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Online optimization of casualty processing in major incident response: An experimental analysis

机译:重大事件响应中伤亡处理的在线优化:实验分析

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摘要

When designing an optimization model for use in mass casualty incident (MCI) response, the dynamic and uncertain nature of the problem environment poses a significant challenge. Many key problem parameters, such as the number of casualties to be processed, will typically change as the response operation progresses. Other parameters, such as the time required to complete key response tasks, must be estimated and are therefore prone to errors. In this work we extend a multi-objective combinatorial optimization model for MCI response to improve performance in dynamic and uncertain environments. The model is developed to allow for use in real time, with continuous communication between the optimization model and problem environment. A simulation of this problem environment is described, allowing for a series of computational experiments evaluating how model utility is influenced by a range of key dynamic or uncertain problem and model characteristics. It is demonstrated that the move to an online system mitigates against poor communication speed, while errors in the estimation of task duration parameters are shown to significantly reduce model utility. (C) 2016 The Authors. Published by Elsevier B.V.
机译:当设计用于大规模人员伤亡事件(MCI)响应的优化模型时,问题环境的动态性和不确定性构成了重大挑战。许多关键问题参数(例如要处理的伤亡人数)通常会随着响应操作的进行而改变。必须估计其他参数,例如完成关键响应任务所需的时间,因此容易出错。在这项工作中,我们扩展了MCI响应的多目标组合优化模型,以提高动态和不确定环境中的性能。开发该模型是为了允许实时使用,并且在优化模型和问题环境之间进行连续通信。描述了此问题环境的仿真,从而允许进行一系列计算实验,以评估模型实用性如何受到一系列关键动态或不确定问题和模型特征的影响。事实证明,迁移到在线系统可以缓解通信速度较差的问题,而任务持续时间参数估计中的错误则显着降低了模型的实用性。 (C)2016作者。由Elsevier B.V.发布

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