In the last fifty years, researchers have developed statistical, data-driven, analytical, and algorithmic approaches for designing and improving emergency response management (ERM) systems. The problem has been noted as inherently difficult and constitutes spatio-temporal decision making under uncertainty, which has been addressed in the literature with varying assumptions and approaches. This survey provides a detailed review of these approaches, focusing on the key challenges and issues regarding four sub-processes: (a) incident prediction, (b) incident detection, (c) resource allocation, and (c) computer-aided dispatch for emergency response. We highlight the strengths and weaknesses of prior work in this domain and explore the similarities and differences between different modeling paradigms. We conclude by illustrating open challenges and opportunities for future research in this complex domain.
翻译:在过去五十年中,研究人员为设计和改进应急管理系统制定了统计、数据驱动、分析和算法方法,发现这一问题本身很困难,构成不确定情况下的时空决策,文献中以不同的假设和方法处理了这个问题,该调查详细审查了这些方法,侧重于四个子过程的主要挑战和问题:(a) 事故预测,(b) 事故探测,(c) 资源分配,(c) 紧急反应的计算机辅助发送,我们强调这一领域以前工作的长处和弱点,并探讨不同模型模式之间的异同,我们最后通过说明这一复杂领域未来研究的公开挑战和机遇。