...
首页> 外文期刊>Bulletin of earthquake engineering >Calibration of ground motion models to Icelandic peak ground acceleration data using Bayesian Markov Chain Monte Carlo simulation
【24h】

Calibration of ground motion models to Icelandic peak ground acceleration data using Bayesian Markov Chain Monte Carlo simulation

机译:使用Bayesian Markov Chain Monte Carlo仿真校准地面运动模型到冰岛峰地面加速度数据

获取原文
获取原文并翻译 | 示例

摘要

Iceland is seismically the most active region in northern Europe. Large single earthquakes (Mw 7) and seismic sequences of moderate-to-strong earthquakes (Mw 6-6.5) have repeatedly occurred during past centuries in the populated South Iceland Seismic Zone (SISZ). The seismic hazard in Iceland has mainly been evaluated using ground motion models (GMMs) developed from strong-motion observations in other countries and only to a very limited extent from Icelandic data, despite a particularly rapid attenuation of ground motions with distance in Iceland. In this study, we evaluate the performance of these GMMs against the Icelandic strong-motion dataset, consisting of peak ground accelerations of moderate-to-strong (Mw 5-6.5) and local (0-80km) earthquakes in the SISZ. We find that these GMMs exhibit both a strong bias against the dataset and a relatively large variability, which calls their applicability and earlier hazard analyses into question. To address this issue, we recalibrate each of the GMMs to the dataset using Bayesian regression and Markov Chain Monte Carlo simulations. This approach allows useful prior information of the GMM parameters to be combined with the likelihood of the observed data and provides posterior probability density functions of model residuals and regression parameters. The recalibrated GMMs are unbiased with respect to the data and have a low total standard deviation of around 0.17 (base-10 logarithmic units). The model-to-model variability in the median predictions vary primarily with distance, reaching 0.05 the lowest for Mw 6.3-6.5 at intermediate distances. While the lack of near-fault and far-field data, particularly at large magnitudes, and the different functional forms of the GMMs calibrated to the same dataset may affect the results, the recalibrated GMMs should represent well the ground motions of a typical sequence of moderate-to-strong SISZ earthquakes. We present the recalibrated GMMs of this study as promising candidates for
机译:冰岛是北欧最活跃的地区。在人口稠密的南冰岛地震区(SISZ)过去几个世纪过去几个世纪,大地震(MW 7)和中等地震(MW 6-6.5)的震动序列反复发生。冰岛的地震危害主要通过在其他国家的强大运动观测中产生的地面运动模型(GMMS)进行评估,并且只有在冰岛数据的程度上非常有限,尽管冰岛距离的地面运动特别快速衰减。在这项研究中,我们评估了这些GMM对冰岛强运动数据集的表现,包括中等至强(MW 5-6.5)和局域网中的峰接地加速度和本地(0-80km)地震。我们发现,这些GMMS对数据集的强大偏见以及相对较大的可变性,称为其适用性和早期的危险分析。为了解决这个问题,我们使用贝叶斯回归和马尔可夫链蒙特卡罗模拟重新校准每个GMM到数据集。该方法允许有用的GMM参数的有用的现有信息与观察到的数据的可能性组合,并提供模型残差和回归参数的后验概率密度函数。重新校准的GMMS对数据没有偏向,并且具有约0.17(基本-10对数单元)的低总标准偏差。中位数预测的模型 - 模型变异性主要与距离相差,在中间距离处达到MW 6.3-6.5的最低值。虽然缺乏近故障和远场数据,特别是在校准到相同数据集的GMM的不同功能形式的近似故障和远场数据可能会影响结果,但重新校准的Gmms应该表示典型的序列的地面运动中等至强大的Sisz地震。我们将本研究的重新校准GMMS作为承诺的候选人展示

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