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Ch 3 Analysis and Transmission of Signals ENGR 4323/5323 Digital and Analog Communication...

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Ch 3 Analysis and Transmission of Signals ENGR 4323/5323 igital and Analog Communication Engineering and Physics University of Central Oklahoma Dr. Mohamed Bingabr
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Ch 3Analysis and Transmission of Signals

ENGR 4323/5323Digital and Analog Communication

Engineering and PhysicsUniversity of Central Oklahoma

Dr. Mohamed Bingabr

Chapter Outline

β€’ Aperiodic Signal Representation by Fourier Integralβ€’ Fourier Transform of Useful Functionsβ€’ Properties of Fourier Transformβ€’ Signal Transmission Through LTIC Systemsβ€’ Ideal and Practical Filtersβ€’ Signal Distortion over a Communication Channelβ€’ Signal Energy and Energy Spectral Densityβ€’ Signal Power and Power Spectral Density

The Fourier Transform Spectrum

The Fourier transform integrals:

)()()(

)()(

X

tj

eXX

dtetxX

Fourier transform (FT) allows us to represent aperiodic (not periodic) signal in term of its frequency Ο‰.

Ο‰

|X(Ο‰)|

x(t)

The Fourier Transform Spectrum

The Inverse Fourier transform:

deXtx tj)(2

1)(

)()()( XeXX

The Amplitude (Magnitude) Spectrum

The Phase Spectrum

The amplitude spectrum is an even function and the phase is an odd function.

Useful Functions

Unit Gate Function

2/|| 1

2/|| 5.0

2/|| 0

t

t

tt

rect

Unit Triangle Function

2/|| /21

2/|| 0

tt

tt

/2-/2

/2-/2

1

1

t

t

Useful Functions

Interpolation Function

0for t 1)(sinc

for t 0)(sinc

sin)(sinc

t

ktt

tt

sinc(t)

t

Example

Find the FT, the magnitude, and the phase spectrum of x(t) = rect(t/).

Answer

)2/sinc()/()(2/

2/

dtetrectX tj

The spectrum of a pulse extend from 0 to . However, much of the spectrum is concentrated within the first lobe (=0 to 2/)

What is the bandwidth of the above pulse?

Examples

Find the FT of the unit impulse (t).Answer

1)()(

dtetX tj

Find the inverse FT of ().Answer

)(21

impulsean isconstant a of spectrum theso

2

1)(

2

1)(

detx tj

Examples

Find the FT of the unit impulse train Answer

)(0

tT

n

n

n

n

tjnT

nT

X

eT

t

)(2

)(

1)(

00

0

0

0

Properties of the Fourier Transformβ€’ Linearity:

β€’ Let and

then

Xtx Yty

YXtytx

β€’ Time Scaling:

β€’ Let

then

Xtx

aX

aatx

1

Compression in the time domain results in expansion in the frequency domain

Internet channel A can transmit 100k pulse/sec and channel B can transmit 200k pulse/sec. Which channel does require higher bandwidth?

Properties of the Fourier Transform

β€’ Time Reversal:

β€’ Let

then ( ) ( )x t X

Xtx

β€’ Left or Right Shift in Time:

β€’ Let

then

Xtx

00

tjeXttx

Time shift effects the phase and not the magnitude.

Properties of the Fourier Transformβ€’ Multiplication by a Complex Exponential (Freq. Shift

Property):

β€’ Let

then 00( ) ( )j tx t e X

Xtx

β€’ Multiplication by a Sinusoid (Amplitude Modulation):

Let

then

Xtx

000 2

1cos XXttx

cos0t is the carrier, x(t) is the modulating signal (message),x(t) cos0t is the modulated signal.

