Site-specific selection of conditional spectrum-based motions through modified stochastic ground motion modeling

Naveen Senthil, Ting Lin
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Abstract

Despite the utilization of the prominent ground motion selection and modification (GMSM) method—the exact conditional spectrum (CS-exact)—for site-specific ground motion selection, limited ground motion availability may result in records that may not fully represent regional site characteristics or capture the underlying distribution of causal parameters. In this article, we explore an alternative record selection approach, termed conditional spectrum utilizing stochastic ground motion modeling (CS-SGMM), to select site-specific CS-based ground motions by leveraging an illustrative site-based stochastic ground motion model, specifically aimed at addressing the challenges caused by data limitations. This approach involves modifying the parameters of the stochastic ground motion model through constrained optimization to match the target CS within the desired period range of interest while aligning with regional trends. This involves incorporating causative parameters to select site-specific ground motions matching the target CS. Subsequently, we implement a redistribution procedure to ensure that the selected ground motions effectively represent the distribution of causal scenarios, thereby achieving higher hazard consistency in CS-based selection. Illustrative examples from a site in the Western United States demonstrate the effectiveness of our approach across different structural periods and ground motion intensity levels. Finally, we evaluate the viability of our approach by comparing the selected set of ground motions with those chosen using contemporary GMSM methods, such as CS-exact and generalized conditional intensity measure (GCIM), which select records based on spectral shape and both spectral shape and duration, respectively.
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通过修正的随机地动建模,针对具体地点选择基于条件谱的地震运动
尽管采用了著名的地动选择和修正(GMSM)方法--精确条件频谱(CS-exact)--来选择特定场址的地动,但有限的地动可用性可能导致记录不能完全代表区域场址特征或捕捉因果参数的基本分布。在本文中,我们探讨了另一种记录选择方法,称为利用随机地动建模的条件频谱(CS-SGMM),通过利用基于场地的说明性随机地动模型来选择特定场地的 CS 地动,专门用于解决数据限制带来的挑战。这种方法包括通过约束优化来修改随机地面运动模型的参数,以便在所需的时期范围内匹配目标 CS,同时与区域趋势保持一致。这就需要结合成因参数来选择与目标 CS 相匹配的特定场址地动。随后,我们实施了重新分配程序,以确保所选地面运动能有效代表因果情景的分布,从而在基于 CS 的选择中实现更高的危险一致性。来自美国西部某地的示例证明了我们的方法在不同结构时期和地动强度水平下的有效性。最后,我们通过比较所选地动集合与使用当代 GMSM 方法(如 CS-exact 和广义条件强度测量法 (GCIM))所选地动集合,评估了我们方法的可行性。
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