Staffing to Stabilize the Tail Probability of Delay in Service Systems with Time-Varying Demand

成果类型:
Article
署名作者:
Liu, Yunan
署名单位:
North Carolina State University
刊物名称:
OPERATIONS RESEARCH
ISSN/ISSBN:
0030-364X
DOI:
10.1287/opre.2017.1678
发表日期:
2018
页码:
514-534
关键词:
call center loss models queues performance customers ARRIVALS limit
摘要:
Analytic formulas are developed to set the time-dependent number of servers to stabilize the tail probability of customer waiting times for the G(t)/GI/s(t) + GI queueing model, which has a nonstationary non-Poisson arrival process (the G(t)), nonexponential service times (the first GI), and allows customer abandonment according to a nonexponential patience distribution (the + GI). Specifically, for any delay target w > 0 and probability target alpha is an element of(0, 1), we determine appropriate staffing levels (the s(t)) so that the time-varying probability that the waiting time exceeds a maximum acceptable value w is stabilized at ff at all times. In addition, effective approximating formulas are provided for other important performance functions such as the probabilities of delay and abandonment, and the means of delay and queue length. Many-server heavy-traffic limit theorems in the efficiency-driven regime are developed to show that (i) the proposed staffing function achieves the goal asymptotically as the scale increases, and (ii) the proposed approximating formulas for other performance measures are asymptotically accurate as the scale increases. Extensive simulations show that both the staffing functions and the performance approximations are effective, even for smaller systems having an average of three servers.