https://en.wikipedia.org/wiki/Geophysical_survey
Geophysical survey is the systematic collection of geophysical data for spatial studies. Detection and analysis of the geophysical signals forms the core of Geophysical signal processing. The magnetic and gravitational fields emanating from the Earth's interior hold essential information concerning seismic activities and the internal structure. Hence, detection and analysis of the electric and Magnetic fields is very crucial. As the Electromagnetic and gravitational waves are multi-dimensional signals, all the 1-D transformation techniques can be extended for the analysis of these signals as well. Hence this article also discusses multi-dimensional signal processing techniques.
Geophysical surveys may use a great variety of sensing instruments, and data may be collected from above or below the Earth's surface or from aerial, orbital, or marine platforms. Geophysical surveys have many applications in geology, archaeology, mineral and energy exploration, oceanography, and engineering. Geophysical surveys are used in industry as well as for academic research.
The sensing instruments such as gravimeter, gravitational wave sensor and magnetometers detect fluctuations in the gravitational and magnetic field. The data collected from a geophysical survey is analysed to draw meaningful conclusions out of that. Analysing the spectral density and the time-frequency localisation of any signal is important in applications such as oil exploration and seismography.
Geophysical survey is the systematic collection of geophysical data for spatial studies. Detection and analysis of the geophysical signals forms the core of Geophysical signal processing. The magnetic and gravitational fields emanating from the Earth's interior hold essential information concerning seismic activities and the internal structure. Hence, detection and analysis of the electric and Magnetic fields is very crucial. As the Electromagnetic and gravitational waves are multi-dimensional signals, all the 1-D transformation techniques can be extended for the analysis of these signals as well. Hence this article also discusses multi-dimensional signal processing techniques.
Geophysical surveys may use a great variety of sensing instruments, and data may be collected from above or below the Earth's surface or from aerial, orbital, or marine platforms. Geophysical surveys have many applications in geology, archaeology, mineral and energy exploration, oceanography, and engineering. Geophysical surveys are used in industry as well as for academic research.
The sensing instruments such as gravimeter, gravitational wave sensor and magnetometers detect fluctuations in the gravitational and magnetic field. The data collected from a geophysical survey is analysed to draw meaningful conclusions out of that. Analysing the spectral density and the time-frequency localisation of any signal is important in applications such as oil exploration and seismography.
Types of geophysical survey
There are many methods and types of instruments used in geophysical surveys. Technologies used for geophysical surveys include:
- Seismic methods, such as reflection seismology, seismic refraction, and seismic tomography.
- Seismoelectrical method
- Geodesy and gravity techniques, including gravimetry and gravity gradiometry.
- Magnetic techniques, including aeromagnetic surveys and magnetometers.
- Electrical techniques, including electrical resistivity tomography, induced polarization, spontaneous potential and marine control source electromagnetic (mCSEM) or EM seabed logging.
- Electromagnetic methods, such as magnetotellurics, ground penetrating radar and transient/time-domain electromagnetics, surface nuclear magnetic resonance (also known as magnetic resonance sounding).
- Borehole geophysics, also called well logging.
- Remote sensing techniques, including hyperspectral.
Geophysical signal detection
This
section deals with the principles behind measurement of geophysical
waves. The magnetic and gravitational fields are important components of
geophysical signals.
The instrument used to measure the change in gravitational field is the gravimeter.
This meter measures the variation in the gravity due to the subsurface
formations and deposits. To measure the changes in magnetic field the magnetometer
is used. There are two types of magnetometers, one that measures only
vertical component of the magnetic field and the other measures total
magnetic field.
Measurement of Earth’s magnetic fields
Magnetometers
are used to measure the magnetic fields, magnetic anomalies in the
earth. The sensitivity of magnetometers depends upon the requirement.
For example, the variations in the geomagnetic fields can be to the
order of several aT where 1aT = 10−18T . In such cases, specialized magnetometers such as the superconducting quantum interference device (SQUID) are used.
Jim Zimmerman co-developed the rf superconducting quantum interference device (SQUID) during his tenure at Ford research lab. However, events leading to the invention of the SQUID were in fact, serendipitous. John Lambe, during his experiments on nuclear magnetic resonance noticed that the electrical properties of indium varied due to a change in the magnetic field of the order of few nT. However, Lambe was not able to fully recognize the utility of SQUID.
