相互依赖的网络社区弹性建模环境(IN-CORE)

John W. van de Lindt , Jamie Kruse , Daniel T. Cox , Paolo Gardoni , Jong Sung Lee , Jamie Padgett , Therese P. McAllister , Andre Barbosa , Harvey Cutler , Shannon Van Zandt , Nathanael Rosenheim , Christopher M. Navarro , Elaina Sutley , Sara Hamideh
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引用次数: 14

摘要

2015年,美国国家标准与技术研究所(NIST)资助了基于风险的社区弹性规划卓越中心(CoE),这是一个由近100名合作者组成的14所大学联盟,其中包括教师、学生、博士后学者和NIST研究人员。本文强调了CoE正在开发的最先进的云平台背后的科学理论——跨学科网络社区弹性建模环境(IN-CORE)。IN-CORE使社区、顾问和研究人员能够建立由人、企业、社会机构、建筑物、交通网络、供水网络和电力网络组成的整个社区的复杂的相互依赖的模型,并预测其性能和对危险场景事件的恢复,包括通过连锁模型传播的不确定性。建模环境包括详细的建筑清单、危险情景模型、建筑和基础设施损坏(脆弱性)和恢复函数、社会科学数据驱动的家庭和企业模型以及地方经济的可计算一般均衡(CGE)模型。IN-CORE的一个重要方面是不确定性的表征及其在平台的链式模型中的传播。介绍了三个社区试验台的示例,这些试验台着眼于对人口、经济、物质服务和社会服务的危害影响和恢复。对IN-CORE技术和科学实施进行了概述,重点介绍了四个关键的社区稳定领域(CSA),其中包括一系列社区恢复力指标(CRM),并支持社区恢复力知情决策。IN-CORE中的每个试验台都是由工程师、社会科学家、城市规划者和经济学家组成的团队开发的。社区模型,从社区描述开始,即人员、企业、建筑物、基础设施,并发展到危险场景(即洪水、龙卷风、飓风或地震)造成的功能破坏和丧失。如前所述,这个过程是通过模块化算法的链接来完成的。基线社区特征和灾害引发的损害集是恢复模型的初始条件,恢复模型是社区复原力研究最少的领域,但可以说是最重要的领域之一。然后,社区可以测试缓解和/或政策的效果,并比较“假设”情景对物理、社会和经济指标的影响,唯一的要求是能够在in-CORE中对变化进行数字建模。
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The interdependent networked community resilience modeling environment (IN-CORE)

In 2015, the U.S National Institute of Standards and Technology (NIST) funded the Center of Excellence for Risk-Based Community Resilience Planning (CoE), a fourteen university-based consortium of almost 100 collaborators, including faculty, students, post-doctoral scholars, and NIST researchers. This paper highlights the scientific theory behind the state-of-the-art cloud platform being developed by the CoE - the Interdisciplinary Networked Community Resilience Modeling Environment (IN-CORE). IN-CORE enables communities, consultants, and researchers to set up complex interdependent models of an entire community consisting of people, businesses, social institutions, buildings, transportation networks, water networks, and electric power networks and to predict their performance and recovery to hazard scenario events, including uncertainty propagation through the chained models. The modeling environment includes a detailed building inventory, hazard scenario models, building and infrastructure damage (fragility) and recovery functions, social science data-driven household and business models, and computable general equilibrium (CGE) models of local economies. An important aspect of IN-CORE is the characterization of uncertainty and its propagation throughout the chained models of the platform.

Three illustrative examples of community testbeds are presented that look at hazard impacts and recovery on population, economics, physical services, and social services. An overview of the IN-CORE technology and scientific implementation is described with a focus on four key community stability areas (CSA) that encompass an array of community resilience metrics (CRM) and support community resilience informed decision-making. Each testbed within IN-CORE has been developed by a team of engineers, social scientists, urban planners, and economists. Community models, begin with a community description, i.e., people, businesses, buildings, infrastructure, and progresses to the damage and loss of functions caused by a hazard scenario, i.e., a flood, tornado, hurricane, or earthquake. This process is accomplished through chaining of modular algorithms, as described. The baseline community characteristics and the hazard-induced damage sets are the initial conditions for the recovery models, which have been the least studied area of community resilience but arguably one of the most important. Communities can then test the effect of mitigation and/or policies and compare the effects of “what if” scenarios on physical, social, and economic metrics with the only requirement being that the change much be able to be numerically modeled in IN-CORE.

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