Motivated by demand prediction for the custodial prison population in England and Wales, this paper describes an approach to the study of service systems using infinite server queues, where the system has non-empty initial state and the elapsed time of individuals initially present is not known. By separating the population into initial content and new arrivals, we can apply several techniques either separately or jointly to those sub-populations, to enable both short-term queue length predictions and longer-term considerations such as managing congestion and analysing the impact of potential interventions. The focus in the paper is the transient behaviour of the $M_t/G/\infty$ queue with a non-homogeneous Poisson arrival process and our analysis considers various possible simplifications, including approximation. We illustrate the approach in that domain using publicly available data in a Bayesian framework to perform model inference.
翻译:本文以英格兰和威尔士监狱在押囚犯的需求预测为动力,描述了一种使用无限服务器队列研究服务系统的方法,即该系统具有非空的初始状态,最初在场的人的时间长度不详。通过将人口分为初始内容和新抵达者,我们可以分别或共同对这些亚人口采用几种技术,以便能够进行短期排队时间预测和长期考虑,如管理拥挤问题和分析潜在干预措施的影响。本文的重点是以非相容的普瓦松抵达过程为主的M_t/G/\infty$队列的短暂行为,我们的分析考虑了各种可能的简化,包括近距离。我们用巴伊西亚框架中的公开数据来说明这方面的方法,以进行模型推理。