ANALOG TO DIGITAL CONVERSION Lecture 3,4 Syed M. Zafi S. Shah احسان احمد عرساڻي
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Transcript of ANALOG TO DIGITAL CONVERSION Lecture 3,4 Syed M. Zafi S. Shah احسان احمد عرساڻي
ANALOG TO DIGITAL CONVERSION
Lecture 3,4Syed M. Zafi S. Shah
احسان احمد عرساڻي
ANALOG TO DIGITAL CONVERSION• SAMPLING
• SAMPLING THEOREM, ALIASING
• QUANTIZATION• QUANTIZATION NOISE
In today’s class
Need for A/D conversion
We know by now the benefits of digital signals and systems
But most signals of practical interest are still analog Voice, Video RADAR signals Biological signals etc
So in order to utilize those benefits, we need to convert our analog signals into digital
This process is called A/D conversion
Three step process
Analog to Digital conversion is really a three step process involving
Sampling Conversion from continuous-time, continuous
valued signal to discrete-time, continuous-valued signal
Quantization Conversion from discrete-time, continuous
valued signal to discrete-time, discrete-valued signal
Coding Conversion from a discrete-time, discrete-
valued signal to an efficient digital data format Represent as bit?
SAMPLING QUANTIZATION
CODING
CT-CV DT-CV DT-DV DT-DV
Analog signal Binary bits
2 4 6 8 10
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1
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1
1 2 3 4 5 6 7 8 9 104.5
5
5.5
6
6.5
7
7.5
Arbitrarily, I’ve chosen Differential PCM…. Can you re-create these graphs?
Sampling
A continuous-time signal has some value ‘defined’ at ‘every’ time instant
So it has infinite number of sample points
2 4 6 8 10
-1
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1
sampleevery 1 sec
sampleevery 0.1 sec
sampleevery 1 μsec
It is impossible to digitize an infinite number of points because infinite points would require infinite amount of memory and infinite amount of processing power
So we have to take some finite number of points
Sampling can solve such a problem by taking samples at the fixed time interval
If an analog signal is not appropriately sampled, aliasing will occur, where a discrete-time signal may be a representation (alias) of multiple continuous-time signals
Aliasing:
Shannon’s sampling theorem
The sampling theorem guarantees that an analogue signal can be in theory perfectly recovered as long as the sampling rate is at least twice as large as the highest-frequency component of the analogue signal to be sampled
max2FFs
A signal with no frequency component above a certain maximum frequency is known asa band-limited signal (in our case we want to have a signal band-limited to ½ Fs)
Some times higher frequency components are added to the analog signal (practical signals are not band-limited)
In order to keep analog signal band-limited, we need a filter, usually a low pass that stops all frequencies above ½ Fs. This is called an ‘Anti-Aliasing’ filter
In order to sample a voice signal containing frequencies up to 4 KHz, we need a sampling rate of 2*4000 = 8000 samples/second
Similarly for sampling of sound with frequencies up to 20 KHz, we need a sampling frequency of 2*20000 = 40000 samples/second What is the sampling rate for CDs?
Isn’t it more than the one we just calculated?
Example 1: For the following analog signal, find the Nyquist sampling rate, also determine the digital signal frequency and the digital signalt)70cos(3)( tx
The maximum frequency component is x(t) is
Therefore according to Nyquist, we need a sampling rate of
The digital signal would have a frequency
The digital signal can be represented as
HzF 352
70max
HzFFs 702 max
70
352w
)cos(3][ nnx
Anti-aliasing filters
Anti-aliasing filters are analog filters as they process the signal before it is sampled. In most cases, they are also low-pass filters unless band-pass sampling techniques are used
The ideal filter has a flat pass-band and the cut-off is very sharp, since the cut-off frequency of this filter is half of that of the sampling frequency, the resulting replicated spectrum of the sampled signal do not overlap each other. Thus no aliasing occurs
Practical low-pass filters cannot achieve the ideal characteristics. What can be the implications?
Firstly, this would mean that we have to sample the filtered signals at a rate that is higher than the Nyquist rate to compensate for the transition band of the filter
That’s why the sampling rate of a CD is 44.1 KHz, much higher than the 40 KHz we calculated
Go through the assignment… it has some reading task along with some problems
Example 2: Find the Nyquist’s rate for the following signal t)100cos(-t)300sin(10t)50cos(3)( tx
This composite signal comprises three frequencies
f1 = 25 Hz, f2 = 150 Hz, f3 = 50 Hz
So, according to Nyquist we need to sample at 300 Hz
However, for the ‘sine’ term, the sampled signal has values sin(πn), meaning the samples are taken at the ‘zero crossings’, so the sine term is not counted in the process
Therefore, a solution is to sample at higher than twice the max. freq component
Quantization
Now that we have converted the continuous-time, continuous-valued signal into a discrete-time, continuous-valued signal, we STILL need to make it discrete valued
This is where Quantization comes into picture
“The process of converting analog voltage with infinite precision to finite precision” For e.g. if a digital processor has a 3-bit word,
the amplitudes of the signal can be segmented into 8 levels
Quanitization
General rules for Quantization Important properties
of the quantizer include Number of
quantization levels Quantization
resolution Note the minimum &
maximum amplitude of the input signal Ymin & Ymax
0 1 2 3 4 5 6 7 8 9 10
-1
-0.5
0
0.5
1Ymax = 1
Ymin = -1
Note the word-length of DSP m-bits
Number of levels of quantizer is equal to L = 2m
The resolution of the quantizer is given as
Resolution of a quantizer is the distance between two successive quantization levels
More quantization levels, better resolution! Whats the downside of more quantization
levels?
