...
首页> 外文期刊>Soil Dynamics and Earthquake Engineering >Conditional generative adversarial network model for simulating intensity measures of aftershocks
【24h】

Conditional generative adversarial network model for simulating intensity measures of aftershocks

机译:用于模拟余震强度测量的条件生成对抗网络模型

获取原文
获取原文并翻译 | 示例

摘要

Earthquake disaster records demonstrate that the influence of aftershocks (ASs) needs to be considered in structural seismic design and performance assessment, owing to the additional damage caused by them. To study the failure mechanism of a structure undergoing a sequence earthquake (i.e., mainshock-aftershock (MS-AS)), a clear understanding of the correlation between the intensity measures (IMs) of an MS-AS is important. However, the above correlation has not yet been systematically studied. Previously, some researchers have investigated the correlation between the individual IMs of an MS-AS separately by a Copula function based on an assumption that all the IMs of the MS (AS) are independent. However, the IMs are actually related, owing to their definition. Concurrently, deep learning (particularly the generation models) can be used to reveal the potential connections between data without any assumptions. Moreover, these models can present the conditional probability distribution of data by adding specific conditions. This study aims to build a conditional generative adversarial network (CGAN) model to simulate the IMs of an AS of an MS-AS, which can not only reflect the correlation between the corresponding IMs of the MS-AS but also that between the IMs used. The performance of this model is ascertained based on residual analysis, and the IM AS predictability is tested using real records. This study selects 972 MS-AS ground motions from the Next Generation Attenuation-West2 (NGA-West2) database, randomly dividing them into 80% and 20% and using as the training set and testing set, respectively. The results show that the CGAN model can predict the IMs of ASs with good accuracy. Moreover, the ground motion prediction equation (GMPE) by Abrahamson et al. (ASK14) is selected to compare with the CGAN model, and it is exhibited that the CGAN model matches the as-recorded IMs of ASs better that the former. All these results demonstrate that the proposed CGAN model is a promising and reliable approach for IM prediction of an AS.
机译:地震灾害记录表明,由于它们造成的额外损害,需要考虑余震(屁股)的影响。由于它们造成的额外损害,需要考虑结构性地震设计和性能评估。为了研究经历序列地震的结构的故障机制(即,主轴 - 余震(MS-AS)),清楚地了解了MS-AS的强度测量(IMS)与重要的相关性。然而,上述相关性尚未系统地研究过。此前,一些研究人员已经通过基于MS(AS)的所有IMS是独立的,通过Copula功能分开地研究了MS的各个IMS之间的相关性。然而,由于他们的定义,IMS实际上是相关的。同时,深入学习(特别是生成模型)可用于揭示数据之间的潜在连接而没有任何假设。此外,这些模型可以通过添加特定条件来呈现数据的条件概率分布。本研究旨在构建条件生成的对抗网络(CGAN)模型,以模拟MS-AS的IMS-AS,它不仅可以反映MS-AS的相应IMS之间的相关性,而且可以在所使用的IMS之间反映相应的IMS之间的相关性。基于残余分析确定该模型的性能,并且使用实际记录测试IM作为可预测性的IM。本研究选择了来自下一代衰减 - West2(NGA-West2)数据库的972 ms-as-an Potions,将它们随机划分为80%和20%并分别使用培训集和测试集。结果表明,Cgan模型可以以良好的准确度预测AS的IM。此外,Abrahamson等人的地面运动预测等式(GMPE)。 (ASK14)被选中以与CGAN模型进行比较,并且展示了CGAN模型与前者更好地匹配的屁股IMS。所有这些结果表明,拟议的Cgan模型是我对AS预测的有希望和可靠的方法。

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