A Neural Network Approach for Fuzzy Linear Programming Problems
نویسندگان
چکیده
-A neural network approach for solving fuzzy linear programming problems is proposed in which fuzzy concepts are not used. This approach is totally based on the level-sum method introduced Pandian [11]. The nearest optimal solution of the fuzzy linear programming original problem can be obtained by the proposed approach. The large scale fuzzy linear programming problems can be solved efficiently and their optimal solutions can be got easily due to the parallel mechanism of the neural network and a large number of computing unit-neurons. Keywords--Fuzzy Linear Programming, Multi-Objective Linear Programming, Level-Sum Method, Neural Networks
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