Istrazivanja i projektovanja za privreduJournal of Applied Engineering Science

COMBINATION OF DOE AND PIV METHODS FOR MULTI-CRITERIA DECISION MAKing


DOI: 10.5937/jaes0-41482 
This is an open access article distributed under the CC BY 4.0
Creative Commons License

Volume 21 article 1079 pages: 361-373

Do Duc Trung*
Faculty of Mechanical Engineering, Hanoi University of Industry, Hanoi, Vietnam

Tran Ngoc Tan
Faculty of Mechanical Engineering, Hanoi University of Industry, Hanoi, Vietnam

When performing the multi-criteria decision making to choose the best solution, if some solutions are removed from the list of solutions or some solutions are added to the list of solutions, the decision making must be re-performed from the begining. This study proposes a new method to remove this limitation. The combination of the DOE (Design Of Experimental) method and PIV (Proximity Indexed Value) method is proposed in this paper. This combination is used to build the relationship between the scores of the solutions and the criteria. When the list of solution to be ranked has been removed or have been added some solutions, the ranking of some solutions only needs to use this relationship without having to recalculate from the beginning. Four different examples were applied to evaluate the effectiveness of the proposed method. The obtained results show that the proposed method ensures the required accuracy as well as its outstanding advantages. The limitations of the proposed method that need to be overcome are also pointed out at the end of this paper.

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