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 Page 1


Fourier Analysis 
 
 Fourier analysis follows from Fourier’s theorem, which states that every function 
can be completely expressed as a sum of sines and cosines of various amplitudes and 
frequencies.  This is a pretty impressive assertion – no matter what the shape of a 
function, and how little it looks like a sine wave, it can be rewritten as a sum of sines and 
cosines. The Fourier series tells you the amplitude and frequency of the sines and 
cosines that you should add up to recreate your original function.  
 Before getting into the details of Fourier series, it may help to briefly review the 
terms associated with a sine wave with the figure below.  
  
  
 
 
 
 
 
 
 
 
 A cosine wave is just a sine wave shifted in phase by 90
o 
(f=90
o
).   
 
  
 
 
 
 
 
 
 
 
 
 
 Cosine functions are even functions while sine wave are odd functions.  An even 
function is symmetric with respect to the y-axis, meaning that its graph remains 
unchanged after reflection about the y-axis. On the other hand, an odd function is 
symmetric with respect to the origin, meaning that its graph remains unchanged after 
rotation of 180 degrees about the origin.  
 In the language of linear algebra, Fourier’s theorem states that sine waves and 
cosine wave create a complete basis set that spans all possible functions. Sines and 
cosines are in fact independent (and also orthogonal) -- there is no way to add up cosine 
waves to create a sine wave. 
 A nice example of Fourier’s Theorem is the creation of a square wave by 
summing the appropriate component sine waves.  Like a sine or a cosine wave, a square 
A = amplitude 
f = phase (offset) 
 
) 2 sin( ) ( ? p? + = t A t f
A 
1/?  
f  
? = frequency 
1/? = period = 1/frequency 
 
f 
t 
degrees
 
Page 2


Fourier Analysis 
 
 Fourier analysis follows from Fourier’s theorem, which states that every function 
can be completely expressed as a sum of sines and cosines of various amplitudes and 
frequencies.  This is a pretty impressive assertion – no matter what the shape of a 
function, and how little it looks like a sine wave, it can be rewritten as a sum of sines and 
cosines. The Fourier series tells you the amplitude and frequency of the sines and 
cosines that you should add up to recreate your original function.  
 Before getting into the details of Fourier series, it may help to briefly review the 
terms associated with a sine wave with the figure below.  
  
  
 
 
 
 
 
 
 
 
 A cosine wave is just a sine wave shifted in phase by 90
o 
(f=90
o
).   
 
  
 
 
 
 
 
 
 
 
 
 
 Cosine functions are even functions while sine wave are odd functions.  An even 
function is symmetric with respect to the y-axis, meaning that its graph remains 
unchanged after reflection about the y-axis. On the other hand, an odd function is 
symmetric with respect to the origin, meaning that its graph remains unchanged after 
rotation of 180 degrees about the origin.  
 In the language of linear algebra, Fourier’s theorem states that sine waves and 
cosine wave create a complete basis set that spans all possible functions. Sines and 
cosines are in fact independent (and also orthogonal) -- there is no way to add up cosine 
waves to create a sine wave. 
 A nice example of Fourier’s Theorem is the creation of a square wave by 
summing the appropriate component sine waves.  Like a sine or a cosine wave, a square 
A = amplitude 
f = phase (offset) 
 
) 2 sin( ) ( ? p? + = t A t f
A 
1/?  
f  
? = frequency 
1/? = period = 1/frequency 
 
f 
t 
degrees
 
wave is a periodic function. Unlike those other functions, a square wave has sharp 
corners at 90
o 
angles (see figure below). 
 
                        SQUARE WAVE 
     
 
  
 
 
 
 
 
 
 
 How could we create a square wave out of sines and cosines? In the figure below, 
the top panels represents a waveform and the bottom panel represents the sine waves that 
are added together to form the waveform. Each column contains one more component 
sine wave than the previous panel. As you can see, as you add up more sine waves, the 
resulting waveform starts to look more and more like a square wave. An infinite sum of 
the appropriately chosen sine waves would lead to a perfect square wave.  
 
summed 
waveform 
 
 
 
component 
sine waves  
 
 
 
 How did I know which sine wave should be summed to create the square wave?  
The Fourier series is used to figure out which sine and cosine waves should be summed, 
at what amplitude, to create a periodic waveform of interest. This is the Fourier series for 
a square wave: 
 