Example: Amplitude Modulation

Example: Find the FT for the signal x(t)

ttrecttx 10cos)4/()( -2 2

A

Amplitude Modulation

ttmt cAM cos)()( Modulation

]2cos1)[(5.0 cos)( 2 ttmtt ccAM

Demodulation

Then lowpass filtering

Properties of the Fourier Transform

β€’ Differentiation in the Time Domain:

Let

then ( ) ( ) ( )n

nn

dx t j X

dt

Xtx

β€’ Differentiation in the Frequency Domain:

β€’ Let

then ( ) ( ) ( )n

n nn

dt x t j X

d

Xtx

Example: Use the time-differentiation property to find the Fourier Transform of the triangle pulse x(t) = (t/)

Properties of the Fourier Transformβ€’ Integration in the Time Domain:

Let

Then1

( ) ( ) (0) ( )t

x d X Xj

Xtx

β€’ Convolution and Multiplication in the Time Domain:

Let

Then ( ) ( ) ( ) ( )x t y t X Y

Yty

Xtx

)()(2

1)()( 2121

XXtxtx Frequency convolution

Example

Find the system response to the input x(t) = e-at u(t) if the system impulse response is h(t) = e-bt u(t).

Properties of the Fourier Transform

β€’ Parseval’s Theorem: since x(t) is non-periodic and has FT X(), then it is an energy signals:

dXdttxE22

2

1

Real signal has even spectrum X()= X(-),

0

21

dXE

ExampleFind the energy of signal x(t) = e-at u(t) Determine the frequency so that the energy contributed by the spectrum components of all frequencies below is 95% of the signal energy EX.

Answer: = 12.7a rad/sec 1

π‘Ž2+π‘₯2 dx=1π‘Žπ‘‘π‘Žπ‘›βˆ’1 π‘₯

π‘Ž

Properties of the Fourier Transformβ€’ Duality ( Similarity) :

β€’ Let

then ( ) 2 ( )X t x

Xtx

Signal Transmission Through a Linear System

 

 

 

Distortionless Transmission (System)

 

 

 

   

 

 

 

Slope is constant for distortionless system 

Example 3.16

A transmission medium is modeled by a simple RC low-pass filter shown below. If g(t) and y(t) are the input and the output, respectively to the circuit, determine the transfer function H(f), ΞΈh(f), and td(f). For distortionless transmission through this filter, what is the requirement on the bandwidth of g(t) if amplitude response variation within 2% and time delay variation within 5% are tolerable? What is the transmission delay? Find the output y(t).

𝑑𝑑π‘₯

( π‘‘π‘Žπ‘›βˆ’1π‘Žπ‘₯ )= π‘Ž1+π‘Ž2π‘₯2

Ideal Versus Practical Filters

t

wR(t)

h(t)wR(t)H(Ο‰)*WR(t)

Ideal Versus Practical Filters

Signal Distortion Over a Communication Channel

1. Linear Distortion

2. Channel Nonlinearities

3. Multipath Effects

4. Fading Channels

- Channel fading vary with time. To overcome this distortion is to use automatic gain control (AGC)

Linear DistortionChannel causes magnitude distortion, phase distortion, or both.

Example: A channel is modeled by a low-pass filter with transfer function H(f) give by

𝐻 ( 𝑓 )={(1+π‘˜π‘π‘œπ‘ 2πœ‹ 𝑓𝑇 )π‘’βˆ’ 𝑗2πœ‹ 𝑓 𝑑 𝑑❑

|𝑓 |<𝐡0|𝑓 |>𝐡

A pulse g(t) band-limited to B Hz is applied at the input of this filter. Find the output y(t).

Nonlinear Distortion

y(t) = f(g(t)) f(g) can be expanded by Maclaurin series

If the bandwidth of g(t) is B Hz then the bandwidth of y(t) is kB Hz.

y (𝑑 )=π‘Ž0+π‘Ž1𝑔 (𝑑 )+π‘Ž2𝑔2 (𝑑 )+…+π‘Žπ‘˜π‘”

π‘˜ (𝑑 )

Example: The input x(t) and the output y(t) of a certain nonlinear channel are related as

y(t) = x(t) + 0.000158 x2(t)Find the output signal y(t) and its spectrum Y(f) if the input signal is x(t) = 2000 sinc(2000t). Verify that the bandwidth of the output signal is twice that of the input signal. This is the result of signal squaring. Can the signal x(t) be recovered (without distortion) from the output y(t)?

