光谱加速度
谱线
加速度
物理
下降(电信)
压力(语言学)
地质学
计算物理学
峰值地面加速度
地震动
地震学
经典力学
工程类
电信
量子力学
语言学
哲学
作者
Shota Shimmoto,Hiroe Miyake
摘要
ABSTRACT This study addresses a challenge in ground-motion prediction, in which the observed variability of spectral stress drop Δσfc estimated from corner frequencies is significantly larger than the between-event variability of peak ground acceleration (PGA) supported by ground-motion prediction equations. To tackle this issue, we performed spectral ratio analyses on 34 crustal earthquakes with Mw 5.0–7.1 in Japan. Initially, we employed the standard spectral ratio method to estimate the corner frequencies fc and the spectral stress drops Δσfc. This method assumes the single-corner-frequency (SCF) spectral model. Next, we introduce a two-stage spectral ratio method to obtain the double-corner-frequency (DCF) spectra. This method first estimates the corner frequency of the small events in advance using further smaller events and the standard method. Then, it computes the spectra of the target event using the spectra of the small events predicted from the SCF model with the estimated corner frequency. We fit the SCF model to the observed spectra to estimate a high-frequency-fitted corner frequency fch and calculate the corresponding spectral stress drops Δσfch, called the stress parameter. Our analyses reveal that the variability of Δσfch aligns with the observed PGA variability, in contrast to the Δσfc variability, which is significantly larger and consistent with findings in previous corner-frequency studies. Thus, at least regarding the spectral ratio approach, the discrepancy between spectral stress drop and PGA variabilities primarily stems from the difference in the Δσfc and Δσfch variabilities, attributed to the diversity in source spectral shapes. This study demonstrates that although source spectra for Mw 5.0 align with the SCF model on average, deviations from the SCF model become increasingly pronounced with larger magnitudes. The results emphasize the significance of implementing the DCF model for improved ground-motion predictions.
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