School of Environment, Northeast Normal University, Changchun 130024, China.
State Environmental Protection Key Laboratory of Wetland Ecology and Vegetation Restoration, Northeast Normal University, Changchun 130117, China.
Int J Environ Res Public Health. 2019 Sep 10;16(18):3330. doi: 10.3390/ijerph16183330.
Severe natural disasters and related secondary disasters are a huge menace to society. Currently, it is difficult to identify risk formation mechanisms and quantitatively evaluate the risks associated with disaster chains; thus, there is a need to further develop relevant risk assessment methods. In this research, we propose an earthquake disaster chain risk evaluation method that couples Bayesian network and Newmark models that are based on natural hazard risk formation theory with the aim of identifying the influence of earthquake disaster chains. This new method effectively considers two risk elements: hazard and vulnerability, and hazard analysis, which includes chain probability analysis and hazard intensity analysis. The chain probability of adjacent disasters was obtained from the Bayesian network model, and the permanent displacement that was applied to represent the potential hazard intensity was calculated by the Newmark model. To validate the method, the Changbai Mountain volcano earthquake-collapse-landslide disaster chain was selected as a case study. The risk assessment results showed that the high-and medium-risk zones were predominantly located within a 10 km radius of Tianchi, and that other regions within the study area were mainly associated with very low-to low-risk values. The verified results of the reported method showed that the area of the receiver operating characteristic (ROC) curve was 0.817, which indicates that the method is very effective for earthquake disaster chain risk recognition and assessment.
严重的自然灾害及相关次生灾害对社会构成巨大威胁。目前,难以识别风险形成机制,难以对灾害链相关风险进行定量评估,因此需要进一步发展相关风险评估方法。本研究提出了一种基于自然灾害风险形成理论的地震灾害链风险评估方法,将贝叶斯网络和 Newmark 模型相结合,以识别地震灾害链的影响。该新方法有效考虑了两个风险要素:危害和脆弱性,以及危害分析,包括链概率分析和危害强度分析。相邻灾害的链概率从贝叶斯网络模型中获得,而代表潜在危害强度的永久位移则由 Newmark 模型计算。为了验证该方法,选择长白山火山地震-崩塌-滑坡灾害链作为案例研究。风险评估结果表明,高风险和中风险区主要位于天池半径 10 公里范围内,研究区其他地区主要与极低至低风险值相关。报告方法的验证结果表明,接收器操作特性(ROC)曲线的面积为 0.817,表明该方法对地震灾害链风险识别和评估非常有效。