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Bayesian inference for extreme value flood frequency analysis in Bangladesh using Hamiltonian Monte Carlo techniques

机译:利用哈密顿蒙特卡洛技术对孟加拉国极值洪水频率进行贝叶斯推断

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In Bangladesh, major floods are frequent due to its unique geographic location. About one-fourth to one-third of the country is inundated by overflowing rivers during the monsoon season almost every year. Calculating the risk level of river discharge is important for making plans to protect the ecosystem and increasing crop and fish production. In recent years, several Bayesian Markov chain Monte Carlo (MCMC) methods have been proposed in extreme value analysis (EVA) for assessing the flood risk in a certain location. The Hamiltonian Monte Carlo (HMC) method was employed to obtain the approximations to the posterior marginal distribution of the Generalized Extreme Value (GEV) model by using annual maximum discharges in two major river basins in Bangladesh. The discharge records of the two largest branches of the Ganges-Brahmaputra-Meghna river system in Bangladesh for the past 42 years were analysed. To estimate flood risk, a return level with 95% confidence intervals (CI) has also been calculated. Results show that, the shape parameter of each station was greater than zero, which shows that heavy-tailed Frechet cases. One station, Bahadurabad, at Brahmaputra river basin estimated 141,387 m~(3)s~(-1)with a 95% CI range of [112,636, 170,138] for 100-year return level and the 1000-year return level was 195,018 m~(3)s~(-1)with a 95% CI of [122493, 267544]. The other station, Hardinge Bridge, at Ganges basin estimated 124,134 m~(3)s~(-1)with a 95% CI of [108,726, 139,543] for 100-year return level and the 1000-year return level was 170,537 m~(3)s~(-1)with a 95% CI of [133,784, 207,289]. As Bangladesh is a flood prone country, the approach of Bayesian with HMC in EVA can help policy-makers to plan initiatives that could result in preventing damage to both lives and assets.
机译:在孟加拉国,由于其独特的地理位置,经常发生大水灾。几乎每年的季风季节,全国约四分之一至三分之一的河流被洪水泛滥。计算河流排放的风险水平对于制定保护生态系统和增加作物和鱼类产量的计划很重要。近年来,在极限值分析(EVA)中提出了几种贝叶斯马尔可夫链蒙特卡罗(MCMC)方法,用于评估特定位置的洪水风险。通过使用孟加拉国两个主要流域的年最大排放量,使用哈密顿量蒙特卡洛(HMC)方法获得了广义极值(GEV)模型的后边缘分布的近似值。分析了孟加拉国恒河-布拉马普特拉-梅格纳河系统过去42年中两个最大分支的流量记录。为了估算洪水风险,还计算了具有95%置信区间(CI)的返回水平。结果表明,每个工位的形状参数都大于零,这表明是重尾Frechet情况。布拉马普特拉河流域的一个巴哈杜拉巴德站估计为141,387 m〜(3)s〜(-1),其100年回报水平的95%CI范围为[112,636,170,138],而1000年回报水平为195,018 m 〜(3)s〜(-1)的95%CI为[122493,267544]。另一个恒河站哈丁大桥估计为124,134 m〜(3)s〜(-1),其100年回报水平的95%CI为[108,726,139,543],而1000年回报水平为170,537 m 〜(3)s〜(-1),CI值为[133,784,207,289]的95%。由于孟加拉国是一个容易发生洪灾的国家,贝叶斯(Bayesian)在EVA中使用HMC的方法可以帮助决策者制定计划,以防止对生命和财产造成损害。

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