验证社会系统对灾害事件脆弱性的经验预测建模:一种蒙特卡洛实验方法

Verifying empirical predictive modeling of societal vulnerability to hazardous events: A Monte Carlo experimental approach

Reliability Engineering and System Safety · 2023
被引 3
ABS 3

中文导读

提出蒙特卡洛模拟方法,在无法进行实地实验的情况下,检验基于历史数据的社会脆弱性经验预测模型的有效性。

Abstract

With the emergence of large amounts of historical records on adverse impacts of hazardous events, empirical predictive modeling has been revived as a foundational paradigm for quantifying disaster vulnerability of societal systems. This paradigm models societal vulnerability to hazardous events as a vulnerability curve indicating an expected loss rate of a societal system with respect to a possible spectrum of intensity measure (IM) of an event. Although the empirical predictive models (EPMs) of societal vulnerability are calibrated on historical data, they should not be experimentally tested with data derived from field experiments on any societal system. Alternatively, in this paper, we propose a Monte Carlo simulation-based approach to experimentally test EPMs of societal vulnerability. Our study applied an eigenvalue-based method to generate data on societal experiences of IM and pre-event vulnerability indicators. True models were designed to simulate event loss data. Supervised machine learning (ML) models were then trained on simulated data and were found to provide similar predictive performances as the true models. Our results suggested that the calibrated ML-EPMs could effectively quantify societal vulnerability given a normally experienced IM. To extrapolate a vulnerability curve for large IMs, however, simple models should be preferred.

灾害脆弱性经验预测模型蒙特卡洛模拟机器学习社会系统