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利用分层贝叶斯核方法量化社区弹性:以从停电中恢复为例的研究。

Quantifying Community Resilience Using Hierarchical Bayesian Kernel Methods: A Case Study on Recovery from Power Outages.

机构信息

Department of Civil and Environmental Engineering, Vanderbilt University, Nashville, TN, USA.

Department of Earth and Environmental Sciences, Vanderbilt University, Nashville, TN, USA.

出版信息

Risk Anal. 2019 Sep;39(9):1930-1948. doi: 10.1111/risa.13343. Epub 2019 Jul 9.

Abstract

The ability to accurately measure recovery rate of infrastructure systems and communities impacted by disasters is vital to ensure effective response and resource allocation before, during, and after a disruption. However, a challenge in quantifying such measures resides in the lack of data as community recovery information is seldom recorded. To provide accurate community recovery measures, a hierarchical Bayesian kernel model (HBKM) is developed to predict the recovery rate of communities experiencing power outages during storms. The performance of the proposed method is evaluated using cross-validation and compared with two models, the hierarchical Bayesian regression model and the Poisson generalized linear model. A case study focusing on the recovery of communities in Shelby County, Tennessee after severe storms between 2007 and 2017 is presented to illustrate the proposed approach. The predictive accuracy of the models is evaluated using the log-likelihood and root mean squared error. The HBKM yields on average the highest out-of-sample predictive accuracy. This approach can help assess the recoverability of a community when data are scarce and inform decision making in the aftermath of a disaster. An illustrative example is presented demonstrating how accurate measures of community resilience can help reduce the cost of infrastructure restoration.

摘要

准确衡量受灾害影响的基础设施系统和社区的恢复速度对于确保在灾害发生前、期间和之后的有效响应和资源分配至关重要。然而,在量化这些措施时,一个挑战在于缺乏数据,因为很少记录社区恢复信息。为了提供准确的社区恢复措施,开发了一个层次贝叶斯核模型(HBKM)来预测风暴期间经历停电的社区的恢复速度。使用交叉验证评估了所提出方法的性能,并将其与两个模型(层次贝叶斯回归模型和泊松广义线性模型)进行了比较。提出了一个案例研究,重点是 2007 年至 2017 年期间田纳西州谢尔比县社区的恢复情况,以说明所提出的方法。使用对数似然和均方根误差评估模型的预测准确性。HBKM 的平均外推预测准确性最高。当数据稀缺时,该方法可以帮助评估社区的可恢复性,并为灾害后的决策提供信息。本文提供了一个示例,说明准确衡量社区弹性的措施如何有助于降低基础设施恢复的成本。

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