Abstract:
Prognosis of seismic signal has always been a great interest for the engineers and
seismologists worldwide. Seismic signal represents inelastic response of the ground and
structures, which are mainly characterized by the ground motion of finite duration and short
duration. These signals originate from the two major sources: natural and artificial source.
The seismic waves which originate deep inside of the earth, such as earthquakes, are
considered as the results of natural source. These waves occur naturally when energy is
released in the earth's lithosphere. On the other hand, artificial seismic signal generates from
the explosions, mining activities etc. Recorded seismic signals contain important
characteristics and information that are used indirectly or directly in seismic analysis and
design of structures.
Earthquake ground motions are inherently non-stationary in nature. The non-stationary
seismic signal is generated by earthquake and some other sources like explosion and
landslide. Classical detection and estimation techniques, like Fourier-based technique has
been employed to analyse these seismic signals. The Fourier spectrum of a ground motion
may be narrow or broad. A narrow spectrum can produce a smooth, almost sinusoidal timehistory.
A broad spectrum contains a variety of frequency components that produce an
irregular time-history. This method is applied to overcome the problem encountered upon the
analysis of seismic signal, but it fails to provide temporal information of the seismic signal,
and thus it is not suitable for analysis of earthquake records. However, time-frequency method
has a potential which greatly facilitates the extraction of the time-frequency information from
the signals. It transforms a time-domain signal into a two-dimensional representation of
frequency contents with respect to time. The most commonly used method in earthquake
engineering is short time Fourier transform (STFT) and Gabor transform (GT). The STFT are
not generally used due to leakage problem whereas GT eliminates the discrepancy by
considering a Gaussian window which reduces the leakage of energy in signal. In this work,
GT is employed for noise removal of seismic signals and its application extended to the
generation of synthetic time-histories for earthquake signals. The comparison of GT with
wavelet transform for the de-noising of seismic signals reflects that the performance of the
GT is superior in comparison to wavelet transform. For this reason, application of GT has
been extended for the generation of synthetic time-histories of earthquake signals. Further, Stransform
was introduced to overcome the limitations of wavelet transform. S-transform
retains the absolutely phase information in contrast to the wavelet approach. However, S
transform is also not suitable for the analysis of seismic signals as it holds the poor energy
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distribution over the time-frequency plane. Improvement of the signal resolution is the main
objective for the time-frequency signal processing and has extensively been utilized in
extraction of attribute parameters and in geophysical data processing. In time-frequency
signal processing, Wigner-Ville distribution is another well known method to improve the
signal resolution for better analysis. The Wigner-Ville distribution is distinguished and much
more effective from the running Fourier transform, wavelet transform and S-transform in
terms of increased resolution in the time-frequency plane. However, this method introduces
the complexity due to cross-terms interference and makes the interpretation tedious for the
human analyst. The research has been done with different kernel functions (or low pass filter)
which reduce the effect of cross-terms. However, it limits the time-frequency resolution on
the removal of cross-terms. An alternate time-frequency method known as Gabor-Wigner
transform (GWT) is introduced and applied for the analysis of seismic signals. GWT is
developed by combining the Gabor transform (GT) and Wigner-Ville distribution (WVD). In
comparison with WVD, GT is free from the cross-term interference. Hence to obtain the
better clarity and to remove the cross-term interferences, GT and WVD are carefully
combined and the resultant GWT is employed for the analysis of signals. Later it is applied
into the assessment of building damage analysing the shifting of fundamental frequency.
Records obtained at four different buildings during earthquake. Further, application of GWT
has been extended for detection of predominant frequency/period of the first 3 sec data of the
initial portion of P-wave to estimate the magnitude for earthquake early warning systems.
Analysing a signal visually doesn’t lead to an accurate and precise result. Therefore, in
order to quantify the results, Renyi entropy is considered in this thesis. The Renyi entropy is
used to investigate the synthetic as well as digital data for different window length of the
GWT. Present study confirms the efficiency of GWT in comparison with the performance of
GT, WVD and other time-frequency methods. The simulation results are quantified by
entropy measures and proved to be an efficient technique in providing localized response for
structural damage detection, where frequency shifting occurred in the earthquake damaged
buildings are observed. In addition to GWT method, synchrosqueezing transform (SST) is
also applied in the analysis of seismic signals, which is found to be an efficient method for
signal analysis.