SQUIDs have the capability to detect magnetic fields of extremely low magnitude. This is due to the virtue of the Josephson junction.
Jim Zimmerman pioneered the development of SQUID by proposing a new
approach to making the Josephson junctions. He made use of niobium
wires and niobium ribbons to form two Josephson junctions connected in
parallel. The ribbons act as the interruptions to the superconducting
current flowing through the wires. The junctions are very sensitive to
the magnetic fields and hence are very useful in measuring fields of the
order of 10^-18T.
Seismic wave measurement using gravitational wave sensor
Gravitational
wave sensors can detect even a minute change in the gravitational
fields due to the influence of heavier bodies. Large seismic waves can
interfere with the gravitational waves and may cause shifts in the
atoms. Hence, the magnitude of seismic waves can be detected by a
relative shift in the gravitational waves.
Measurement of seismic waves using atom interferometer
The motion of any mass is affected by the gravitational field.
The motion of planets is affected by the Sun's enormous gravitational
field. Likewise, a heavier object will influence the motion of other
objects of smaller mass in its vicinity. However, this change in the
motion is very small compared to the motion of heavenly bodies. Hence,
special instruments are required to measure such a minute change.
Atom interferometers work on the principle of diffraction. The diffraction gratings
are nano fabricated materials with a separation of a quarter wavelength
of light. When a beam of atoms pass through a diffraction grating, due
the inherent wave nature of atoms, they split and form interference
fringes on the screen. An atom interferometer is very sensitive to the
changes in the positions of atoms. As heavier objects shifts the
position of the atoms nearby, displacement of the atoms can be measured
by detecting a shift in the interference fringes.
Existing approaches in geophysical signal recognition
This
section addresses the methods and mathematical techniques behind signal
recognition and signal analysis. It considers the time domain and
frequency domain analysis of signals. This section also discusses
various transforms and their usefulness in the analysis of
multi-dimensional waves.
3D sampling
Sampling
The
first step in any signal processing approach is analog to digital
conversion. The geophysical signals in the analog domain has to be
converted to digital domain for further processing. Most of the filters
are available in 1D as well as 2D.
Analog to digital conversion
As
the name suggests, the gravitational and electromagnetic waves in the
analog domain are detected, sampled and stored for further analysis. The
signals can be sampled in both time and frequency domains. The signal
component is measured at both intervals of time and space. Ex,
time-domain sampling refers to measuring a signal component at several
instances of time. Similarly, spatial-sampling refers to measuring the
signal at different locations in space.
Traditional sampling of 1D time varying signals is performed by
measuring the amplitude of the signal under consideration in discrete
intervals of time. Similarly sampling of space-time signals (signals
which are functions of 4 variables – 3D space and time), is performed by
measuring the amplitude of the signals at different time instances and
different locations in the space. For example, the earth's gravitational
data is measured with the help of gravitational wave sensor or gradiometer by placing it in different locations at different instances of time.
Spectrum analysis
Multi-dimensional Fourier transform
The
Fourier expansion of a time domain signal is the representation of the
signal as a sum of its frequency components, specifically sum of sines
and cosines. Joseph Fourier
came up with the Fourier representation to estimate the heat
distribution of a body. The same approach can be followed to analyse the
multi-dimensional signals such as gravitational waves and
electromagnetic waves.
The 4D Fourier representation of such signals is given by
- ω represents temporal frequency and k represents spatial frequency.
- s(x,t) is a 4-dimensional space-time signal which can be imagined as travelling plane waves. For such plane waves, the plane of propagation is perpendicular to the direction of propagation of the considered wave.
Wavelet transform
The motivation for development of the Wavelet transform was the Short-time Fourier transform. The signal to be analysed, say f(t) is multiplied with a window function w(t)
at a particular time instant. Analysing the Fourier coefficients of
this signal gives us information about the frequency components of the
signal at a particular time instant.
