Decomposition of Seasonality and Long‐term Trend in Seismological Data: A Bayesian Modelling of Earthquake Detection Capability |
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Authors: | Takaki Iwata |
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Affiliation: | Tokiwa University, , 1‐430‐1 Miwa, Mito, Ibaraki, 310‐8585 Japan |
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Abstract: | This study demonstrates the decomposition of seasonality and long‐term trend in seismological data observed at irregular time intervals. The decomposition was applied to the estimation of earthquake detection capability using cubic B‐splines and a Bayesian approach, which is similar to the seasonal adjustment model frequently used to analyse economic time‐series data. We employed numerical simulation to verify the method and then applied it to real earthquake datasets obtained in and around the northern Honshu island, Japan. With this approach, we obtained the seasonality of the detection capability related to the annual variation of wind speed and the long‐term trend corresponding to the recent improvement of the seismic network in the studied region. |
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Keywords: | Bayesian methods (smoothing, nonparametric, semiparametric) cubic B‐spline maximum likelihood estimation and inference point processes seasonal adjustment smoothing |
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