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The impact of uncertain precipitation data on insurance loss estimates using a flood catastrophe model

机译:不确定的降水量数据对使用洪水巨灾模型的保险损失估计的影响

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Catastrophe risk models used by the insurance industry are likely subject to significant uncertainty, but due to their proprietary nature and strict licensing conditions they are not available for experimentation. In addition, even if such experiments were conducted, these would not be repeatable by other researchers because commercial confidentiality issues prevent the details of proprietary catastrophe model structures from being described in public domain documents. However, such experimentation is urgently required to improve decision making in both insurance and reinsurance markets. In this paper we therefore construct our own catastrophe risk model for flooding in Dublin, Ireland, in order to assess the impact of typical precipitation data uncertainty on loss predictions. As we consider only a city region rather than a whole territory and have access to detailed data and computing resources typically unavailable to industry modellers, our model is significantly more detailed than most commercial products. The model consists of four components, a stochastic rainfall module, a hydrological and hydraulic flood hazard module, a vulnerability module, and a financial loss module. Using these we undertake a series of simulations to test the impact of driving the stochastic event generator with four different rainfall data sets: ground gauge data, gauge-corrected rainfall radar, meteorological reanalysis data (European Centre for Medium-Range Weather Forecasts Reanalysis-Interim; ERA-Interim) and a satellite rainfall product (The Climate Prediction Center morphing method; CMORPH). Catastrophe models are unusual because they use the upper three components of the modelling chain to generate a large synthetic database of unobserved and severe loss-driving events for which estimated losses are calculated. We find the loss estimates to be more sensitive to uncertainties propagated from the driving precipitation data sets than to other uncertainties in the hazard and vulnerability modules, suggesting that the range of uncertainty within catastrophe model structures may be greater than commonly believed.
机译:保险业使用的巨灾风险模型可能会受到很大的不确定性,但由于其专有性和严格的许可条件,因此无法进行试验。此外,即使进行了此类实验,其他研究人员也不会重复这些实验,因为商业机密性问题阻止了专有灾难模型结构的详细信息在公共领域的文档中描述。但是,迫切需要进行这样的试验以改善保险和再保险市场的决策。因此,在本文中,我们构建了自己的爱尔兰都柏林洪灾的巨灾风险模型,以评估典型降水数据不确定性对损失预测的影响。由于我们只考虑一个城市区域而不是整个地区,并且可以访问行业建模者通常无法获得的详细数据和计算资源,因此我们的模型比大多数商业产品要详细得多。该模型由四个部分组成:随机降雨模块,水文和水力洪水灾害模块,脆弱性模块和财务损失模块。使用这些数据,我们进行了一系列模拟,以使用四个不同的降雨数据集来测试驱动随机事件生成器的影响:地面测量数据,经校准的降雨雷达,气象再分析数据(欧洲中距离天气预报中心重新分析中期) ; ERA-Interim)和卫星降雨产品(气候预测中心变型方法; CMORPH)。巨灾模型之所以与众不同,是因为它们使用建模链的前三个部分来生成一个大型的,未观察到的,严重的损失驱动事件的综合数据库,据此可以估算出损失。我们发现损失估算对来自行进降水数据集的不确定性比对危害和脆弱性模块中的其他不确定性更为敏感,这表明巨灾模型结构中不确定性的范围可能比通常认为的更大。

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