A note of hybrid GR-SVM for prediction of surface roughness in abrasive water jet machining: a response. Meccanica 52, 1993–1994 (2017). https://doi.org/10.1007/s11012-016-0551-7

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  • DOI: https://doi.org/10.1007/s11012-016-0551-7

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