Abstract :
The nature of vagueness, imprecision, and uncertainly is fuzzy rather than crisp and/or random, especially for a multiple objectives decision-making problem. A key component of fuzzy programming is the membership function that represents a mathematical expression of level function for the decision-maker´s preference. In fact, a decision-making problem involves the achievement of fuzzy goals, some of which are met while others are not because these fuzzy goals are subject to real-world constraints. To represent this situation, the binary piecewise linear membership function is then employed. In order to solve the problem, we propose a new idea of how to formulate the binary piecewise linear membership function. The formulated problem can be easily solved using common integer programming packages. In addition, an illustrative example is included for demonstrating the usefulness of the proposed model. Finally, the analytical superiority of the proposed method in terms of the execution time can be seen, through a computation experiment conducted on a set of generated test examples.
Keywords :
decision making; fuzzy set theory; integer programming; piecewise linear techniques; binary behavior; binary piecewise linear membership function; fuzzy programming; integer programming; multiple objectives decision-making problem; piecewise linear membership functions; Decision making; Delta modulation; Functional programming; Fuzzy systems; Linear programming; Mathematical programming; Packaging; Piecewise linear techniques; Programming profession; Testing; Fuzzy programming; nonlinear membership function;