?
8
=
+
+
=
+ + + + =
0
1 2
) 1 2 sin(
...
7
7 sin
5
5 sin
3
3 sin
sin ) (
k
k
x k
x x x
x x square
p
p p p
p
 
 
 Notice that only sines, and not cosines, contribute to creating the square wave.  
That’s because the square wave that I’ve drawn is an odd function, just like a sine wave. 
If we shifted the square wave by 90
o
, we would have summed cosines to create it instead. 
 Once we know the Fourier series for a square wave, the square wave can easily be 
expressed in the frequency domain. This involves plotting the amplitude or the power 
spectrum.  The amplitude spectrum is just the amplitude of the sine/cosine at each 
Page 3


Fourier Analysis 
 
 Fourier analysis follows from Fourier’s theorem, which states that every function 
can be completely expressed as a sum of sines and cosines of various amplitudes and 
frequencies.  This is a pretty impressive assertion – no matter what the shape of a 
function, and how little it looks like a sine wave, it can be rewritten as a sum of sines and 
cosines. The Fourier series tells you the amplitude and frequency of the sines and 
cosines that you should add up to recreate your original function.  
 Before getting into the details of Fourier series, it may help to briefly review the 
terms associated with a sine wave with the figure below.  
  
  
 
 
 
 
 
 
 
 
 A cosine wave is just a sine wave shifted in phase by 90
o 
(f=90
o
).   
 
  
 
 
 
 
 
 
 
 
 
 
 Cosine functions are even functions while sine wave are odd functions.  An even 
function is symmetric with respect to the y-axis, meaning that its graph remains 
unchanged after reflection about the y-axis. On the other hand, an odd function is 
symmetric with respect to the origin, meaning that its graph remains unchanged after 
rotation of 180 degrees about the origin.  
 In the language of linear algebra, Fourier’s theorem states that sine waves and 
cosine wave create a complete basis set that spans all possible functions. Sines and 
cosines are in fact independent (and also orthogonal) -- there is no way to add up cosine 
waves to create a sine wave. 
 A nice example of Fourier’s Theorem is the creation of a square wave by 
summing the appropriate component sine waves.  Like a sine or a cosine wave, a square 
A = amplitude 
f = phase (offset) 
 
) 2 sin( ) ( ? p? + = t A t f
A 
1/?  
f  
? = frequency 
1/? = period = 1/frequency 
 
f 
t 
degrees
 
wave is a periodic function. Unlike those other functions, a square wave has sharp 
corners at 90
o 
angles (see figure below). 
 
                        SQUARE WAVE 
     
 
  
 
 
 
 
 
 
 
 How could we create a square wave out of sines and cosines? In the figure below, 
the top panels represents a waveform and the bottom panel represents the sine waves that 
are added together to form the waveform. Each column contains one more component 
sine wave than the previous panel. As you can see, as you add up more sine waves, the 
resulting waveform starts to look more and more like a square wave. An infinite sum of 
the appropriately chosen sine waves would lead to a perfect square wave.  
 
summed 
waveform 
 
 
 
component 
sine waves  
 
 
 
 How did I know which sine wave should be summed to create the square wave?  
The Fourier series is used to figure out which sine and cosine waves should be summed, 
at what amplitude, to create a periodic waveform of interest. This is the Fourier series for 
a square wave: 
 
?
8
=
+
+
=
+ + + + =
0
1 2
) 1 2 sin(
...
7
7 sin
5
5 sin
3
3 sin
sin ) (
k
k
x k
x x x
x x square
p
p p p
p
 
 
 Notice that only sines, and not cosines, contribute to creating the square wave.  
That’s because the square wave that I’ve drawn is an odd function, just like a sine wave. 
If we shifted the square wave by 90
o
, we would have summed cosines to create it instead. 
 Once we know the Fourier series for a square wave, the square wave can easily be 
expressed in the frequency domain. This involves plotting the amplitude or the power 
spectrum.  The amplitude spectrum is just the amplitude of the sine/cosine at each 
frequency, while the power spectrum is the square of the amplitude spectrum. Based on 
the equation for the square wave above, the amplitude is 1 for frequency of 1 (?=1), 1/3 
for frequency of 3 (?=3), and so on. The amplitude/power is zero at even frequencies for 
this square wave example. 
 
