Many practical optimization problems are characterized by some flexibility in the problem constraints, where this flexibility can be exploited for additional trade-off between improving the objective function and satisfying the constraints. Fuzzy sets have proven to be a suitable representation for modeling this type of soft constraints. The paper proposes an extension of this model for satisfying the problem constraints and the goals, where preference for different constraints and goals can be specified by the decision-maker. The difference in the preference for the constraints is represented by a set of associated weight factors, which influence the amount of trade-off between improving the optimization objectives and satisfying various c...
In this paper, the effects of uncertainty on multiple-objective linear programming models are studie...
In this paper we focus on linear fuzzy programming problems. The linear fuzzy programming problems w...
This paper presents a survey on methods for solving fuzzy linear programs. First LP models with soft...
Many practical optimization problems are characterized by some flexibility in the problem constraint...
Many practical optimization problems are characterized by some flexibility in the problem constraint...
Many practical optimization problems are characterized by some flexibility in the problem constraint...
Many practical optimization problems are characterized by some flexibility in the problem constraint...
We present a new model and a new approach for solving fuzzy linear programming (FLP) problems with v...
Some general concepts and ideas related to fuzzy optimization as, e.g., a fuzzy constraint, fuzzy go...
AbstractIn this paper, we discuss the softness and the robustness of the optimality in the setting o...
In this paper the issue of soft constraint satisfaction is discussed from a fuzzy set theoretical po...
Goal Programming (GP) is an effective method to solve linear multi-objective problems.The weights pl...
[[abstract]]In this study we first present the preference structures in decision making as a general...
This paper introduces a computational method of solving fully fuzzy multi objective linear programmi...
87> (d') indicates that C is more satisfied by d than by d'. Hence, like an objective ...
In this paper, the effects of uncertainty on multiple-objective linear programming models are studie...
In this paper we focus on linear fuzzy programming problems. The linear fuzzy programming problems w...
This paper presents a survey on methods for solving fuzzy linear programs. First LP models with soft...
Many practical optimization problems are characterized by some flexibility in the problem constraint...
Many practical optimization problems are characterized by some flexibility in the problem constraint...
Many practical optimization problems are characterized by some flexibility in the problem constraint...
Many practical optimization problems are characterized by some flexibility in the problem constraint...
We present a new model and a new approach for solving fuzzy linear programming (FLP) problems with v...
Some general concepts and ideas related to fuzzy optimization as, e.g., a fuzzy constraint, fuzzy go...
AbstractIn this paper, we discuss the softness and the robustness of the optimality in the setting o...
In this paper the issue of soft constraint satisfaction is discussed from a fuzzy set theoretical po...
Goal Programming (GP) is an effective method to solve linear multi-objective problems.The weights pl...
[[abstract]]In this study we first present the preference structures in decision making as a general...
This paper introduces a computational method of solving fully fuzzy multi objective linear programmi...
87> (d') indicates that C is more satisfied by d than by d'. Hence, like an objective ...
In this paper, the effects of uncertainty on multiple-objective linear programming models are studie...
In this paper we focus on linear fuzzy programming problems. The linear fuzzy programming problems w...
This paper presents a survey on methods for solving fuzzy linear programs. First LP models with soft...