Article ID: | iaor1995361 |
Country: | United States |
Volume: | 42 |
Issue: | 1 |
Start Page Number: | 119 |
End Page Number: | 136 |
Publication Date: | Jan 1994 |
Journal: | Operations Research |
Authors: | Dai J.G., Nguyen Vien |
Keywords: | probability |
In heavy traffic analysis of open queueing networks, processes of interest such as queue lengths and workload levels are generally approximated by a multidimensional reflected Brownian motion (RBM). Decomposition approximations, on the other hand, typically analyze stations in the network separately, treating each as a single queue with adjusted interarrival time distribution. The authors present a hybrid method for analyzing generalized Jackson networks that employs both decomposition approximation and heavy traffic theory: Stations in the network are partitioned into groups of ‘bottleneck subnetworks’ that may have more than one station; the subnetworks then are analyzed ‘sequentially’ with heavy traffic theory. Using the numerical method of Dai and Harrison for computing the stationary distribution of multidimensional RBMs, the authors compare the performance of this technique to other methods of approximation via some simulation studies. The present results suggest that this hybrid method generally performs better than other approximation techniques, including Whitt’s QNA and Harrison and Nguyen’s QNET.