Details
Title
Hybrid GRA-PCA and modified weighted TOPSIS coupled with Taguchi for multi-response process parameter optimization in turning AISI 1040 steelJournal title
Archive of Mechanical EngineeringYearbook
2021Volume
vol. 68Issue
No 1Authors
Affiliation
Sultana, Mst. Nazma : Bangladesh University of Engineering & Technology, Dhaka, Bangladesh. ; Dhar, Nikhil Ranjan : Bangladesh University of Engineering & Technology, Dhaka, Bangladesh.Keywords
grey relational analysis ; principal component analysis ; Taguchi method ; analysis of variance ; cryogenic coolingDivisions of PAS
Nauki TechniczneCoverage
23-49Publisher
Polish Academy of Sciences, Committee on Machine BuildingBibliography
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