基于经验格林函数和随机方法的台湾南部地区强地面运动模拟

T. Teng, P. Chen, Ting-Wei Chang, Yuan-Sen Yang, C. Chiu, W. Liao
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引用次数: 0

摘要

本研究提出强地震动模拟方法,以供未来台湾南部某发电厂易碎性研究之用。采用改进的随机方法和经验格林函数方法综合了具体事件的强地震动。本文提出了一种针对特定场地和事件的强地面运动的修正物理随机函数模型,并进行了样本水平的验证。基于震源、路径和局地的特殊模型,得到了强地震动物理随机函数的随机变量。傅里叶反变换用于模拟强地面运动。经验格林函数法收集发生在大地震震源附近的小地震事件的观测现场记录,模拟大地震事件产生的宽带强地面运动。最后,介绍了本文提出的两种模拟方法在1995年神户地震和2006年台湾屏东地震中对西明石站地震动记录的模拟应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Simulation of Strong Ground Motion Using Empirical Green Function and Stochastic Method for Southern Taiwan Area
This study presents strong ground motion simulation methods for the future fragility study of a power plant in Southern Taiwan. The modified stochastic method and empirical Green function method are utilized to synthesize the strong ground motions of specific events. A modified physical random function model of strong ground motions for specific sites and events is presented in this study with verification of sample level. Based on the special models of the source, path, and local site, the random variables of the physical random function of strong ground motions is obtained. The inverse Fourier transform is used to simulate strong ground motions. For the empirical Green function method, the observed site records from small earthquake events occurring around the source area of a large earthquake are collected to simulate the broadband strong ground motion from a large earthquake event. Finally, an application of proposed two simulated methods of this study for simulating the ground motion records of Nishi-Akashi Station at 1995 Kobe earthquake and 2006 Southern Taiwan PingDong earthquake are presented.
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