Optimization of Machining Parameters for Minimizing Surface Roughness in Turning GFRP Composite Using ANN and PSO Methodology

6 Pages Posted: 29 Nov 2016

See all articles by Md. Shafiul Alam

Md. Shafiul Alam

Ahsanullah University of Science and Technology

Ahmed Yusuf

Ahsanullah University of Science & Technology

Abir Rahman

Ahsanullah University of Science & Technology

Inzamam-ul-haq

Ahsanullah University of Science & Technology

NR Dhar

Bangladesh University of Engineering and Technology (BUET)

Date Written: December 20, 2015

Abstract

The influence of surface roughness in determining the quality of finished products in any industrial application has an enormous impact on gaining competitive edge and establishing superiority. Thus, recognizing and understanding the factors influencing the resulted surface roughness are the crucial issues helping to achieve the desired goal in any competitive industrial environment. Fact is that machining process parameters are major factors affecting the outcome. This research is focused on determining the optimum machining parameters (cutting speed, feed rate, depth of cut) which result in minimizing the surface roughness in turning glass fiber reinforced polymer (GFRP) matrix composite using coated carbide insert. To understand the effects of machining parameters on surface roughness and to determine relationship between them; Particle Swarm Optimization (PSO) has been employed. A multiple regression equation is used as objective function to determine the optimum values of inputs (cutting speed, feed, and depth of cut) using PSO formula and it yields an optimum value of surface roughness of 0.6252 µm. Artificial Neural Network (ANN) has also been implemented to predict various level of surface roughness for different machining parameters. To predict the surface roughness (Ra), standard multilayer feed-forward back-propagation hierarchical neural network has been applied and the findings provide an overall value of coefficient of determination of 0.88881. These investigations of turning operation provide optimal process parameters for any desired value of surface roughness which result in gaining a competitive edge over others in any industrial application.

Keywords: Surface Roughness, Artificial Neural Network, Optimization, Particle Swarm Optimization, GFRP composite

Suggested Citation

Alam, Md. Shafiul and Yusuf, Ahmed and Rahman, Abir and , Inzamam-ul-haq and Dhar, NR, Optimization of Machining Parameters for Minimizing Surface Roughness in Turning GFRP Composite Using ANN and PSO Methodology (December 20, 2015). Available at SSRN: https://ssrn.com/abstract=2876184 or http://dx.doi.org/10.2139/ssrn.2876184

Md. Shafiul Alam (Contact Author)

Ahsanullah University of Science and Technology ( email )

Tejgaon, Dhaka, Bangladesh
Dhaka
Bangladesh

Ahmed Yusuf

Ahsanullah University of Science & Technology

141 & 142, Love Road,
Tejgaon Industrial Area, Dhaka 1208
Dhaka, 1208
Bangladesh

Abir Rahman

Ahsanullah University of Science & Technology

141 & 142, Love Road,
Tejgaon Industrial Area, Dhaka 1208
Dhaka, 1208
Bangladesh

Inzamam-ul-haq

Ahsanullah University of Science & Technology

141 & 142, Love Road,
Tejgaon Industrial Area, Dhaka 1208
Dhaka, 1208
Bangladesh

NR Dhar

Bangladesh University of Engineering and Technology (BUET)

Mirpur, Dhaka
Dhaka, DC 1205
Bangladesh

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