地震动
运动(物理)
学习迁移
地震学
地质学
计算机科学
地理
人工智能
作者
Bhargavi Podili,Jahnabi Basu,S. T. G. Raghukanth
标识
DOI:10.1080/13632469.2024.2353261
摘要
Predicting robust earthquake spectra is challenging, especially for data sparse regions such as India. Often, alternatives to the traditional data-driven regression analysis are used to develop empirical models for such regions. Advancing these efforts, the present study aims at exploring an alternative machine learning technique called Transfer learning, wherein a non-parametric deep neural network is trained for response (Sa) and Fourier spectra (FAS) of Himalayas, which uses network parameters that were derived for a large comprehensive database (NGA-West2). While the FAS is derived using magnitude, distance, focal depth, and site class, the Sa is scaled using FAS and significant duration.
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