SlideShare a Scribd company logo
Frequency Domain
Representation of Signals and
Systems
Prof. Satheesh Monikandan.B
INDIAN NAVAL ACADEMY (INDIAN NAVY)
EZHIMALA
sathy24@gmail.com
101 INAC-AT19
Syllabus Contents
• Introduction to Signals and Systems
• Time-domain Analysis of LTI Systems
• Frequency-domain Representations of Signals and
Systems
• Sampling
• Hilbert Transform
• Laplace Transform
Frequency Domain Representation of
Signals

Refers to the analysis of mathematical functions or
signals with respect to frequency, rather than time.

"Spectrum" of frequency components is the
frequency-domain representation of the signal.

A signal can be converted between the time and
frequency domains with a pair of mathematical
operators called a transform.

Fourier Transform (FT) converts the time function
into a sum of sine waves of different frequencies,
each of which represents a frequency component.

Inverse Fourier transform converts the frequency
(spectral) domain function back to a time function.
Frequency Spectrum

Distribution of the amplitudes and phases of each
frequency component against frequency.

Frequency domain analysis is mostly used to signals
or functions that are periodic over time.
Periodic Signals and Fourier Series

A signal x(t) is said to be periodic if, x(t) = x(t+T) for
all t and some T.

A CT signal x(t) is said to be periodic if there is a
positive non-zero value of T.
Fourier Analysis

The basic building block of Fourier analysis is the
complex exponential, namely,
Aej(2πft+ )ϕ
or Aexp[j(2πft+ )]ϕ
where, A : Amplitude (in Volts or Amperes)
f : Cyclical frequency (in Hz)
: Phase angle at t = 0 (either in radiansϕ
or degrees)

Both A and f are real and non-negative.

Complex exponential can also written as, Aej(ωt+ )ϕ

From Euler’s relation, ejωt
=cosωt+jsinωt
Fourier Analysis

Fundamental Frequency - the lowest frequency which is
produced by the oscillation or the first harmonic, i.e., the
frequency that the time domain repeats itself, is called the
fundamental frequency.

Fourier series decomposes x(t) into DC, fundamental and
its various higher harmonics.
Fourier Series Analysis

Any periodic signal can be classified into harmonically related
sinusoids or complex exponential, provided it satisfies the
Dirichlet's Conditions.

Fourier series represents a periodic signal as an infinite sum of sine
wave components.

Fourier series is for real-valued functions, and using the sine and
cosine functions as the basis set for the decomposition.

Fourier series can be used only for periodic functions, or for
functions on a bounded (compact) interval.

Fourier series make use of the orthogonality relationships of the
sine and cosine functions.

It allows us to extract the frequency components of a signal.
Fourier Coefficients
3.Frequency Domain Representation of Signals and Systems
Fourier Coefficients

Fourier coefficients are real but could be bipolar (+ve/–ve).

Representation of a periodic function in terms of Fourier
series involves, in general, an infinite summation.
Convergence of Fourier Series

Dirichlet conditions that guarantee convergence.
1. The given function is absolutely integrable over any
period (ie, finite).
2. The function has only a finite number of maxima and
minima over any period T.
3.There are only finite number of finite discontinuities over
any period.

Periodic signals do not satisfy one or more of the above
conditions.

Dirichlet conditions are sufficient but not necessary.
Therefore, some functions may voilate some of the
Dirichet conditions.
Convergence of Fourier Series

Convergence refers to two or more things coming
together, joining together or evolving into one.
Applications of Fourier Series

Many waveforms consist of energy at a fundamental
frequency and also at harmonic frequencies (multiples of
the fundamental).

The relative proportions of energy in the fundamental and
the harmonics determines the shape of the wave.

Set of complex exponentials form a basis for the space of
T-periodic continuous time functions.

Complex exponentials are eigenfunctions of LTI systems.

If the input to an LTI system is represented as a linear
combination of complex exponentials, then the output can
also be represented as a linear combination of the same
complex exponential signals.
Parseval’s (Power) Theorem

Implies that the total average power in x(t) is the
superposition of the average powers of the complex
exponentials present in it.

If x(t) is even, then the coeffieients are purely real and
even.

If x(t) is odd, then the coefficients are purely imaginary
and odd.
Aperiodic Signals and Fourier Transform

Aperiodic (nonperiodic) signals can be of finite or infinite
duration.

An aperiodic signal with 0 < E < ∞ is said to be an energy
signal.

