A Multi-stage Stochastic Programming Approach for Network Capacity Expansion with Multiple Sources of Capacity
Abstract
In networks, there are often more than one source of capacity. The capacities
can be permanently or temporarily owned by the decision maker. Depending on the
nature of sources, we identify the permanent capacity, spot market capacity and
contract capacity. We use a scenario tree to model the uncertainty, and build a
multi-stage stochastic integer program that can incorporate multiple sources
and multiple types of capacities in a general network. We propose two solution
methodologies for the problem. Firstly, we design an asymptotically convergent
approximation algorithm. Secondly, we design a cutting plane algorithm based on
Benders decomposition to find tight bounds for the problem. The numerical
experiments show superb performance of the proposed algorithms compared with
commercial software.