Algorithm to solve a chance-constrained network capacity design problem with stochastic demands and finite support

Algorithm to solve a chance-constrained network capacity design problem with stochastic demands and finite support

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Article ID: iaor20162640
Volume: 63
Issue: 3
Start Page Number: 236
End Page Number: 246
Publication Date: Apr 2016
Journal: Naval Research Logistics (NRL)
Authors: , , ,
Keywords: design, combinatorial optimization, demand, stochastic processes, energy
Abstract:

We consider the problem of determining the capacity to assign to each arc in a given network, subject to uncertainty in the supply and/or demand of each node. This design problem underlies many real‐world applications, such as the design of power transmission and telecommunications networks. We first consider the case where a set of supply/demand scenarios are provided, and we must determine the minimum‐cost set of arc capacities such that a feasible flow exists for each scenario. We briefly review existing theoretical approaches to solving this problem and explore implementation strategies to reduce run times. With this as a foundation, our primary focus is on a chance‐constrained version of the problem in which α% of the scenarios must be feasible under the chosen capacity, where α is a user‐defined parameter and the specific scenarios to be satisfied are not predetermined. We describe an algorithm which utilizes a separation routine for identifying violated cut‐sets which can solve the problem to optimality, and we present computational results. We also present a novel greedy algorithm, our primary contribution, which can be used to solve for a high quality heuristic solution. We present computational analysis to evaluate the performance of our proposed approaches. 2016 Wiley Periodicals, Inc. Naval Research Logistics 63: 236–246, 2016

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