RSMVC: A NEW-SIMPLE METHOD TO SELECT THE CUTTING TOOL BASE ON MULTI CRITERIA

  • Hoang Xuan Thinh Faculty of Mechanical Engineering, Hanoi University of Industry, Hanoi, Vietnam
  • Tran Van Dua Faculty of Mechanical Engineering, Hanoi University of Industry, Hanoi, Vietnam
Keywords: RSMVC method, Tool material selection, Multi Criteria

Abstract


The selection of the cutting tool material to be suitable for the workpiece material is usually based on the tables in the manuals or the manufacturer's recommendations. Within each of these document types, the cutting tool materials were described by many criteria. The values of the criteria for each type of cutting tool can be a number, or a certain range. This study proposes a new method to rank and select cutting tools. First, a ranking of the solutions for each criterion will be performed. This ranking is based on the mean value of the criteria in each solution. Therefore, this method is called “Ranking the Solutions based on the Mean Value of Criteria - RSMVC”. The RSMVC method was proven to be a highly reliable method for ranking the cutting tool materials. These results were successfully verified when solving the problems in different cases of cutter material selection.

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Published
2022/12/09
Section
Original Scientific Paper