Title of article :
GENERATION OF SYNTHETIC EARTHQUAKE RECORDS BY ARTIFICIAL INTELLIGENCE TECHNIQUES
Author/Authors :
Fadavi Amiri, M School of Computer & Information Technology - Shahrood University of Technology, Shahrood , Soleimani Eyvari, S. A School of Electrical Engineering - Shahrood University of Technology, Shahrood , Hasanpoor, H School of Computer & Information Technology - Shahrood University of Technology, Shahrood , Shamekhi Amiri, M School of Civil Engineering - Shahrood University of Technology, Shahrood
Abstract :
For seismic resistant design of critical structures, a dynamic analysis, based on either
response spectrum or time history is frequently required. Due to the lack of recorded
data and randomness of earthquake ground motion that might be experienced by the
structure under probable future earthquakes, it is usually difficult to obtain recorded data
which fit the necessary parameters (e.g. soil type, source mechanism, focal depth, etc.)
well. In this paper, a new method for generating artificial earthquake accelerograms
from the target earthquake spectrum is suggested based on the use of wavelet analysis
and artificial neural networks. This procedure applies the learning capabilities of neural
network to expand the knowledge of inverse mapping from the response spectrum to the
earthquake accelerogram. At the first step, wavelet analysis is utilized to decompose
earthquake accelerogram into several levels, which each of them covers a special range
of frequencies. Then for every level, a neural network is trained to learn the relationship
between the response spectrum and wavelet coefficients. Finally, the generated
accelerogram using inverse discrete wavelet transform is obtained. In order to make
earthquake signals compact in the proposed method, the multiplication sample of LPC
(Linear predictor coefficients) is used. Some examples are presented to demonstrate the
effectiveness of the proposed method.
Keywords :
artificial spectrum , time series analysis , wavelet analysis , artificial neural network , particle swarm optimization
Journal title :
Astroparticle Physics