Aperiodic signals also can be represented in the
frequency domain.

x(t) can be expressed as a sum over a discrete set of
frequencies (IFT).

If we sum a large number of complex exponentials, the
resulting signal should be a very good approximation to
x(t).
Fourier Transform

Forward Fourier transform (FT) relation, X(f)=F[x(t)]

Inverse FT, x(t)=F-1
[X(f)]

Therefore, x(t) ← → X(f)⎯

X(f) is, in general, a complex quantity.
 Therefore, X(f) = XR
(f) + jXI
(f) = |X(f)|ejθ(f)

Information in X(f) is usually displayed by means of two
plots:
(a) X(f) vs. f , known as magnitude spectrum
(b) θ(f) vs. f , known as the phase spectrum.
Fourier Transform

FT is in general complex.

Its magnitude is called the magnitude spectrum and its
phase is called the phase spectrum.

The square of the magnitude spectrum is the energy
spectrum and shows how the energy of the signal is
distributed over the frequency domain; the total energy of
the signal is.
Fourier Transform

Phase spectrum shows the phase shifts between signals
with different frequencies.

Phase reflects the delay (relationship) for each of the
frequency components.

For a single frequency the phase helps to determine
causality or tracking the path of the signal.

In the harmonic analysis, while the amplitude tells you
how strong is a harmonic in a signal, the phase tells where
this harmonic lies in time.

Eg: Sirene of an rescue car, Magnetic tape recording,
Auditory system

The phase determines where the signal energy will be
localized in time.
Fourier Transform
Properties of Fourier Transform

Linearity

Time Scaling

Time shift

Frequency Shift / Modulation theorem

Duality

Conjugate functions

Multiplication in the time domain

Multiplication of Fourier transforms / Convolution theorem

Differentiation in the time domain

Differentiation in the frequency domain

Integration in time domain

Rayleigh’s energy theorem
Properties of Fourier Transform

Linearity
 Let x1
(t) ← → X⎯ 1
(f) and x2
(t) ← → X⎯ 2
(f)
 Then, for all constants a1
and a2
, we have
a1
x1
(t) + a2
x2
(t) ← → a⎯ 1
X1
(f) + a2
X2
(f)

Time Scaling
Properties of Fourier Transform

Time shift
 If x(t) ← → X(f) then, x(t−t⎯ 0
) ← → e⎯ -2πft
0X(f)
 If t0
is positive, then x(t−t0
) is a delayed version of x(t).
 If t0
is negative, then x(t−t0
) is an advanced version of x(t) .

Time shifting will result in the multiplication of X(f) by a
linear phase factor.
 x(t) and x(t−t0
) have the same magnitude spectrum.
Properties of Fourier Transform

Frequency Shift / Modulation theorem
Properties of Fourier Transform

Multiplication in the time domain
Properties of Fourier Transform

Multiplication of Fourier transforms / Convolution theorem

Convolution is a mathematical way of combining two
signals to form a third signal.

The spectrum of the convolution two signals equals the
multiplication of the spectra of both signals.

Under suitable conditions, the FT of a convolution of two
signals is the pointwise product of their Fts.

Convolving in one domain corresponds to elementwise
multiplication in the other domain.
Properties of Fourier Transform

Multiplication of Fourier transforms / Convolution theorem
Properties of Fourier Transform

Differentiation in the time / frequency domains
Properties of Fourier Transform

Rayleigh’s energy theorem
Parseval’s Relation

The sum (or integral) of the square of a function is equal to
the sum (or integral) of the square of its transform.

The integral of the squared magnitude of a function is
known as the energy of the function.

The time and frequency domains are equivalent
representations of the same signal, they must have the
same energy.
Time-Bandwidth Product

Effective duration and effective bandwidth are only useful
for very specific signals, namely for (real-valued) low-pass
signals that are even and centered around t=0.

This implies that their FT is also real-valued, even and
centered around ω=0, and, consequently, the same
definition of width can be used.

Two different shaped waveforms to have the same time-
bandwidth product due to the duality property of FT.

