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A Lagrangian relaxation approach for stochastic...
Journal article

A Lagrangian relaxation approach for stochastic network capacity expansion with budget constraints

Abstract

In this paper, we consider capacity expansion for network models subject to uncertainty and budget constraints. We use a scenario tree approach to handle the uncertainty and construct a multi-stage stochastic mixed-integer programming model for the network capacity expansion problem. We assume that permanent capacity and spot market capacity are available, which can be used permanently or temporarily by the decision maker respectively. By relaxing the budget constraints, we propose a heuristic Lagrangian relaxation method to solve the problem. Two algorithms are developed to find tight upper bounds for the Lagrangian relaxation procedure. The experimental results show superior performance of the proposed Lagrangian relaxation method compared with CPLEX.

Authors

Taghavi M; Huang K

Journal

Annals of Operations Research, Vol. 284, No. 2, pp. 605–621

Publisher

Springer Nature

Publication Date

January 1, 2020

DOI

10.1007/s10479-018-2862-7

ISSN

0254-5330

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