 
 
 The figure below is another simple example of plotting the same signal in both the 
time domain and frequency domain. The sine waves represented by the top two rows are 
summed to create the waveform in the bottom row.  The right column shows how much 
power is in each frequency (“power spectrum”). Notice that the power is zero at most 
frequencies.  This is because the waveforms in this example are composed of either 1 or 2 
sine waves, so most frequencies are not contributing any power to the signal. 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 The extension of a Fourier series for a non-periodic function is known as the 
Fourier transform. When calculating the Fourier transform, rather than decomposing a 
signal in terms of sines and cosines, people often use complex exponentials. They can be 
a little easier to interpret, although they are mathematically equivalent.  A complex 
exponential is defined as Ae
if
, where i
2
=-1 (i is the “imaginary” number), A is the 
amplitude, and f is the phase. A waveform can be decomposed in terms of complex 
exponentials rather than sines and cosines because of Euler’s Theorem, which highlights 
the surprisingly close relationship between a complex exponential and sines/cosines. 
 
 EULER’S THEOREM: 
 
f f
f
sin cos i e
i
+ =
Page 4


Fourier Analysis 
 
 Fourier analysis follows from Fourier’s theorem, which states that every function 
can be completely expressed as a sum of sines and cosines of various amplitudes and 
frequencies.  This is a pretty impressive assertion – no matter what the shape of a 
function, and how little it looks like a sine wave, it can be rewritten as a sum of sines and 
cosines. The Fourier series tells you the amplitude and frequency of the sines and 
cosines that you should add up to recreate your original function.  
 Before getting into the details of Fourier series, it may help to briefly review the 
terms associated with a sine wave with the figure below.  
  
  
 
 
 
 
 
 
 
 
 A cosine wave is just a sine wave shifted in phase by 90
o 
(f=90
o
).   
 
  
 
 
 
 
 
 
 
 
 
 
 Cosine functions are even functions while sine wave are odd functions.  An even 
function is symmetric with respect to the y-axis, meaning that its graph remains 
unchanged after reflection about the y-axis. On the other hand, an odd function is 
symmetric with respect to the origin, meaning that its graph remains unchanged after 
rotation of 180 degrees about the origin.  
 In the language of linear algebra, Fourier’s theorem states that sine waves and 
cosine wave create a complete basis set that spans all possible functions. Sines and 
cosines are in fact independent (and also orthogonal) -- there is no way to add up cosine 
waves to create a sine wave. 
 A nice example of Fourier’s Theorem is the creation of a square wave by 
summing the appropriate component sine waves.  Like a sine or a cosine wave, a square 
A = amplitude 
f = phase (offset) 
 
) 2 sin( ) ( ? p? + = t A t f
A 
1/?  
f  
? = frequency 
1/? = period = 1/frequency 
 
f 
t 
degrees
 
wave is a periodic function. Unlike those other functions, a square wave has sharp 
corners at 90
o 
angles (see figure below). 
 
                        SQUARE WAVE 
     
 
  
 
 
 
 
 
 
 
 How could we create a square wave out of sines and cosines? In the figure below, 
the top panels represents a waveform and the bottom panel represents the sine waves that 
are added together to form the waveform. Each column contains one more component 
sine wave than the previous panel. As you can see, as you add up more sine waves, the 
resulting waveform starts to look more and more like a square wave. An infinite sum of 
the appropriately chosen sine waves would lead to a perfect square wave.  
 
summed 
waveform 
 
 
 
component 
sine waves  
 
 
 
 How did I know which sine wave should be summed to create the square wave?  
The Fourier series is used to figure out which sine and cosine waves should be summed, 
at what amplitude, to create a periodic waveform of interest. This is the Fourier series for 
a square wave: 
 
?
8
=
+
+
=
+ + + + =
0
1 2
) 1 2 sin(
...
7
7 sin
5
5 sin
3
3 sin
sin ) (
k
k
x k
x x x
x x square
p
p p p
p
 
 
 Notice that only sines, and not cosines, contribute to creating the square wave.  
That’s because the square wave that I’ve drawn is an odd function, just like a sine wave. 
If we shifted the square wave by 90
o
, we would have summed cosines to create it instead. 
 Once we know the Fourier series for a square wave, the square wave can easily be 
expressed in the frequency domain. This involves plotting the amplitude or the power 
spectrum.  The amplitude spectrum is just the amplitude of the sine/cosine at each 
frequency, while the power spectrum is the square of the amplitude spectrum. Based on 
the equation for the square wave above, the amplitude is 1 for frequency of 1 (?=1), 1/3 
for frequency of 3 (?=3), and so on. The amplitude/power is zero at even frequencies for 
this square wave example. 
 
