PENGGUNAAN TRANSFORMASI WAVELET KONTINYU UNTUK MENGANALIS GEMPA VOLKANIK GUNUNG MERAPI DAN PEMBUATAN ATRIBUT SEISMIK INDIKASI HIDROKARBON PADA EKSPLORASI MINYAK DAN GAS BUMI
The concept of wavelet transform was initially proposed by Morlet and Arens (1982) in geophysics to analyze non-stationary seismic data, then the concept of wavelet transform developed in various fields such as mathematics, digital signal processing, numerical an...
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格式: | Theses and Dissertations NonPeerReviewed |
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[Yogyakarta] : Universitas Gadjah Mada
2014
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在線閱讀: | https://repository.ugm.ac.id/130983/ http://etd.ugm.ac.id/index.php?mod=penelitian_detail&sub=PenelitianDetail&act=view&typ=html&buku_id=71418 |
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總結: | The concept of wavelet transform was initially proposed by Morlet and
Arens (1982) in geophysics to analyze non-stationary seismic data, then the
concept of wavelet transform developed in various fields such as mathematics,
digital signal processing, numerical analysis, geophysics, image processing,
physics , and other fields. Wavelet transform is essentially a process of
transformation using a kernel integration called 'wavelet'. The information that
will be obtained in the wavelet transform is a representation of signals in the ' time
domain' into 'time-frequency domain', known as ' time-frequency representation'.
The process of Time frequency analysis is done by convolution of signal with a
wavelet.
At the time frequency analysis, frequency resolution is obtained by
dilatation the wavelet at certain scale and time resolution is obtained by
translation the wavelet at factor of translation. Combination of the scale and
translation values in the analysis of time-based frequency CWT (Continuous
Wavelet Transform) will provide analytical results that have a high resolution.
The analysis data in the time-frequency domain based on CWT can
overcome the disadvantages of the process of analysis data in the time-frequency
domain based on STFT (Short Time Fourier Transform). The limitation of STFT
method at the process of analysis data in the time-frequency domain is located on
the fixed window selection . The selection of a narrow window will give low
frequency resolution and the selection of a wide window will give low time
resolution.
The application of continuous wavelet transform in the analysis of Merapi
Volcanoe�s seismic data is to find out more clearly changes of the frequency
content of MP earthquake, earthquake avalanches, VTB, volcanic tremor, an
initially of hot cloud earthquake from Mount Merapi in the time-frequency
domain, and to analyze occurrence of very interesting recurrence of MP
earthquake and a large lava flow occurred on 21 to October 31, 1996.
High-resolution spectrum analysis, coherence, rektilinieritas, planaritas,
the degree of polarization, incidence angle and the apparent azimuth angle for MP
earthquake that occurred on December 21 to October 31, 1996 by using a
continuous wavelet transform (Morlet wavelet), can be used to infer the location
of the earthquake source MP and adjacent or similar source mechanisms. and can
be used to analyze the time interval between of recurring MP earthquakes.
A recurrence of a time interval between MP earthquakes that occurred on
December 21 to October 31, 1996 seem similar to time interval of slip occurrence
of a solution of differential equations motion of stick -slip model of visco-elastic
slab. With the similarity occurrence between the model and the observation result,
we can conclude that the dynamics of MP earthquake recurrence is controlled by
the increase of velocity V or pressure and friction. This information can be used
to an illustration that the lava dome growth of Mount Merapi in 1996 was controlled by increasing force inside the body of Mount Merapi at the increasing
of Mount Merapi volcanic activity.
The use of continuous wavelet transform for analysis 2D and 3D seismic
data to oil and gas exploration is the application of complex wavelet (Morlet
wavelet) for generating seismic attributes, the spectral decomposition, and for
generating the gradient amplitude attribute (GAMP).
The GAMP attribute that is generated by using the continuous wavelet
transform can describe the hydrocarbon anomalies in the stratigraphic reservoir or
the combination of structural and stratigraphic reservoir. The application
combination of seismic attributes GAMP as a result of continuous wavelet
transform with inversion attributes: simultaneous inversion (Vp / Vs, Vp, Vs,
density, AIp, AIs, (Lamda-Rho), and (Mu-Rho)), AVO (A �B) and the value
) ( / ) ( f H f V
as the result of three-components microtremor measurement that is
calculated by using the continuous wavelet transform, can be used to detect the
presence of hydrocarbons. This successful method can be proved from the results
of drilling. |
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