The Minimum Universal Cost Flow in an Infeasible Flow Network

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In this paper the concept of the Minimum Universal Cost Flow (MUCF) for an infeasible flow network is introduced. A new mathematical model in which the objective function includes the total costs of changing arc capacities and sending flow is built and analyzed. A polynomial time algorithm is presented to find the MUCF.

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Journal title

volume 17  issue 2

pages  -

publication date 2006-06-01

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