The STFT is mathematically written as:
The Wavelet transform is defined as
A variety of window functions can be used for analysis. Wavelet
functions are used for both time and frequency localisation. For
example,one of the windows used in calculating the Fourier coefficients
is the Gaussian window which is optimally concentrated in time and
frequency. This optimal nature can be explained by considering the time
scaling and time shifting parameters a and b respectively. By choosing the appropriate values of a and b,
we can determine the frequencies and the time associated with that
signal. By representing any signal as the linear combination of the
wavelet functions, we can localize the signals in both time and
frequency domain. Hence wavelet transforms are important in geophysical
applications where spatial and temporal frequency localisation is
important.
Time frequency localisation using wavelets
Geophysical signals are continuously varying functions of space
and time. The wavelet transform techniques offer a way to decompose the
signals as a linear combination of shifted and scaled version of basis
functions. The amount of "shift" and "scale" can be modified to localize
the signal in time and frequency.
Beamforming
Simply put, space-time signal filtering problem can be thought as localizing the speed and direction of a particular signal.
The design of filters for space-time signals follows a similar approach
as that of 1D signals. The filters for 1-D signals are designed in such
a way that if the requirement of the filter is to extract frequency
components in a particular non-zero range of frequencies, a bandpass filter
with appropriate passband and stop band frequencies in determined.
Similarly, in the case of multi-dimensional systems, the
wavenumber-frequency response of filters is designed in such a way that
it is unity in the designed region of (k, ω) a.k.a. wavenumber – frequency and zero elsewhere.
This approach is applied for filtering space-time signals.
It is designed to isolate signals travelling in a particular direction.
One of the simplest filters is weighted delay and sum beamformer. The
output is the average of the linear combination of delayed signals. In
other words, the beamformer output is formed by averaging weighted and
delayed versions of receiver signals. The delay is chosen such that the
passband of beamformer is directed to a specific direction in the space.
Classical estimation theory
This
section deals with the estimation of the power spectral density of the
multi-dimensional signals.The spectral density function can be defined
as a multidimensional Fourier transform of the autocorrelation function
of the random signal.
The spectral estimates can be obtained by finding the square of the
magnitude of the Fourier transform also called as Periodogram. The
spectral estimates obtained from the periodogram have a large variance
in amplitude for consecutive periodogram samples or in wavenumber. This
problem is resolved using techniques that constitute the classical
estimation theory. They are as follows:
1.Bartlett suggested a method that averages the spectral
estimates to calculate the power spectrum. Average of spectral estimates
over a time interval gives a better estimate.
- Bartlett's case
2.Welch's method suggested to divide the measurements using data
window functions, calculate a periodogram, average them to get a
spectral estimate and calculate the power spectrum using Fast Fourier
Transform (FFT).This increased the computational speed.
- Welch's case
4.The periodogram under consideration can be modified by multiplying
it with a window function. Smoothing window will help us smoothen the
estimate. Wider the main lobe of the smoothing spectrum, smoother it
becomes at the cost of frequency resolution.
- Modified periodogram
Applications
Estimating positions of underground objects
The
method being discussed here assumes that the mass distribution of the
underground objects of interest is already known and hence the problem
of estimating their location boils down to parametric localisation.Say
underground objects with center of masses (CM1, CM2...CMn) are located under the surface and at positions p1, p2...pn.
The gravity gradient(components of the gravity field) is measured using
a spinning wheel with accelerometers also called as the gravity
gradiometer.
The instrument is positioned in different orientations to measure the
respective component of the gravitational field. The values of
gravitational gradient tensors are calculated and analyzed. The analysis
includes observing the contribution of each object under consideration.
A maximum likelihood procedure is followed and Cramér–Rao bound (CRB) is computed to assess the quality of location estimate.
Array processing for seismographic applications
Various
sensors located on the surface of earth spaced equidistantly receive
the seismic waves. The seismic waves travel through the various layers
of earth and undergo changes in their properties - amplitude change,
time of arrival, phase shift. By analyzing these properties of the
signals, we can model the activities inside the earth.
Visualization of 3D data
The
method of volume rendering is an important tool to analyse the scalar
fields. Volume rendering simplifies representation of 3D space. Every
point in a 3D space is called a voxel.
Data inside the 3-d dataset is projected to the 2-d space(display
screen) using various techniques. Different data encoding schemes exist
for various applications such as MRI, Seismic applications.