Abstract:
The modernisation of seismic instrumentation has resulted in better quality data with higher
resolution inspiring development of newer computational methodologies for enhancing signal
characteristics while processing ground motion time histories for more realistic seismological
interpretations. Time-frequency representation and spectral feature extraction from a digitally
recorded ground motion time history of an earthquake is one of the cornerstones in seismological
signal processing and interpretation. Conventional techniques viz., Frequency domain and Time
domain analyses have been developed in the past for frequency decomposition of the
seismological data but have failed to capture the time varying frequency contents in time series
like seismograms which are complicated convolution of source radiation effects, path of
propagation, impedance contrast, characteristics of instrument and ambient noise at recording
station. Seismograms reveal non-stationary characteristics having broad range of frequency
content. The time variant characteristics of the ground motion time history imply study of the
localised temporal distribution of these frequencies and their pattern variations with time.
The techniques of Time-Frequency Analyses (TFA) have been used for characterising the
frequency content with time in the recorded ground motion time histories which makes use of
two dimensional information i.e., time and frequency of the time series simultaneously and
elucidates the true structure of the time series (seismogram) when the frequency content of the
time series varies with time. The TFA techniques namely Short Term Fourier Transform (STFT),
Gabor Transform (GT), Wavelet Transform (WT), Wigner-Ville Distribution (WVD), Choi-
William Distribution (CWD) and Cone Shape Distribution (CSD) have been used. The selection
of suitable technique for a specific field like seismology is a challenging task.
The main objective of the research work was to look into the time frequency distribution in the
seismograms recorded from an active seismic region like Garhwal Himalayas and study the
frequency variation with time due to varying size and locations of the microearthquakes.
The study area for the present study has been selected based on its seismic activity and a set of
good instrumentation deployed to record it. The Garhwal Himalaya region is one of the most
seismically active regions for which the seismic activity is being monitored for last few decades
through deployment of a seismological network which was deployed due to the presence of Tehri
dam which is one of the highest dams in Himalayas. Garhwal Himalaya occupies the central
sector of Western Himalaya from latitude 290 to 310 and longitude 780 to 800 and has experienced
many damaging earthquakes in the past. The region falls under Seismic Zone IV of seismic
zoning map of the India (IS: 1893, 2016) and forms the western seismic gap of the Himalaya.
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The data recorded during the period from 2009 to 2011 was considered for the present research
work where the array has recorded 1570 events. Out of these 1570 only 63 events (233
seismograms) were selected which were having magnitudes range varying from 1.0 to 3.0 and the
hypocentral distances varying from 30 km to 150 km.
To study the time variant characteristics of the seismograms using Time Frequency Analysis
techniques, the selected data of recorded time history has been further subdivided into different
magnitude ranges (Mi, i=1 to 4) and stipulated linear epicentral distance ranges (Dj, j= 1 to 8).
TFA was then applied on the data set compiled from Garhwal Himalaya and the comparison
carried out between linear and quadratic TFA techniques revealed that while quadratic TFA has
good time-frequency resolution, linear TFA better suits to the analyses and synthetics due to its
reconstructive characteristics.
The Stacking of seismograms have been carried out through spectrograms in time frequency
domain which has not only increased the signal to noise ratio but also has supressed the effect of
local cultural noise and thus enhances the time-frequency features in the spectrograms of stacked
seismograms.
The stacking of noisy vertical seismograms has been carried out in Time-Frequency (T-F)
domain using discrete Gabor Transform (GT) technique and the Invert average time history of the
stacked vertical spectrograms has been obtained using discrete Gabor Expansion (GE) technique.
Spectrogram manifests the temporal information of various frequencies in a time history as well
as energy variation pattern of frequencies over time and reveals three variable, time, frequency
and amplitude and can be used to quantify the maximum energy burst with their incident time and
frequency contents both simultaneously. The validation of the stacking is carried out by
comparing the frequency ranges present in stacked seismogram with the frequency range in
single real seismogram for same magnitude distance range.
To study the time variant behaviour of incoming waves both, linear and quadratic Time
Frequency Analyses (TFA) techniques, have been applied on the stacked seismograms. After
carrying out initial processing on synthetic data Hanning window and Morlet wavelet (fc-0.75
Hz) have been selected for STFT and WT, respectively. The Window length (WL) and timefrequency
sampling information (N) in terms of sample has been kept equal to 512 samples for all
TFA techniques. The time-scale/frequency spectrums were generated with Continuous Wavelet
Transform (CWT) and shown by time-frequency coordinates instead of time-scale. The exercise
is carried out for 63 events having 28 pairs of magnitude distance combinations. The section
describes the temporal variation of individual frequencies, simulation of these frequencies and
finally simulation of frequencies in the range of 1 to 10Hz for different magnitude-distance pairs.
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The spectrograms reveal large number of energy bursts in the 5 to 9Hz range of frequency. These
bursts may be attributed to refractions and reflections of direct waves from the heterogeneities
inside the earth. The largest energy concentrated burst in the whole seismogram has appeared at
about 9 sec to 11 sec with respect to p-wave arrival and are reported with lower frequency and
high amplitude in the seismograms.