More Related Content

PPTX
Butterworth filter
PPTX
Digital communication viva questions
PPTX
In direct method of fm generation armstrong method
PPTX
Pulse shaping
PPTX
Wireless Channels Capacity
PPTX
Comparison of Amplitude Modulation Techniques.pptx
PPT
OPERATIONS ON SIGNALS
PDF
Chapter2 - Linear Time-Invariant System
Butterworth filter
Digital communication viva questions
In direct method of fm generation armstrong method
Pulse shaping
Wireless Channels Capacity
Comparison of Amplitude Modulation Techniques.pptx
OPERATIONS ON SIGNALS
Chapter2 - Linear Time-Invariant System

What's hot (20)

PDF
Ssb generation method
PPTX
Fm transmitter and receivers
PDF
Sampling Theorem
PPTX
Z Transform
PPTX
Digital communication system
PPTX
Adaptive equalization
PPTX
Multirate DSP
PPTX
Amplitude modulation
PPTX
Adaptive delta modulation
PPTX
Super heterodyne receiver
DOCX
Signals & systems
PPTX
Information Theory and coding - Lecture 2
PPTX
Types of Sampling in Analog Communication
PDF
Sampling and Reconstruction of Signal using Aliasing
PPT
Signal classification of signal
PPTX
Pulse Modulation ppt
PDF
Radar Systems- Unit-III : MTI and Pulse Doppler Radars
PPTX
Generation of fm
PDF
Comparison Frequency modulation and Phase modulation
PPTX
Power delay profile,delay spread and doppler spread
Ssb generation method
Fm transmitter and receivers
Sampling Theorem
Z Transform
Digital communication system
Adaptive equalization
Multirate DSP
Amplitude modulation
Adaptive delta modulation
Super heterodyne receiver
Signals & systems
Information Theory and coding - Lecture 2
Types of Sampling in Analog Communication
Sampling and Reconstruction of Signal using Aliasing
Signal classification of signal
Pulse Modulation ppt
Radar Systems- Unit-III : MTI and Pulse Doppler Radars
Generation of fm
Comparison Frequency modulation and Phase modulation
Power delay profile,delay spread and doppler spread
Ad

Similar to 3.Frequency Domain Representation of Signals and Systems (20)

PDF
Lecture 9
PDF
Fourier Transform ppt and material for mathematics subject
PDF
Chapter 3
PPTX
Signals and Systems-Fourier Series and Transform
PDF
Lect5-FourierSeries.pdf
PPTX
Fourier and Laplace Transform FOR SIGNAL AND SYSTEM
PPT
communication system Chapter 3
PPTX
Fourier Transform
PDF
fouriertransform.pdf
PPTX
EC8352- Signals and Systems - Unit 2 - Fourier transform
PPTX
Fourier Analysis Fourier series representation.pptx
PPT
Nt lecture skm-iiit-bh
PPT
Optics Fourier Transform Ii
PDF
Frequency Domain Filtering of Digital Images
PPT
fnCh4.ppt ENGINEERING MATHEMATICS
PPT
Fourier analysis of signals and systems
PDF
Ch1 representation of signal pg 130
PPTX
Fourier transform is very Transform.pptx
DOCX
Running Head Fourier Transform Time-Frequency Analysis. .docx
PPT
Ch4 (1)_fourier series, fourier transform
Lecture 9
Fourier Transform ppt and material for mathematics subject
Chapter 3
Signals and Systems-Fourier Series and Transform
Lect5-FourierSeries.pdf
Fourier and Laplace Transform FOR SIGNAL AND SYSTEM
communication system Chapter 3
Fourier Transform
fouriertransform.pdf
EC8352- Signals and Systems - Unit 2 - Fourier transform
Fourier Analysis Fourier series representation.pptx
Nt lecture skm-iiit-bh
Optics Fourier Transform Ii
Frequency Domain Filtering of Digital Images
fnCh4.ppt ENGINEERING MATHEMATICS
Fourier analysis of signals and systems
Ch1 representation of signal pg 130
Fourier transform is very Transform.pptx
Running Head Fourier Transform Time-Frequency Analysis. .docx
Ch4 (1)_fourier series, fourier transform
Ad

More from INDIAN NAVY (20)