Continue Example

Distortion Caused by Multipath Effects

𝐻 ( 𝑓 )=π‘’βˆ’ 𝑗2 πœ‹ 𝑓 𝑑 𝑑+Ξ± π‘’βˆ’ 𝑗2 πœ‹ 𝑓 (𝑑¿¿𝑑+βˆ† 𝑑 )ΒΏ

𝐻 ( 𝑓 )=π‘’βˆ’ 𝑗2 πœ‹ 𝑓 𝑑 𝑑(1+Ξ±π‘π‘œπ‘ 2πœ‹ 𝑓 βˆ† π‘‘βˆ’ 𝑗 Ξ± 𝑠𝑖𝑛 2πœ‹ 𝑓 βˆ† 𝑑)

𝐻 ( 𝑓 )=√1+Ξ± 2+2Ξ±π‘π‘œπ‘ 2πœ‹ 𝑓 βˆ† 𝑑 𝑒π‘₯𝑝 [βˆ’ 𝑗 (2πœ‹ 𝑓 𝑑𝑑+π‘‘π‘Žπ‘›βˆ’ 1 Ξ± 𝑠𝑖𝑛2πœ‹ 𝑓 βˆ†π‘‘

1+Ξ± π‘π‘œπ‘ 2πœ‹ 𝑓 βˆ†π‘‘ )]

𝐻 ( 𝑓 )=π‘’βˆ’ 𝑗2 πœ‹ 𝑓 𝑑 𝑑(1+Ξ±π‘’βˆ’ 𝑗 2πœ‹ 𝑓 βˆ†π‘‘)

Common distortion in this type of channel is frequency selective fading

Energy and Energy Spectral Density

𝐸𝑔=βˆ’ ∞

∞

𝑔 (𝑑 )π‘”βˆ— (𝑑 )𝑑𝑑

𝐸𝑔=βˆ’ ∞

∞

|𝐺( 𝑓 )|2𝑑𝑓

Energy in the time domain

Energy in the frequency domain

Ψ𝑔 ( 𝑓 )=|𝐺( 𝑓 )|2

Energy spectral density (ESD), , is the energy per unit bandwidth (in hertz) of the spectral components of g(t) centered at frequency f.

Ξ¨ 𝑦( 𝑓 )=|𝐻 ( 𝑓 )|2Ξ¨ π‘₯( 𝑓 )

The ESD of the system’s output in term of the input ESD is

𝐻 ( 𝑓 )Ξ¨ π‘₯ ( 𝑓 )

Essential Bandwidth of a Signal

Estimate the essential bandwidth of a rectangular pulse g(t) = (t/T), where the essential bandwidth must contain at least 90% of the pulse energy.

𝐸𝑔=βˆ’ ∞

∞

𝑔2 (𝑑 )𝑑𝑑= βˆ’π‘‡ /2

𝑇 /2

𝑑𝑑=𝑇

𝐸𝐡=βˆ’π΅

𝐡

𝑇 2𝑠𝑖𝑛𝑐2 (πœ‹ 𝑓𝑇 ) 𝑑𝑓=0.9𝑇

B = 1/T Hz

Energy of Modulated Signals

The modulated signal appears more energetic than the signal g(t) but its energy is half of the energy of the signal g(t). Why?

πœ‘ (𝑑 )=𝑔 (𝑑 )π‘π‘œπ‘ 2πœ‹ 𝑓 0 𝑑

Ξ¦ ( 𝑓 )=12 [𝐺 ( 𝑓 + 𝑓 0 )+𝐺( 𝑓 βˆ’ 𝑓 0) ]

Ξ¨πœ‘ ( 𝑓 )=14 |𝐺 ( 𝑓 + 𝑓 0 )+𝐺( 𝑓 βˆ’ 𝑓 0)|

2

Ξ¨πœ‘ ( 𝑓 )=14

Ψ𝑔 ( 𝑓 + 𝑓 0 )+14

Ψ𝑔

( 𝑓 + 𝑓 0)

πΈπœ‘=12𝐸𝑔

If f0 > 2B then

Time Autocorrelation Function and Energy Spectral Density

The autocorrelation of a signal g(t) and its ESD form a Fourier transform pair, that is

Ψ𝑔 ( 𝑓 )πœ“π‘”(𝜏 )

Example: Find the time autocorrelation function of the signal g(t) = e-atu(t), and from it determine the ESD of g(t).