 
 
 The figure below is another simple example of plotting the same signal in both the 
time domain and frequency domain. The sine waves represented by the top two rows are 
summed to create the waveform in the bottom row.  The right column shows how much 
power is in each frequency (“power spectrum”). Notice that the power is zero at most 
frequencies.  This is because the waveforms in this example are composed of either 1 or 2 
sine waves, so most frequencies are not contributing any power to the signal. 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 The extension of a Fourier series for a non-periodic function is known as the 
Fourier transform. When calculating the Fourier transform, rather than decomposing a 
signal in terms of sines and cosines, people often use complex exponentials. They can be 
a little easier to interpret, although they are mathematically equivalent.  A complex 
exponential is defined as Ae
if
, where i
2
=-1 (i is the “imaginary” number), A is the 
amplitude, and f is the phase. A waveform can be decomposed in terms of complex 
exponentials rather than sines and cosines because of Euler’s Theorem, which highlights 
the surprisingly close relationship between a complex exponential and sines/cosines. 
 
 EULER’S THEOREM: 
 
f f
f
sin cos i e
i
+ =
 
                                 
 The Fourier transform allows you to write any function (f(t)) as the integral (sum) 
across frequencies of complex exponentials of different amplitudes and phases (F(?)). 
f(t) is often called the “time domain” representation while F(?) is called the “frequency 
domain representation.”  The key thing to understand about Fourier transforms is that 
these two representations are different ways of expressing the same information.  The 
formula for a Fourier transform is below: 
  
) (
) ( ) (
) (
2
1
) (
? f
?
? ?
? ?
p
i
t i
e A F
d e F t f
=
=
?
8
8 -
 
 
 When you use a computer to take a Fourier transform of a function f(t), the 
computer will return the complex number F(?), which you should think of as a vector in 
the complex plane, as plotted below.  The complex plane is a 2-D plane with real 
numbers along the x-axis and imaginary numbers along the y-axis.  
 
a(?)
b(?)
F(?)=
a(?)+ib(?)
Real
Imaginary
 
 The easiest way to interpret F(?) is by calculating the amplitude (A) and the 
phase (f) at each frequency.  The amplitude (or “magnitude”) tells you how much signal 
there is at a given frequency, whereas the phase tells you the delay of the signal at a given 
frequency.  Based on the geometric interpretation of a complex exponential, you can 
calculate the amplitude and phase of the complex exponential using some high school 
trigonometry. For a complex exponential ) ( ) ( ) ( ? ? ? ib a F + = , 
 1)  The amplitude, which is the length of the vector, can be calculated using the 
Pythagorean theorem: 
 
2 2
) ( ) ( ) ( ? ? ? b a F A + = = 
 2)  The phase ( ) (? F ? ), which is the angle of the vector from the x-axis, can be 
calculated based on the arctangent – the angle whose tangent is 
) (
) (
?
?
a
b
. 
Page 5


Fourier Analysis 
 
 Fourier analysis follows from Fourier’s theorem, which states that every function 
can be completely expressed as a sum of sines and cosines of various amplitudes and 
frequencies.  This is a pretty impressive assertion – no matter what the shape of a 
function, and how little it looks like a sine wave, it can be rewritten as a sum of sines and 
cosines. The Fourier series tells you the amplitude and frequency of the sines and 
cosines that you should add up to recreate your original function.  
 Before getting into the details of Fourier series, it may help to briefly review the 
terms associated with a sine wave with the figure below.  
  
  
 
 
 
 
 
 
 
 
 A cosine wave is just a sine wave shifted in phase by 90
o 
(f=90
o
).   
 