To explore the frequency pattern variation with time of the stacked seismogram, two different
frequency components have been selected for demonstration. Both the frequencies are selected to
represent the maxima in frequency and time domains respectively, viz., one frequency component
is corresponding to the highest frequency amplitude called as dominant frequency (fd) in
frequency domain/Fourier Transform and second corresponds to the maximum amplitude of the
seismogram in time domain. The frequency amplitude coefficients corresponding to dominant
frequency and frequency corresponding to the maximum amplitude in seismograms have been
extracted from the GT spectrogram of TFA. The present TFA has been carried out using GT due
its inversion capability to reproduce the spectrogram back into time domain. The time domain
representation in terms of sine and cosine components is extra advantage for using it in pattern
recognition and its feasibility for restitution of original time histories.
The frequencies between 1 to 10Hz have been selected from the stacked average vertical
seismograms for each of the magnitude-distance pairs to synthesize a seismogram. Simulation
has been done as the amplitude modulator functions are developed for the individual frequencies
of the target seismogram by decomposing into localised basic window function using Discrete
Gabor Transform and Discrete Gabor Expansion techniques.
The identified Gabor amplitude coefficients (A’s) corresponding to individual frequencies (1 to
10 Hz) are extracted from the original GT spectrogram. A time series (x(t)fj, j =
1, to 10 Hz for f frequencies) of each frequency component can be generated using these
identified Gabor amplitude coefficients envelope as x(t)fj = Aifj cos(2π(fj)t + φfj), where, Aifj
and φfj are the Gabor amplitude coefficients and phase difference corresponding to jth frequency
component for a time series, respectively. Aifj acts as amplitude modification function and
cos(2π(fj)t + φfj) as stationary process for a particular jth frequency component and their
multiplication results in the target time series. Here, i represents the number of coefficients used
for different delay times in the time series.
The target seismogram time history has been formed by stacking all the time series of frequencies
1 to 10Hz component in time-frequency domain having a signal to noise ratio equal to 6.27E-04
and FFT with standard deviation equal to 7.5904E-06. Since, the time variation of identified
Gabor amplitude coefficients envelope pattern for particular frequency resembles with Fourier
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spectrum of Gaussian-modulated signal, a Gaussian-modulated sinusoidal pattern has been used
to generalise the concept of simulation of synthetic time series of 1 to 10 Hz frequencies
components. The Gaussian-modulated sinusoidal generates a time series for the pattern as
𝑦𝑖 (𝑡) = 𝐴𝑖 𝑒𝑥𝑝(−𝑘 (𝑖Δ𝑡 − 𝑑)2) cos(2𝜋 𝑓𝑐 (𝑖Δ𝑡 − 𝑑)) and 𝑘 =
5𝜋2𝑏2𝑓𝑐
2
𝑞 ln(10)
𝑓𝑜𝑟 𝑖 =
0, 1, 2, … … . . , 𝑁 − 1 where, Ai is amplitude at delay d, b is the normalized bandwidth, q is
the attenuation, d is the delay in sec., fc is the central frequency (Hz), Δ𝑡 is time sampling interval
(sec) and N is the samples. Factor 𝑒𝑥𝑝(−𝑘 (𝑖Δ𝑡 − 𝑑)2) serves as a damping factor which
limits the energy of the wave to a small interval centred on Δ𝑡 = 𝑑. Thus, factor A𝑒𝑥𝑝 (−𝑘 𝑡2)
represents the envelope of the Gaussian-modulated sine pattern. First the time history model for
particular frequency component is computed by giving appropriate initial input parameters values
of Ai at different delay time values. The Square Deviation between the target and estimated
individual time series is summed up over time and is optimised by changing the initial input
parameters.
The synthetic model seismogram time history has been formed by stacking all the time series of
frequencies 1 to 10Hz component in time-frequency domain having a signal to noise ratio equal
to 8.32E-04 and FFT with standard deviation equal to 8.613E-06. The coefficient of
determination (R2) between target seismogram and synthetic model seismogram has been found
to be 0.922 which reveals a good matching with the target seismogram of these frequencies. The
same exercise has been carried out for the rest of the data set and the results shows that the
present methodology can be used for seismogram synthesis in future.
The following are the main conclusions drawn from the present research work.
1. A new approach has been developed to synthesize seismograms using TFA techniques.
2. The comparison of TFA techniques to analyse and synthesize seismograms reveal that STFT
and GT techniques are better performers due to their inherent advantages of reconstructive
properties.
3. The analysis of non-stationary seismograms from Garhwal Himalaya shows that the selected
window length/ size and time-frequency sampling information (N) should be kept same to
avoid some of the spectral leakage.
4. The time variation of specific frequencies in non-stationary seismograms of
microearthquakes can be extracted faithfully using linear TFA techniques. The Gabor
amplitude coefficients of temporal variation of frequencies obtained from spectrograms can
be used for synthesising a seismogram.
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5. Gaussian-modulated sinusoidal functions can be used to model the non-stationarity of the
individual time series of a specific frequency for a magnitude-distance pair which can further
be extended to synthesize a non-stationary seismogram for a set of frequencies.