Abstract:
This paper presents an algorithm of hub number $p$ robustness
estimation using specific simulations in the single allocation hub
location problem. The simulation has to model the service demand
trends in each origin node to each destination node. This idea is
based on the hub network dependence on service demand forecasting,
which is modeled by random values from random distribution with
parameters reflecting the demand changes. The algorithm includes
the mixed integer programming model which describes the hub
location-allocation problem with single allocation (each node is
connected exactly to one hub). The model chooses the optimal
locations for the fixed number of hubs $p$ from the fixed possible
location set in the problem. The perturbed data simulate the
changes in the service need and present the perspectives of the
network changes, and the algorithm fixes these changes. The number
of changes in the network is consolidated into the variety
frequencies which describe the variabilities in the set of
simulations. The algorithm is implemented on Python 3.5 and model
optimization is fulfilled using Gurobi Optimizer 7.0.1 software.
The results in the real dataset are illustrated and discussed.
Refs 18. Fig. 1. Tables 3.
Keywords:hub location-allocation, network stability,
cluster number robustness, linear programming.
UDC:519.868
Received:August 23, 2017 Accepted: October 12, 2017