  
 
 
 
 
 
 
 
 
 
 
 Cosine functions are even functions while sine wave are odd functions.  An even 
function is symmetric with respect to the y-axis, meaning that its graph remains 
unchanged after reflection about the y-axis. On the other hand, an odd function is 
symmetric with respect to the origin, meaning that its graph remains unchanged after 
rotation of 180 degrees about the origin.  
 In the language of linear algebra, Fourier’s theorem states that sine waves and 
cosine wave create a complete basis set that spans all possible functions. Sines and 
cosines are in fact independent (and also orthogonal) -- there is no way to add up cosine 
waves to create a sine wave. 
 A nice example of Fourier’s Theorem is the creation of a square wave by 
summing the appropriate component sine waves.  Like a sine or a cosine wave, a square 
A = amplitude 
f = phase (offset) 
 
) 2 sin( ) ( ? p? + = t A t f
A 
1/?  
f  
? = frequency 
1/? = period = 1/frequency 
 
f 
t 
degrees
 
wave is a periodic function. Unlike those other functions, a square wave has sharp 
corners at 90
o 
angles (see figure below). 
 
                        SQUARE WAVE 
     
 
  
 
 
 
 
 
 
 
 How could we create a square wave out of sines and cosines? In the figure below, 
the top panels represents a waveform and the bottom panel represents the sine waves that 
are added together to form the waveform. Each column contains one more component 
sine wave than the previous panel. As you can see, as you add up more sine waves, the 
resulting waveform starts to look more and more like a square wave. An infinite sum of 
the appropriately chosen sine waves would lead to a perfect square wave.  
 
summed 
waveform 
 
 
 
component 
sine waves  
 
 
 
 How did I know which sine wave should be summed to create the square wave?  
The Fourier series is used to figure out which sine and cosine waves should be summed, 
at what amplitude, to create a periodic waveform of interest. This is the Fourier series for 
a square wave: 
 
?
8
=
+
+
=
+ + + + =
0
1 2
) 1 2 sin(
...
7
7 sin
5
5 sin
3
3 sin
sin ) (
k
k
x k
x x x
x x square
p
p p p
p
 
 
 Notice that only sines, and not cosines, contribute to creating the square wave.  
That’s because the square wave that I’ve drawn is an odd function, just like a sine wave. 
If we shifted the square wave by 90
o
, we would have summed cosines to create it instead. 
 Once we know the Fourier series for a square wave, the square wave can easily be 
expressed in the frequency domain. This involves plotting the amplitude or the power 
spectrum.  The amplitude spectrum is just the amplitude of the sine/cosine at each 
frequency, while the power spectrum is the square of the amplitude spectrum. Based on 
the equation for the square wave above, the amplitude is 1 for frequency of 1 (?=1), 1/3 
for frequency of 3 (?=3), and so on. The amplitude/power is zero at even frequencies for 
this square wave example. 
 
 
 
 The figure below is another simple example of plotting the same signal in both the 
time domain and frequency domain. The sine waves represented by the top two rows are 
summed to create the waveform in the bottom row.  The right column shows how much 
power is in each frequency (“power spectrum”). Notice that the power is zero at most 
frequencies.  This is because the waveforms in this example are composed of either 1 or 2 
sine waves, so most frequencies are not contributing any power to the signal. 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 The extension of a Fourier series for a non-periodic function is known as the 
Fourier transform. When calculating the Fourier transform, rather than decomposing a 
signal in terms of sines and cosines, people often use complex exponentials. They can be 
a little easier to interpret, although they are mathematically equivalent.  A complex 
exponential is defined as Ae
if
, where i
2
=-1 (i is the “imaginary” number), A is the 
amplitude, and f is the phase. A waveform can be decomposed in terms of complex 
exponentials rather than sines and cosines because of Euler’s Theorem, which highlights 
the surprisingly close relationship between a complex exponential and sines/cosines. 
 
