准备
大规模伤亡
计算机科学
大规模伤亡事件
整数规划
指数平滑
运筹学
启发式
应急管理
运营管理
医疗急救
毒物控制
医学
人为因素与人体工程学
工程类
人工智能
算法
法学
计算机视觉
政治学
作者
Panagiotis P. Repoussis,Dimitris C. Paraskevopoulos,Alkiviadis Vazacopoulos,Nathaniel Hupert
标识
DOI:10.1016/j.ejor.2016.05.047
摘要
This paper presents a response model for the aftermath of a Mass-Casualty Incident (MCI) that can be used to provide operational guidance for regional emergency planning as well as to evaluate strategic preparedness plans. A mixed integer programming (MIP) formulation is proposed for the combined ambulance dispatching, patient-to-hospital assignment, and treatment ordering problem. The goal is to allocate effectively the limited resources during the response so as to improve patient outcomes, while the objectives are to minimize the overall response time and the total flow time required to treat all patients, in a hierarchical fashion. The model is solved via exact and MIP-based heuristic solution methods. The applicability of the model and the performance of the new methods are challenged on realistic MCI scenarios. We consider the hypothetical case of a terror attack at the New York Stock Exchange in Lower Manhattan with up to 150 trauma patients. We quantify the impact of capacity-based bottlenecks for both ambulances and available hospital beds. We also explore the trade-off between accessing remote hospitals for demand smoothing versus reduced ambulance transportation times.
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