PDF
15SEP2022-MOTIVATION-SMART WORK IN ENGINEERING
PDF
18DEC23-IMPACT OF I&T IN CURRENT ERA.pdf
PDF
07JUN23-IMPORTANCE AND INFLUENCE OF INTERNET IN ENGINEERING EDUCATION.pdf
PDF
20JAN2023-APPLICATIONS AND FUTURE REQUIREMENTS OF SIGNALS AND SYSTEMS.pdf
PDF
04APR2025-RAMCO-CONFERENCE-RESOURCE ALLOCATION IN 5G AND BEYOND NETWORKS.pdf
PDF
RECENT TRENDS IN COMMUNICATION AND APPLICATIONS
PDF
EMI/EMC in Mobile Communication
PDF
RECENT TRENDS AND OPPORTUNITIES IN TELECOMMUNICATION
PDF
Scheduling Algorithms in LTE and Future Cellular Networks
PDF
1.1.Operations on signals
PDF
8.ic555 timer volt regulator
PDF
7.instrumentation amplifier
PDF
3.ic opamp
PDF
2.ic fabrication
PDF
4.Sampling and Hilbert Transform
PDF
2.time domain analysis of lti systems
PDF
1.introduction to signals
PDF
Lte Evolution and Basics
PDF
7.Active Filters using Opamp
PDF
4.Basics of systems
15SEP2022-MOTIVATION-SMART WORK IN ENGINEERING
18DEC23-IMPACT OF I&T IN CURRENT ERA.pdf
07JUN23-IMPORTANCE AND INFLUENCE OF INTERNET IN ENGINEERING EDUCATION.pdf
20JAN2023-APPLICATIONS AND FUTURE REQUIREMENTS OF SIGNALS AND SYSTEMS.pdf
04APR2025-RAMCO-CONFERENCE-RESOURCE ALLOCATION IN 5G AND BEYOND NETWORKS.pdf
RECENT TRENDS IN COMMUNICATION AND APPLICATIONS
EMI/EMC in Mobile Communication
RECENT TRENDS AND OPPORTUNITIES IN TELECOMMUNICATION
Scheduling Algorithms in LTE and Future Cellular Networks
1.1.Operations on signals
8.ic555 timer volt regulator
7.instrumentation amplifier
3.ic opamp
2.ic fabrication
4.Sampling and Hilbert Transform
2.time domain analysis of lti systems
1.introduction to signals
Lte Evolution and Basics
7.Active Filters using Opamp
4.Basics of systems

Recently uploaded (20)

PDF
TR - Agricultural Crops Production NC III.pdf
PDF
Origin of periodic table-Mendeleev’s Periodic-Modern Periodic table
PPTX
The Healthy Child – Unit II | Child Health Nursing I | B.Sc Nursing 5th Semester
PPTX
Introduction_to_Human_Anatomy_and_Physiology_for_B.Pharm.pptx
PDF
ANTIBIOTICS.pptx.pdf………………… xxxxxxxxxxxxx
PDF
01-Introduction-to-Information-Management.pdf
PDF
Abdominal Access Techniques with Prof. Dr. R K Mishra
PDF
The Lost Whites of Pakistan by Jahanzaib Mughal.pdf
PDF
Business Ethics Teaching Materials for college
PPTX
BOWEL ELIMINATION FACTORS AFFECTING AND TYPES
PDF
Saundersa Comprehensive Review for the NCLEX-RN Examination.pdf
PDF
RMMM.pdf make it easy to upload and study
PPTX
Microbial diseases, their pathogenesis and prophylaxis
PDF
Chapter 2 Heredity, Prenatal Development, and Birth.pdf
PDF
O7-L3 Supply Chain Operations - ICLT Program
PPTX
Renaissance Architecture: A Journey from Faith to Humanism
PDF
Anesthesia in Laparoscopic Surgery in India
PPTX
IMMUNITY IMMUNITY refers to protection against infection, and the immune syst...
PDF
Mark Klimek Lecture Notes_240423 revision books _173037.pdf
PDF
Insiders guide to clinical Medicine.pdf
TR - Agricultural Crops Production NC III.pdf
Origin of periodic table-Mendeleev’s Periodic-Modern Periodic table
The Healthy Child – Unit II | Child Health Nursing I | B.Sc Nursing 5th Semester
Introduction_to_Human_Anatomy_and_Physiology_for_B.Pharm.pptx
ANTIBIOTICS.pptx.pdf………………… xxxxxxxxxxxxx
01-Introduction-to-Information-Management.pdf
Abdominal Access Techniques with Prof. Dr. R K Mishra
The Lost Whites of Pakistan by Jahanzaib Mughal.pdf
Business Ethics Teaching Materials for college
BOWEL ELIMINATION FACTORS AFFECTING AND TYPES
Saundersa Comprehensive Review for the NCLEX-RN Examination.pdf
RMMM.pdf make it easy to upload and study
Microbial diseases, their pathogenesis and prophylaxis
Chapter 2 Heredity, Prenatal Development, and Birth.pdf
O7-L3 Supply Chain Operations - ICLT Program
Renaissance Architecture: A Journey from Faith to Humanism
Anesthesia in Laparoscopic Surgery in India
IMMUNITY IMMUNITY refers to protection against infection, and the immune syst...
Mark Klimek Lecture Notes_240423 revision books _173037.pdf
Insiders guide to clinical Medicine.pdf

