Please use this identifier to cite or link to this item: http://hdl.handle.net/2122/14870
Authors: Pignatelli, Alessandro* 
D'Ajello Caracciolo, Francesca* 
Console, Rodolfo* 
Title: Automatic inspection and analysis of digital waveform images by means of convolutional neural networks
Journal: Journal of Seismology 
Series/Report no.: /25 (2021)
Publisher: Springer Nature
Issue Date: 14-Oct-2021
DOI: 10.1007/s10950-021-10055-8
URL: https://link.springer.com/article/10.1007%2Fs10950-021-10055-8
Abstract: Analyzing seismic data to get information about earthquakes has always been a major task for seismologists and, more in general, for geophysicists. Recently, thanks to the technological development of observation systems, more and more data are available to perform such tasks. However, this data “grow up” makes “human possibility” of data processing more complex in terms of required efforts and time demanding. That is why new technological approaches such as artificial intelligence are becoming very popular and more and more exploited. In this paper, we explore the possibility of interpreting seismic waveform segments by means of pre-trained deep learning. More specifically, we apply convolutional networks to seismological waveforms recorded at local or regional distances without any pre-elaboration or filtering. We show that such an approach can be very successful in determining if an earthquake is “included” in the seismic wave image and in estimating the distance between the earthquake epicenter and the recording station.
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