Jagtenberg C J, Bhulai S, van der Mei R D
CWI, Stochastics, Science Park 123, 1098, XG, Amsterdam, The Netherlands.
Faculty of Sciences, VU University Amsterdam, De Boelelaan 1081a, 1081, HV, Amsterdam, The Netherlands.
Health Care Manag Sci. 2017 Dec;20(4):517-531. doi: 10.1007/s10729-016-9368-0. Epub 2016 May 20.
We address the problem of ambulance dispatching, in which we must decide which ambulance to send to an incident in real time. In practice, it is commonly believed that the 'closest idle ambulance' rule is near-optimal and it is used throughout most literature. In this paper, we present alternatives to the classical closest idle ambulance rule. Most ambulance providers as well as researchers focus on minimizing the fraction of arrivals later than a certain threshold time, and we show that significant improvements can be obtained by our alternative policies. The first alternative is based on a Markov decision problem (MDP), that models more than just the number of idle vehicles, while remaining computationally tractable for reasonably-sized ambulance fleets. Second, we propose a heuristic for ambulance dispatching that can handle regions with large numbers of ambulances. Our main focus is on minimizing the fraction of arrivals later than a certain threshold time, but we show that with a small adaptation our MDP can also be used to minimize the average response time. We evaluate our policies by simulating a large emergency medical services region in the Netherlands. For this region, we show that our heuristic reduces the fraction of late arrivals by 18 % compared to the 'closest idle' benchmark policy. A drawback is that this heuristic increases the average response time (for this problem instance with 37 %). Therefore, we do not claim that our heuristic is practically preferable over the closest-idle method. However, our result sheds new light on the popular belief that the closest idle dispatch policy is near-optimal when minimizing the fraction of late arrivals.
我们研究救护车调度问题,即必须实时决定派遣哪辆救护车前往事故现场。在实际操作中,人们普遍认为“最近的闲置救护车”规则近乎最优,并且在大多数文献中都采用了这一规则。在本文中,我们提出了经典的最近闲置救护车规则的替代方案。大多数救护车供应商以及研究人员都专注于将到达时间晚于某个阈值时间的比例降至最低,而我们表明,通过我们的替代策略可以实现显著改进。第一种替代方案基于马尔可夫决策问题(MDP),该模型不仅对闲置车辆的数量进行建模,同时对于规模合理的救护车车队而言,在计算上仍易于处理。其次,我们提出了一种救护车调度启发式方法,该方法可以处理救护车数量众多的区域。我们主要关注将到达时间晚于某个阈值时间的比例降至最低,但我们表明,只需进行微小调整,我们的MDP也可用于将平均响应时间降至最低。我们通过模拟荷兰的一个大型紧急医疗服务区域来评估我们的策略。对于该区域,我们表明,与“最近的闲置”基准策略相比,我们的启发式方法将迟到的比例降低了18%。一个缺点是,这种启发式方法会增加平均响应时间(对于此问题实例,增加了37%)。因此,我们并不声称我们的启发式方法在实际应用中比最近闲置方法更可取。然而,我们的结果为一种普遍看法提供了新的视角,即当最小化迟到比例时,最近闲置调度策略近乎最优。