3.Frequency Domain Representation of Signals and Systems

  • 1. Frequency Domain Representation of Signals and Systems Prof. Satheesh Monikandan.B INDIAN NAVAL ACADEMY (INDIAN NAVY) EZHIMALA sathy24@gmail.com 101 INAC-AT19
  • 2. Syllabus Contents • Introduction to Signals and Systems • Time-domain Analysis of LTI Systems • Frequency-domain Representations of Signals and Systems • Sampling • Hilbert Transform • Laplace Transform
  • 3. Frequency Domain Representation of Signals  Refers to the analysis of mathematical functions or signals with respect to frequency, rather than time.  "Spectrum" of frequency components is the frequency-domain representation of the signal.  A signal can be converted between the time and frequency domains with a pair of mathematical operators called a transform.  Fourier Transform (FT) converts the time function into a sum of sine waves of different frequencies, each of which represents a frequency component.  Inverse Fourier transform converts the frequency (spectral) domain function back to a time function.
  • 4. Frequency Spectrum  Distribution of the amplitudes and phases of each frequency component against frequency.  Frequency domain analysis is mostly used to signals or functions that are periodic over time.
  • 5. Periodic Signals and Fourier Series  A signal x(t) is said to be periodic if, x(t) = x(t+T) for all t and some T.  A CT signal x(t) is said to be periodic if there is a positive non-zero value of T.
  • 6. Fourier Analysis  The basic building block of Fourier analysis is the complex exponential, namely, Aej(2πft+ )ϕ or Aexp[j(2πft+ )]ϕ where, A : Amplitude (in Volts or Amperes) f : Cyclical frequency (in Hz) : Phase angle at t = 0 (either in radiansϕ or degrees)  Both A and f are real and non-negative.  Complex exponential can also written as, Aej(ωt+ )ϕ  From Euler’s relation, ejωt =cosωt+jsinωt
  • 7. Fourier Analysis  Fundamental Frequency - the lowest frequency which is produced by the oscillation or the first harmonic, i.e., the frequency that the time domain repeats itself, is called the fundamental frequency.  Fourier series decomposes x(t) into DC, fundamental and its various higher harmonics.
  • 8. Fourier Series Analysis  Any periodic signal can be classified into harmonically related sinusoids or complex exponential, provided it satisfies the Dirichlet's Conditions.  Fourier series represents a periodic signal as an infinite sum of sine wave components.  Fourier series is for real-valued functions, and using the sine and cosine functions as the basis set for the decomposition.  Fourier series can be used only for periodic functions, or for functions on a bounded (compact) interval.  Fourier series make use of the orthogonality relationships of the sine and cosine functions.  It allows us to extract the frequency components of a signal.
  • 11. Fourier Coefficients  Fourier coefficients are real but could be bipolar (+ve/–ve).  Representation of a periodic function in terms of Fourier series involves, in general, an infinite summation.
  • 12. Convergence of Fourier Series  Dirichlet conditions that guarantee convergence. 1. The given function is absolutely integrable over any period (ie, finite). 2. The function has only a finite number of maxima and minima over any period T. 3.There are only finite number of finite discontinuities over any period.  Periodic signals do not satisfy one or more of the above conditions.  Dirichlet conditions are sufficient but not necessary. Therefore, some functions may voilate some of the Dirichet conditions.
  • 13. Convergence of Fourier Series  Convergence refers to two or more things coming together, joining together or evolving into one.
  • 14. Applications of Fourier Series  Many waveforms consist of energy at a fundamental frequency and also at harmonic frequencies (multiples of the fundamental).  The relative proportions of energy in the fundamental and the harmonics determines the shape of the wave.  Set of complex exponentials form a basis for the space of T-periodic continuous time functions.  Complex exponentials are eigenfunctions of LTI systems.  If the input to an LTI system is represented as a linear combination of complex exponentials, then the output can also be represented as a linear combination of the same complex exponential signals.
  • 15. Parseval’s (Power) Theorem  Implies that the total average power in x(t) is the superposition of the average powers of the complex exponentials present in it.  If x(t) is even, then the coeffieients are purely real and even.  If x(t) is odd, then the coefficients are purely imaginary and odd.
