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On multi-objective extensions of the classical assignment model with fuzzy parameters and fuzzy goals

Lanndon Ocampo, Enrico Enriquez, Carmelita Loquias, Reuella J Bacalso and Grace Estrada

International Journal of Mathematics in Operational Research, 2022, vol. 22, issue 1, 93-126

Abstract: This study advances the limitations of current fuzzy multi-objective assignment models by exploring some formulations with fuzzy parameters and fuzzy goals. The first formulation expresses the coefficients of the objective functions and constraints as fuzzy sets. Two crucial fuzzy transformations were adopted, along with the computational process of the epsilon-constrained multi-objective optimisation. On the other hand, the second formulation assumes the fuzzy coefficients of objective functions and constraints and extends such fuzziness by introducing fuzzy constraints. Lastly, the coefficients of the objective functions and the constraints are expressed as crisp sets while allowing permissible constraint violations. The symmetric fuzzy linear programming solution concepts in the domain literature were adopted as part of the computational process in arriving at a model solution. Actual case examples aided these formulations to gain insights into their computational complexity, efficiency, scalability, and flexibility.

Keywords: assignment; multi-objective optimisation; fuzzy optimisation. (search for similar items in EconPapers)
Date: 2022
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