Signal Power and Power Spectral Density

Power Pg of the signal g(t)

𝑃𝑔= lim𝑇 β†’βˆž

1𝑇

βˆ’π‘‡ /2

𝑇 /2

𝑔 (𝑑 )π‘”βˆ— (𝑑 )𝑑𝑑

𝑃𝑔= lim𝑇 β†’βˆž

𝐸𝑔𝑇

𝑇

Power spectral density Sg(f) of the signal g(t)

𝑆𝑔( 𝑓 )= lim𝑇→ ∞

|𝐺𝑇 ( 𝑓 )|2

𝑇 𝑃𝑔=βˆ’ ∞

∞

𝑆𝑔 ( 𝑓 )𝑑𝑓 =20

∞

𝑆𝑔 ( 𝑓 )𝑑𝑓

𝑆 𝑦( 𝑓 )=|𝐻 ( 𝑓 )|2𝑆π‘₯( 𝑓 )𝐻 ( 𝑓 )𝑆π‘₯ ( 𝑓 )

Time Autocorrelation Function of Power Signals

Time autocorrelation Rg( ) of a power signal g(t)

ℛ𝑔(𝜏 )= lim𝑇 β†’ ∞

1𝑇 βˆ’βˆž

∞

𝑔𝑇 (𝑑)𝑔𝑇 (𝑑+𝜏 )𝑑𝑑

ℛ𝑔(𝜏 )= lim𝑇 β†’ ∞

πœ“π‘”π‘‡(𝜏 )𝑇

ℛ𝑔(𝜏 )= lim𝑇 β†’ ∞

1𝑇

βˆ’π‘‡ /2

𝑇 /2

𝑔 (𝑑 )𝑔(π‘‘βˆ’πœ)𝑑𝑑

Autocorrelation a Powerful Tool

If the energy or power spectral density can be found by the Fourier transform of the signal g(t) then why do we need to find the time autocorrelation?

Ans: In communication field and in general the signal g(t) is not deterministic and it is probabilistic function.

Example

A random binary pulse train g(t). The pulse width is Tb/2, and one binary digit is transmitted every Tb seconds. A binary 1 is transmitted by positive pulse, and a binary 0 is transmitted by negative pulse. The two symbols are equally likely and occur randomly. Determine the PSD and the essential bandwidth of this signal.

Challenge: g(t) is not deterministic and can not be expressed mathematically to find the Fourier transform and PSD. g(t) is random signal.

1 1 0 1 0 0 1 0

0

g(t)

𝜏 g(t-Ο„)

Tb

t

ℛ𝑔(𝜏 )= lim𝑇 β†’ ∞

1𝑇

βˆ’π‘‡ /2

𝑇 /2

𝑔 (𝑑 )𝑔(π‘‘βˆ’πœ)𝑑𝑑

For 0<𝜏<𝑇 𝑏/2

ℛ𝑔 (𝜏 )=lim𝑁 β†’ ∞

1

𝑁 𝑇𝑏(𝑇𝑏

2βˆ’πœ)𝑁=( 1

2βˆ’πœπ‘‡ 𝑏

)For 𝜏>𝑇𝑏 /2

ℛ𝑔 (𝜏 )=0

𝑇 𝑏/2<𝜏<𝑇 𝑏

ℛ𝑔 (𝜏 )=lim𝑁 β†’ ∞

1

𝑁 𝑇𝑏(π‘˜π‘‡π‘+𝜏+

𝑇 𝑏

2βˆ’(π‘˜+1)𝑇 𝑏)𝑁4

𝑇 𝑏/2 𝑇 𝑏

1

ℛ𝑔 (𝜏 )

π‘˜π‘‡π‘

𝜏

π‘˜π‘‡π‘+πœπ‘˜π‘‡π‘+𝜏+𝑇𝑏 /2

(π‘˜+1)𝑇𝑏

βˆ’π‘‡ 𝑏/2βˆ’π‘‡ 𝑏

ℛ𝑔 (𝜏 )=14 ( πœπ‘‡π‘

βˆ’12 )

Homework Problem

Discrete Fourier Transform (DFT, FFT)

πΊπ‘ž=βˆ‘π‘˜=0

𝑁0 βˆ’ 1

π‘”π‘˜π‘’βˆ’ π‘—π‘žΞ©0π‘˜

Ξ© 0=2πœ‹π‘ 0

𝑁 0=𝑇 0

𝑇 𝑠


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