  • 16. Aperiodic Signals and Fourier Transform  Aperiodic (nonperiodic) signals can be of finite or infinite duration.  An aperiodic signal with 0 < E < ∞ is said to be an energy signal.  Aperiodic signals also can be represented in the frequency domain.  x(t) can be expressed as a sum over a discrete set of frequencies (IFT).  If we sum a large number of complex exponentials, the resulting signal should be a very good approximation to x(t).
  • 17. Fourier Transform  Forward Fourier transform (FT) relation, X(f)=F[x(t)]  Inverse FT, x(t)=F-1 [X(f)]  Therefore, x(t) ← → X(f)⎯  X(f) is, in general, a complex quantity.  Therefore, X(f) = XR (f) + jXI (f) = |X(f)|ejθ(f)  Information in X(f) is usually displayed by means of two plots: (a) X(f) vs. f , known as magnitude spectrum (b) θ(f) vs. f , known as the phase spectrum.
  • 18. Fourier Transform  FT is in general complex.  Its magnitude is called the magnitude spectrum and its phase is called the phase spectrum.  The square of the magnitude spectrum is the energy spectrum and shows how the energy of the signal is distributed over the frequency domain; the total energy of the signal is.
  • 19. Fourier Transform  Phase spectrum shows the phase shifts between signals with different frequencies.  Phase reflects the delay (relationship) for each of the frequency components.  For a single frequency the phase helps to determine causality or tracking the path of the signal.  In the harmonic analysis, while the amplitude tells you how strong is a harmonic in a signal, the phase tells where this harmonic lies in time.  Eg: Sirene of an rescue car, Magnetic tape recording, Auditory system  The phase determines where the signal energy will be localized in time.
  • 21. Properties of Fourier Transform  Linearity  Time Scaling  Time shift  Frequency Shift / Modulation theorem  Duality  Conjugate functions  Multiplication in the time domain  Multiplication of Fourier transforms / Convolution theorem  Differentiation in the time domain  Differentiation in the frequency domain  Integration in time domain  Rayleigh’s energy theorem
  • 22. Properties of Fourier Transform  Linearity  Let x1 (t) ← → X⎯ 1 (f) and x2 (t) ← → X⎯ 2 (f)  Then, for all constants a1 and a2 , we have a1 x1 (t) + a2 x2 (t) ← → a⎯ 1 X1 (f) + a2 X2 (f)  Time Scaling
  • 23. Properties of Fourier Transform  Time shift  If x(t) ← → X(f) then, x(t−t⎯ 0 ) ← → e⎯ -2πft 0X(f)  If t0 is positive, then x(t−t0 ) is a delayed version of x(t).  If t0 is negative, then x(t−t0 ) is an advanced version of x(t) .  Time shifting will result in the multiplication of X(f) by a linear phase factor.  x(t) and x(t−t0 ) have the same magnitude spectrum.
  • 24. Properties of Fourier Transform  Frequency Shift / Modulation theorem
  • 25. Properties of Fourier Transform  Multiplication in the time domain
  • 26. Properties of Fourier Transform  Multiplication of Fourier transforms / Convolution theorem  Convolution is a mathematical way of combining two signals to form a third signal.  The spectrum of the convolution two signals equals the multiplication of the spectra of both signals.  Under suitable conditions, the FT of a convolution of two signals is the pointwise product of their Fts.  Convolving in one domain corresponds to elementwise multiplication in the other domain.
  • 27. Properties of Fourier Transform  Multiplication of Fourier transforms / Convolution theorem
  • 28. Properties of Fourier Transform  Differentiation in the time / frequency domains
  • 29. Properties of Fourier Transform  Rayleigh’s energy theorem
  • 30. Parseval’s Relation  The sum (or integral) of the square of a function is equal to the sum (or integral) of the square of its transform.  The integral of the squared magnitude of a function is known as the energy of the function.  The time and frequency domains are equivalent representations of the same signal, they must have the same energy.
  • 31. Time-Bandwidth Product  Effective duration and effective bandwidth are only useful for very specific signals, namely for (real-valued) low-pass signals that are even and centered around t=0.  This implies that their FT is also real-valued, even and centered around ω=0, and, consequently, the same definition of width can be used.  Two different shaped waveforms to have the same time- bandwidth product due to the duality property of FT.