Article ID: | iaor20061431 |
Country: | United Kingdom |
Volume: | 1 |
Issue: | 1/2 |
Start Page Number: | 204 |
End Page Number: | 212 |
Publication Date: | Jan 2005 |
Journal: | International Journal of Production Research |
Authors: | Tirtiroglu Ercan |
Keywords: | measurement |
In information theory, Shannon, entropy function is used to measure message uncertainty and communication channel capacity. Shannon entropy considers the probability distribution of signals transmitted over a given communication channel in its argument of uncertainty. Since the concept of the steady-state of a queue (assuming it obtains) concerns a probability function, it seems logical to consider a connection between entropy and the uncertainty in queueing. Hence, using information-theoretic entropy, and the notions of steady-state (SS), and steady-state distribution (SSD), this paper represents an entropy-based uncertainty metric for measuring the operating performance of (Markovian) queues. M/M1 and M/M/1/k models are used as examples. The proposed method offers the practical value of establishing how good (i.e. dependable) the long-run results for a queue are. This could be valuable for decision-making purposes, especially when alternative models may be available to choose from. A model choice, which has less uncertainty, should be more desirable than one that exhibits high uncertainty, since the latter would experience a more chaotic, more disorderly steady-state and long-run operating behaviour.