An efficient computational method for a stochastic dynamic lot-sizing problem under service-level constraints |
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Authors: | S. Armagan Tarim,Mustafa K. Dogˇru,Ula? Ö zen,Roberto Rossi |
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Affiliation: | a Department of Management, Hacettepe University, Ankara, Turkey b Alcatel-Lucent Bell Labs, 600 Mountain Avenue, Murray Hill, NJ 07974, USA c Alcatel-Lucent Bell Labs, Blanchardstown Industrial Park, Dublin 15, Ireland d Logistics, Decision and Information Sciences Group, Wageningen UR, The Netherlands |
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Abstract: | We provide an efficient computational approach to solve the mixed integer programming (MIP) model developed by Tarim and Kingsman [8] for solving a stochastic lot-sizing problem with service level constraints under the static-dynamic uncertainty strategy. The effectiveness of the proposed method hinges on three novelties: (i) the proposed relaxation is computationally efficient and provides an optimal solution most of the time, (ii) if the relaxation produces an infeasible solution, then this solution yields a tight lower bound for the optimal cost, and (iii) it can be modified easily to obtain a feasible solution, which yields an upper bound. In case of infeasibility, the relaxation approach is implemented at each node of the search tree in a branch-and-bound procedure to efficiently search for an optimal solution. Extensive numerical tests show that our method dominates the MIP solution approach and can handle real-life size problems in trivial time. |
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Keywords: | Inventory Relaxation Stochastic non-stationary demand Mixed integer programming Service level Static-dynamic uncertainty |
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