 EULER’S THEOREM: 
 
f f
f
sin cos i e
i
+ =
 
                                 
 The Fourier transform allows you to write any function (f(t)) as the integral (sum) 
across frequencies of complex exponentials of different amplitudes and phases (F(?)). 
f(t) is often called the “time domain” representation while F(?) is called the “frequency 
domain representation.”  The key thing to understand about Fourier transforms is that 
these two representations are different ways of expressing the same information.  The 
formula for a Fourier transform is below: 
  
) (
) ( ) (
) (
2
1
) (
? f
?
? ?
? ?
p
i
t i
e A F
d e F t f
=
=
?
8
8 -
 
 
 When you use a computer to take a Fourier transform of a function f(t), the 
computer will return the complex number F(?), which you should think of as a vector in 
the complex plane, as plotted below.  The complex plane is a 2-D plane with real 
numbers along the x-axis and imaginary numbers along the y-axis.  
 
a(?)
b(?)
F(?)=
a(?)+ib(?)
Real
Imaginary
 
 The easiest way to interpret F(?) is by calculating the amplitude (A) and the 
phase (f) at each frequency.  The amplitude (or “magnitude”) tells you how much signal 
there is at a given frequency, whereas the phase tells you the delay of the signal at a given 
frequency.  Based on the geometric interpretation of a complex exponential, you can 
calculate the amplitude and phase of the complex exponential using some high school 
trigonometry. For a complex exponential ) ( ) ( ) ( ? ? ? ib a F + = , 
 1)  The amplitude, which is the length of the vector, can be calculated using the 
Pythagorean theorem: 
 
2 2
) ( ) ( ) ( ? ? ? b a F A + = = 
 2)  The phase ( ) (? F ? ), which is the angle of the vector from the x-axis, can be 
calculated based on the arctangent – the angle whose tangent is 
) (
) (
?
?
a
b
. 
 f=
) (
) (
tan ) (
1
?
?
?
a
b
F
-
= ?  
 
 Once you know the complex exponential F(?), you can transform back into the 
time domain by calculating the inverse Fourier transform, and recover the original 
function f(t). 
 Below, you can see the Fourier Transform for a sine wave and a phase-shifted 
sine wave. Notice that the amplitude is identical for these two conditions, but the phase is 
different, reflecting the fact that the two signals are simply phase shifted (i.e. spatially 
offset) versions of each other. 
 
 
  
 So, why would you want to take a Fourier transform?  Fourier analysis can be 
very useful for two main reasons. 
1. Many calculations are simpler in the frequency domain than the time domain.   
• For example: filtering (convolving) becomes trivial in the frequency 
domain. We’ll talk about this next chapter. 
2. Many neural processes can be described more effectively in the frequency 
domain. 
• For example: The cochlea transforms a time domain signal (the 
sound’s waveform) into a frequency domain signal. The strength of the 
response in the auditory nerve fiber tuned to a particular frequency 
reflects the amplitude of the sound’s waveform at that frequency.  In 
other words, the auditory system takes a Fourier transform of the 
incoming signal, decomposing the sound into amplitudes as a function 
of frequency. 
Sine wave Phase shifted sine wave 
 
Frequency Frequency 
Time Time 
 
Phase 
Amplitude 
Read More

FAQs on Fourier Analysis

1. What is Fourier analysis?
Ans. Fourier analysis is a mathematical technique used to decompose a complex waveform into its individual sinusoidal components. It allows us to study the frequency content and amplitude of a signal, which can be applied to various fields such as signal processing, image analysis, and audio compression.
2. How does Fourier analysis work?
Ans. Fourier analysis works by representing a time-domain signal as a sum of sinusoidal functions of different frequencies. The process involves transforming the signal from the time domain to the frequency domain using a mathematical operation called the Fourier transform. This transformation provides information about the amplitudes and phases of the constituent sinusoidal components present in the signal.
3. What is the importance of Fourier analysis in signal processing?
Ans. Fourier analysis plays a crucial role in signal processing as it enables us to analyze and manipulate signals in the frequency domain. By converting signals from the time domain to the frequency domain, we can identify specific frequencies present in a signal, filter out unwanted noise, compress data efficiently, and extract useful information for various applications like audio and image processing.
4. What are the applications of Fourier analysis?
Ans. Fourier analysis finds applications in various fields such as image and audio processing, telecommunications, physics, engineering, and finance. It is used for image compression, audio equalization, noise removal, pattern recognition, speech recognition, and analyzing the behavior of physical systems in the frequency domain.
5. What are the limitations of Fourier analysis?
Ans. While Fourier analysis is a powerful tool, it has certain limitations. It assumes that the signal being analyzed is periodic and stationary, which may not always be the case. Additionally, Fourier analysis cannot accurately represent signals with sharp transitions or sudden changes in amplitude. In such cases, alternative techniques like wavelet analysis or time-frequency analysis may be more suitable.
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