Research Article

MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE

Volume: 10 Number: 2 December 30, 2020
EN

MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE

Abstract

The Metal Matrix Composite (MMC) technology of today is a challenging topic with novel developments. MMC materials have a key role in space, automotive, naval, and aviation industries and supplies of the defense industry owing to their superior specifications. Hence, advancing the machining quality of these materials is an essential point. This work presents a machine learning-based prediction model for the surface roughness of LM25/SiC/4p composite. The related dataset is linked to an MMC, which is machined with a cylindrical grinder, so the input parameters of the model are depth of cut, wheel velocity, feed, and velocity of the workpiece. The proposed model is based on a state of the art machine-learning method called Gaussian Process Regression (GPR). Alongside its robust performance in the small datasets, GPR has the ability with its Bayesian approach basis in providing uncertainty evaluation on the predicted values. Parameter optimization is also applied to the proposed GPR model. For a better evaluation of the GPR, a support vector machine-based prediction model is also tested. In addition to the data split test method, models are tested with a 5-fold cross-validation algorithm. The experimental results present that the proposed GPR model reaches an adequate accuracy in terms of R-square, root mean squared error, and mean absolute error criteria.

Keywords

References

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Details

Primary Language

English

Subjects

Material Production Technologies

Journal Section

Research Article

Publication Date

December 30, 2020

Submission Date

July 24, 2020

Acceptance Date

December 9, 2020

Published in Issue

Year 2020 Volume: 10 Number: 2

APA
Uçar, F., & Katı, N. (2020). MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE. European Journal of Technique (EJT), 10(2), 415-430. https://doi.org/10.36222/ejt.773093
AMA
1.Uçar F, Katı N. MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE. EJT. 2020;10(2):415-430. doi:10.36222/ejt.773093
Chicago
Uçar, Ferhat, and Nida Katı. 2020. “MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE”. European Journal of Technique (EJT) 10 (2): 415-30. https://doi.org/10.36222/ejt.773093.
EndNote
Uçar F, Katı N (December 1, 2020) MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE. European Journal of Technique (EJT) 10 2 415–430.
IEEE
[1]F. Uçar and N. Katı, “MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE”, EJT, vol. 10, no. 2, pp. 415–430, Dec. 2020, doi: 10.36222/ejt.773093.
ISNAD
Uçar, Ferhat - Katı, Nida. “MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE”. European Journal of Technique (EJT) 10/2 (December 1, 2020): 415-430. https://doi.org/10.36222/ejt.773093.
JAMA
1.Uçar F, Katı N. MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE. EJT. 2020;10:415–430.
MLA
Uçar, Ferhat, and Nida Katı. “MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE”. European Journal of Technique (EJT), vol. 10, no. 2, Dec. 2020, pp. 415-30, doi:10.36222/ejt.773093.
Vancouver
1.Ferhat Uçar, Nida Katı. MACHINE LEARNING BASED PREDICTIVE MODEL FOR SURFACE ROUGHNESS IN CYLINDRICAL GRINDING OF AL BASED METAL MATRIX COMPOSITE. EJT. 2020 Dec. 1;10(2):415-30. doi:10.36222/ejt.773093

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