Ontology-Driven Multicriteria Decision Support for Victim Evacuation

Linda Elmhadhbi, Mohamed-Hedi Karray, B. Archimède, J. Otte, Barry Smith
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引用次数: 2

Abstract

In light of the complexity of unfolding disasters, the diversity of rapidly evolving events, the enormous amount of generated information, and the huge pool of casualties, emergency responders (ERs) may be overwhelmed and in consequence poor decisions may be made. In fact, the possibility of transporting the wounded victims to one of several hospitals and the dynamic changes in healthcare resource availability make the decision process more complex. To tackle this problem, we propose a multicriteria decision support service, based on the Analytic Hierarchy Process (AHP) method, that aims to avoid overcrowding and outpacing the capacity of a hospital to effectively provide the best care to victims by finding out the most appropriate hospital that meets the victims’ needs. The proposed approach searches for the most appropriate healthcare institution that can effectively deal with the victims’ needs by considering the availability of the needed resources in the hospital, the victim’s wait time to receive the healthcare, and the transfer time that represents the hospital proximity to the disaster site. The evaluation and validation results showed that the assignment of hospitals was done successfully considering the needs of each victim and without overwhelming any single hospital.
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受害者疏散的本体驱动多标准决策支持
鉴于灾害发展的复杂性、迅速演变的事件的多样性、产生的大量信息和巨大的伤亡人数,应急响应人员可能不堪重负,因此可能做出错误的决定。事实上,将受伤的受害者运送到几家医院之一的可能性以及医疗资源可用性的动态变化使决策过程更加复杂。为了解决这一问题,我们提出了一种基于层次分析法(AHP)的多标准决策支持服务,旨在通过找到最适合受害者需求的医院,避免医院过度拥挤和超出医院的能力,从而有效地为受害者提供最佳护理。所提出的方法通过考虑医院所需资源的可用性、受害者接受医疗保健的等待时间以及代表医院距离灾难现场的转移时间,搜索能够有效满足受害者需求的最合适的医疗保健机构。评价和验证结果表明,考虑到每个受害者的需要,成功地分配了医院,没有使任何一家医院不堪重负。
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