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The simple plant location problem (SPLP) is considered and a genetic algorithm is proposed to solve this problem. By using the developed algorithm it is possible to solve SPLP with more than 1000 facility sites and customers. Computational results are presented and compared to dual based algorithms.
The simple plant location problem (SPLP) is considered and
a genetic algorithm is
proposed to solve this problem. By using the developed
algorithm it is possible to solve SPLP
with more than 1000 facility sites and customers.
Computational results are presented and
compared to dual based algorithms.
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