)(1
)( minmax voltsL
yy
0 5 10 15 20 250
0.1
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1
00
09.0][
n
nnx
n
m = 4, L = 16Ymin = 0Ymax = 1∆ = 1/15 = 0.0667
Quantization error
The error caused by representing a continuous-valued signal(infinite set) by a finite set of discrete-valued levels
Suppose a quantizer operation given by Q(.) is performed on continuous-valued samples x[n] is given by Q(x[n]), then the quantization error is given by][][][ nxnxne qq
Lets consider the signal , which is to be quantized.
In the figure (previous slide), we saw that there was a difference between the original signal and the quantized signal. This is the error produced while quantization
It can be reduced, however, if the number of quantization levels is increased as illustrated on next slide
00
09.0][
n
nnx
n
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1
1.5
2
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3.5
4x 10
-3
3-bit ADC
8-bit ADC
Quant. error
Quant. error
Signal-to-Quantization-noise ratio
Provides the ratio of the signal power to the quantization noise (or quanitization error)
Mathematically,
wherePx = ¨Power of the signal ‘x’ (before quantization)Pq = ¨Power of the error signal ‘xq’
q
x
PP
dBSQNR 10log10
1
0
21
0
2 11 N
nq
N
nq nxnx
Nne
NPq
The sampled signal in the FD
۾ ميدان ڪثرتي سگنل ُج�زايل If
Then
fXtx
nssss nffXffXtx
The Ideal Sampling Theorem
نظريئڙو ُجmزڪاري خيالي Also called
Uniform Sampling Theorem Nyquist Theorem
If x(t) is band limited with no components at frequencies greater than fh Hz then it is completely specified by samples taken at the uniform rate fs>2fh 2fh is called the Nyquist rate
The Sampling Rateشرح ُجي uزڪاريَءmُج
The no. of samples per second تعداد �و ُج�زن ۾ سيڪنڊ هڪ
If the sampling rate: fs>2fh , it is called Over-sampling fs=2fh , it is called Critical-sampling fs<2fh , it is called Under-sampling
اوقاتي mل ڪ ڀڳ Near لڳContinuous
-10 -8 -6 -4 -2 0 2 4 6 8 100
0.5
1
time (seconds)
x(t)
-10 -8 -6 -4 -2 0 2 4 6 8 100
0.5
1
frequency (Hz)
|X(f
)|
T=0.1
-10 -8 -6 -4 -2 -0.75 0.75 2 4 6 8 10 0
0.5
1
time (seconds)
x(t)
-10 -8 -6 -4 -2 0 2 4 6 8 100
0.5
1
frequency (Hz)
|X(f
)|
T=?
-10 -8 -6 -4 -2 -0.75 0.75 2 4 6 8 10 0
0.5
1
time (seconds)
x(t)
-10 -8 -6 -4 -2 0 2 4 6 8 100
0.5
1
frequency (Hz)
|X(f)
|
T=?
-10 -8 -6 -4 -2 0 2 4 6 8 100
0.5
1
time (seconds)
x(t)
-10 -8 -6 -4 -2 0 2 4 6 8 100
0.5
1
frequency (Hz)
|X(f
)|
Anti-aliasing filters
Anti-aliasing filters are analog filters as they process the signal before it is sampled. In most cases, they are also low-pass filters unless band-pass sampling techniques are used
The ideal filter has a flat pass-band and the cut-off is very sharp, since the cut-off frequency of this filter is half of that of the sampling frequency, the resulting replicated spectrum of the sampled signal do not overlap each other. Thus no aliasing occurs
Practical low-pass filters cannot achieve the ideal characteristics. What can be the implications?
Firstly, this would mean that we have to sample the filtered signals at a rate that is higher than the Nyquist rate to compensate for the transition band of the filter
That’s why the sampling rate of a CD is 44.1 KHz, much higher than the 40 KHz we calculated
Go through the assignment… it has some reading task along with some problems
Example 2: Find the Nyquist’s rate for the following signal t)100cos(-t)300sin(10t)50cos(3)( tx
This composite signal comprises three frequencies
f1 = 25 Hz, f2 = 150 Hz, f3 = 50 Hz
So, according to Nyquist we need to sample at 300 Hz
However, for the ‘sine’ term, the sampled signal has values sin(πn), meaning the samples are taken at the ‘zero crossings’, so the sine term is not counted in the process
Therefore, a solution is to sample at higher than twice the max. freq component