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首页> 外文期刊>Data science journal >Post-Disaster Supply Chain Interdependent Critical Infrastructure System Restoration: A Review of Data Necessary and Available for Modeling
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Post-Disaster Supply Chain Interdependent Critical Infrastructure System Restoration: A Review of Data Necessary and Available for Modeling

机译:灾后供应链相互依存的关键基础设施系统恢复:对必要和可用于建模的数据的审查

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p class="p1"The majority of restoration strategies in the wake of large-scale disasters have focused on short-term emergency response solutions. Few consider medium- to long-term restoration strategies to reconnect urban areas to national emsupply chain interdependent critical infrastructure systems/em (SCICI). These SCICI promote the effective flow of goods, services, and information vital to the economic vitality of an urban environment. To re-establish the connectivity that has been broken during a disaster between the different SCICI, relationships between these systems must be identified, formulated, and added to a common framework to form a system-level restoration plan. To accomplish this goal, a considerable collection of SCICI data is necessary. The aim of this paper is to review what data are required for model construction, the accessibility of these data, and their integration with each other. While a review of publically available data reveals a dearth of real-time data to assist modeling long-term recovery following an extreme event, a significant amount of static data does exist and these data can be used to model the complex interdependencies needed. For the sake of illustration, a particular SCICI (transportation) is used to highlight the challenges of determining the interdependencies and creating models capable of describing the complexity of an urban environment with the data publically available. Integration of such data as is derived from public domain sources is readily achieved in a geospatial environment, after all geospatial infrastructure data are the most abundant data source and while significant quantities of data can be acquired through public sources, a significant effort is still required to gather, develop, and integrate these data from multiple sources to build a complete model. Therefore, while continued availability of high quality, public information is essential for modeling efforts in academic as well as government communities, a more streamlined approach to a real-time acquisition and integration of these data is essential./p
机译:class =“ p1”>大规模灾难之后的大多数恢复策略都集中在短期应急响应解决方案上。很少有人考虑采用中长期恢复策略将城市区域重新连接到国家供应链相互依赖的关键基础设施系统(SCICI)。这些SCICI促进了对城市环境的经济活力至关重要的商品,服务和信息的有效流动。为了重新建立在不同SCICI之间发生灾难时断开的连接,必须识别,制定这些系统之间的关系并将其添加到通用框架中,以形成系统级的恢复计划。为了实现这一目标,必须收集大量的SCICI数据。本文的目的是回顾模型构建需要哪些数据,这些数据的可访问性以及它们之间的集成。尽管对公开数据的回顾显示出缺乏实时数据来帮助对极端事件后的长期恢复进行建模,但确实存在大量静态数据,并且这些数据可用于建模所需的复杂相互依赖关系。为了说明起见,使用特定的SCICI(交通运输)来强调确定相互依赖关系并创建能够使用公开数据描述城市环境的复杂性的模型的挑战。在所有地理空间基础结构数据都是最丰富的数据源之后,虽然可以通过公共资源获取大量数据,但是在地理空间环境中可以轻松实现对来自公共领域资源的数据的集成。从多个来源收集,开发和集成这些数据以构建完整的模型。因此,在持续提供高质量信息的同时,公共信息对于建模学术界和政府机构的工作至关重要,而更精简的实时采集和集成这些数据的方法则至关重要。

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