Scheduling a multi class queue with many exponential servers: Asymptotic optimality in heavy traffic
成果类型:
Article
署名作者:
Atar, R; Mandelbaum, A; Reiman, MI
署名单位:
Technion Israel Institute of Technology; Technion Israel Institute of Technology; Alcatel-Lucent; Lucent Technologies; AT&T
刊物名称:
ANNALS OF APPLIED PROBABILITY
ISSN/ISSBN:
1050-5164
DOI:
10.1214/105051604000000233
发表日期:
2004
页码:
1084-1134
关键词:
limit-theorems
networks
SYSTEM
摘要:
We consider the problem of scheduling a queueing system in which many statistically identical servers cater to several classes of impatient customers. Service times and impatience clocks are exponential while arrival processes are renewal. Our cost is an expected cumulative discounted function, linear or nonlinear, of appropriately normalized performance measures. As a special case, the cost per unit time can be a function of the number of customers waiting to be served in each class, the number actually being served, the abandonment rate, the delay experienced by customers, the number of idling servers, as well as certain combinations thereof. We study the system in an asymptotic heavy-traffic regime where the number of servers n and the offered load r are simultaneously scaled up and carefully balanced: n approximate to r + betarootr for some scalar beta. This yields an operation that enjoys the benefits of both heavy traffic (high server utilization) and light traffic (high service levels.) We first consider a formal weak limit, through which our queueing scheduling problem gives rise to a diffusion control problem. We show that the latter has an optimal Markov control policy, and that the corresponding Hamilton-Jacobi-Bellman (HJB) equation has a unique classical solution. The Markov control policy and the HJB equation are then used to define scheduling control policies which we prove are asymptotically optimal for our original queueing system. The analysis yields both qualitative and quantitative insights, in particular on staffing levels, the roles of non-preemption and work conservation, and the trade-off between service quality and servers' efficiency.