Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/97111
Title: Radial basis function neural networks to foresee aftershocks in seismic sequences related to large earthquakes
Authors: Barrile, Vincenzo
Cacciola, Matteo
D'Amico, Sebastiano
Greco, Antonino
Morabito, Francesco Carlo
Parrillo, Francesco
Keywords: Radial basis functions
Neural networks (Computer science)
Earthquake aftershocks
Earthquake prediction -- Data processing
Issue Date: 2006-10
Publisher: Springer-Verlag
Citation: Barrile, V., Cacciola, M., D’Amico, S., Greco, A., Morabito, F., & Parrillo, F. (2006). Radial basis function neural networks to foresee aftershocks in seismic sequences related to large earthquakes. ICONIP 2006, Hong Kong (pp. 909-916).
Abstract: Radial Basis Function Neural Network are known in scientific literature for their abilities in function approximation. Above all, this particular kind of Artificial Neural Network is applied to time series forecasting in non-linear problems, where estimation of future samples starting from already detected quantities is very hardly. In this paper Radial Basis Function Neural Network was implemented in order to predict the trend of n(t) for aftershocks temporal series, that is the numerical series of daily-earthquake’s number occurred after a great earthquake with magnitude M > 7.0 Richter. In particular we implemented the RBF-NN for the Colfiorito seismic sequence. The seismic sequences considered in this work are obtained following criteria already known in scientific literature. Results of proposed approach are very encouraging.
URI: https://www.um.edu.mt/library/oar/handle/123456789/97111
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