...
首页> 外文期刊>Bulletin of Volcanology: Journal of the International Association of Volcanology and Chemistry of the Earth s Interior >Estimation and propagation of volcanic source parameter uncertainty in an ash transport and dispersal model: Application to the Eyjafjallajokull plume of 14-16 April 2010
【24h】

Estimation and propagation of volcanic source parameter uncertainty in an ash transport and dispersal model: Application to the Eyjafjallajokull plume of 14-16 April 2010

机译:灰分输运和扩散模型中火山源参数不确定性的估计和传播:2010年4月14日至16日在Eyjafjallajokull羽中的应用

获取原文
获取原文并翻译 | 示例

摘要

Data on source conditions for the 14 April 2010 paroxysmal phase of the Eyjafjallaj?kull eruption, Iceland, have been used as inputs to a trajectory-based eruption column model, bent. This model has in turn been adapted to generate output suitable as input to the volcanic ash transport and dispersal model, puff, which was used to propagate the paroxysmal ash cloud toward and over Europe over the following days. Some of the source parameters, specifically vent radius, vent source velocity, mean grain size of ejecta, and standard deviation of ejecta grain size have been assigned probability distributions based on our lack of knowledge of exact conditions at the source. These probability distributions for the input variables have been sampled in a Monte Carlo fashion using a technique that yields what we herein call the polynomial chaos quadrature weighted estimate (PCQWE) of output parameters from the ash transport and dispersal model. The advantage of PCQWE over Monte Carlo is that since it intelligently samples the input parameter space, fewer model runs are needed to yield estimates of moments and probabilities for the output variables. At each of these sample points for the input variables, a model run is performed. Output moments and probabilities are then computed by properly summing the weighted values of the output parameters of interest. Use of a computational eruption column model coupled with known weather conditions as given by radiosonde data gathered near the vent allows us to estimate that initial mass eruption rate on 14 April 2010 may have been as high as 10~8 kg/s and was almost certainly above 10~7 kg/s. This estimate is consistent with the probabilistic envelope computed by PCQWE for the downwind plume. The results furthermore show that statistical moments and probabilities can be computed in a reasonable time by using 9~4 = 6,561 PCQWE model runs as opposed to millions of model runs that might be required by standard Monte Carlo techniques. The output mean ash cloud height plus three standard deviations-encompassing c. 99. 7 % of the probability mass-compares well with four-dimensional ash cloud position as retrieved from Meteosat-9 SEVIRI data for 16 April 2010 as the ash cloud drifted over north-central Europe. Finally, the ability to compute statistical moments and probabilities may allow for the better separation of science and decision-making, by making it possible for scientists to better focus on error reduction and decision makers to focus on "drawing the line" for risk assessment.
机译:关于冰岛伊亚菲亚德拉冰浆喷发的阵发性阶段2010年4月14日源条件的数据已被用作弯曲的基于弹道的喷发柱模型的输入。反过来,此模型也已调整为生成适合作为火山灰运输和扩散模型puff的输入的输出,该模型用于在接下来的几天里将阵发性灰云向欧洲和整个欧洲传播。基于我们对源头的确切条件缺乏了解,已为某些源头参数(尤其是排气口半径,排气源速度,平均喷射出的晶粒尺寸和喷射出的晶粒尺寸的标准偏差)分配了概率分布。输入变量的这些概率分布已使用一种技术从蒙特卡罗方法中进行了采样,该技术可从灰分运输和扩散模型中得出输出参数的多项式混沌正交加权估计(PCQWE)。与蒙特卡洛相比,PCQWE的优势在于,由于它可以智能地对输入参数空间进行采样,因此只需较少的模型运行即可得出输出变量的矩和概率估计。在这些输入变量的每个样本点上,都会执行模型运行。然后,通过适当地将目标输出参数的加权值相加来计算输出矩和概率。使用计算喷发柱模型并结合在通风口附近收集的探空仪数据给出的已知天气状况,可以估算出2010年4月14日的初始喷发率可能高达10〜8 kg / s,几乎可以肯定高于10〜7 kg / s该估计与PCQWE为顺风羽计算的概率包络一致。结果进一步表明,与标准蒙特卡洛技术可能需要的数百万个模型运行相比,使用9〜4 = 6,561 PCQWE模型运行可以在合理的时间内计算统计矩和概率。输出的平均灰云高度加上三个标准偏差-包括c。 99. 7%的概率与从Meteosat-9 SEVIRI的2010年4月16日数据中检索到的四维灰云位置很好地进行了质量比较,这是因为灰云飘移到欧洲中北部。最后,通过使科学家有可能更好地专注于减少错误并使决策者专注于为风险评估“划清界限”,计算统计矩和概率的能力可以使科学与决策更好地分离。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号