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A simulation-based neighbourhood search algorithm to schedule multi-category patients at a multi-facility health care diagnostic centre

机译:基于模拟的邻域搜索算法可在多功能医疗诊断中心安排多类别患者的计划

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摘要

A key operational decision faced by a multi-facility health care diagnostic centre serving different patient categories (for example: Health Check-up Patient (HCP), Out-Patient (OP), Emergency Patient (EP), or In-Patient) is whom to serve next at a particular facility. In this paper, we model random arrival of these patients belonging to different categories and priorities at multiple diagnostic facilities over a finite planning horizon. We formulate a mathematical model for sequential decision-making under uncertainty using Markov Decision Process (MDP) with the objective of maximising net revenue and use dynamic programming (DP) to solve it. To address dimensionality and scalability issue of MDP, we provide a decentralised MDP (D_MDP) formulation. We develop simulation-based neighbourhood search algorithm to improve DP solution for D_MDP. We compare these solutions with three other rule-based heuristics using simulation.
机译:为不同患者类别(例如:健康检查患者(HCP),门诊患者(OP),急诊患者(EP)或住院患者)提供服务的多功能医疗诊断中心所面临的关键操作决策是接下来在特定机构服务的人。在本文中,我们在有限的计划范围内对属于不同类别和优先级的这些患者在多个诊断机构的随机到达进行建模。我们使用马尔可夫决策过程(MDP)为不确定性下的顺序决策制定了数学模型,目的是最大化净收入,并使用动态规划(DP)进行求解。为了解决MDP的尺寸和可伸缩性问题,我们提供了分散的MDP(D_MDP)公式。我们开发了基于仿真的邻域搜索算法,以改进D_MDP的DP解决方案。我们使用仿真将这些解决方案与其他三个基于规则的启发式方法进行比较。

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