Computer Communication Networks Data Transmission Media Signal Encoding

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Computer Communication Networks Data Transmission, Media Signal Encoding Techniques Data Communication Techniques Data Link

Computer Communication Networks Data Transmission, Media Signal Encoding Techniques Data Communication Techniques Data Link Control, ATM Multiplexing, Switching, Routing Spread Spectrum, Wireless Networks Local and Wide Area Networks Physical Layer

Lecture Goals Transmission of data over Physical Layer: Analog and Digital Data 2

Lecture Goals Transmission of data over Physical Layer: Analog and Digital Data 2

Transmission of data Data must be transformed to electromagnetic signals to be transmitted.

Transmission of data Data must be transformed to electromagnetic signals to be transmitted.

Data : Analog or Digital Analog data : human voice, chirping of birds etc

Data : Analog or Digital Analog data : human voice, chirping of birds etc , converted to Analog or digital signals Digital : data stored in computer memory, converted to Analog or digital signals

Examples Analog data as analog signal : Human voice from our houses to the

Examples Analog data as analog signal : Human voice from our houses to the telephone exchange. Analog data as digital signal : most of the systems today : Say Human voice, images sent on digital lines. . New telephone system (digital exchanges) Digital data as analog signal : computer data sent over internet using analog line. . Say telephone line ( say our house to the exchange) Digital data as digital signal : say from one digital exchange to another

Signals : Analog or digital Analog signal has infinitely many levels of intensity (infinitely

Signals : Analog or digital Analog signal has infinitely many levels of intensity (infinitely many values, continuous values) over a period of time. Digital signal has only a limited number of defined values(discrete values) say, 0, 1.

Figure 3. 1 Comparison of analog and digital signals

Figure 3. 1 Comparison of analog and digital signals

Figure 3. 2 A sine wave

Figure 3. 2 A sine wave

Figure 3. 3 Amplitude

Figure 3. 3 Amplitude

Figure 3. 4 Period and frequency

Figure 3. 4 Period and frequency

 If a signal does not change at all, its frequency is zero. If

If a signal does not change at all, its frequency is zero. If it changes instantaneously, its frequency is infinite.

 An analog signal is best represented in the frequency domain.

An analog signal is best represented in the frequency domain.

Figure 3. 7 Time and frequency domains

Figure 3. 7 Time and frequency domains

Figure 3. 7 Time and frequency domains (continued)

Figure 3. 7 Time and frequency domains (continued)

Figure 3. 7 Time and frequency domains (continued)

Figure 3. 7 Time and frequency domains (continued)

Single-frequency sine wave is not useful for data communication A single sine wave can

Single-frequency sine wave is not useful for data communication A single sine wave can carry electric energy from one place to another. For eg. , the power company sends a single sine wave with a frequency of say 60 Hz to distribute electric energy to our houses.

Contd. . If a single sine wave was used to convey conversation over the

Contd. . If a single sine wave was used to convey conversation over the phone, we would always hear just a buzz. If we sent one sine wave to transfer data, we would always be sending alternating 0’s and 1’s, which does not have any communication value.

Composite Signals If we want to use sine wave for communication, we need to

Composite Signals If we want to use sine wave for communication, we need to change one or more of its characteristics. For eg. , to send 1 bit, we send a maximum amplitude, and to send 0, the minimum amplitude. When we change one or more characteristics of a single-frequency signal, it becomes a composite signal made up of many frequenies.

Figure 3. 9 Three harmonics

Figure 3. 9 Three harmonics

Figure 3. 10 Adding first three harmonics

Figure 3. 10 Adding first three harmonics

Fourier Analysis In early 1900 s, French Mathematician Jean-Baptiste Fourier showed that any composite

Fourier Analysis In early 1900 s, French Mathematician Jean-Baptiste Fourier showed that any composite signal can be represented as a combination of simple sine waves with different frequencies, phases and amplitudes. More is the number of components included better is the approximation For eg. , let us consider the square wave …

Time-Voltage graph Time on x-axis in msec, Voltage on y-axis

Time-Voltage graph Time on x-axis in msec, Voltage on y-axis

 The first trace in the above figure is the sum of 2 sine

The first trace in the above figure is the sum of 2 sine waves with amplitudes chosen to approximate a 3 Hz square wave (time base is msec). One sine wave has a frequency of 3 Hz and the other has a frequency of 9 Hz. The second trace starts with the first but adds a 15 Hz sine wave and a 21 Hz sine wave. It is clearly a better approximation.

Figure 3. 8 Square wave

Figure 3. 8 Square wave

 It can be shown (ref Kreyzsig) that this signal consists of a series

It can be shown (ref Kreyzsig) that this signal consists of a series of sine waves with frequencies f, 3 f, 5 f, 7 f, … and amplitudes 4 A/pi, 4 A/3 Pi, 4 A/5 Pi, 4 A/7 Pi, … where f is the fundamental frequency(1/T, T the time period) and A the maximum amplitude. The term with frequency f, 3 f. . are called the first harmonic, 3 rd harmonic, … respectively.

Frequency spectrum of a signal The description of a signal using the frequency domain

Frequency spectrum of a signal The description of a signal using the frequency domain and containing all its components is called the frequency spectrum of the signal.

Figure 3. 11 Frequency spectrum comparison

Figure 3. 11 Frequency spectrum comparison

Composite Signal and Transmission Medium A signal needs to pass thru a transmission medium.

Composite Signal and Transmission Medium A signal needs to pass thru a transmission medium. A transmission medium may pass some frequencies, may block few and weaken others. This means when a composite signal, containing many frequencies, is passed thru a transmission medium, we may not receive the same signal at the other end.

Figure 3. 12 Signal corruption

Figure 3. 12 Signal corruption

Bandwidth of a channel The range of frequencies that a medium can pass without

Bandwidth of a channel The range of frequencies that a medium can pass without loosing one-half of the power contained in that signal is called its bandwidth.

Figure 3. 13 Bandwidth

Figure 3. 13 Bandwidth

Representing data as Digital Signals 1 can be encoded as a positive voltage say

Representing data as Digital Signals 1 can be encoded as a positive voltage say 5 volts, 0 as zero voltage (or negative voltage say – 5 volts) Most digital signals are aperiodic. Thus we use Bit interval (instead of period) : time required to send one bit = 1/ bit rate. Bit rate (instead of frequency) : number of bits per second.

Figure 3. 17 Bit rate and bit interval

Figure 3. 17 Bit rate and bit interval

Digital signal as Composite Signal Digital signal is nothing but a composite analog signal

Digital signal as Composite Signal Digital signal is nothing but a composite analog signal with an infinite bandwidth. A digital signal theoretically needs a bandwidth between 0 and infinity. The lower limit 0 is fixed. The upper limit may be compromised.

Relationship b/w bit rate and reqd. channel b/w (informal) Imagine that our computer creates

Relationship b/w bit rate and reqd. channel b/w (informal) Imagine that our computer creates 6 bps In 1 second, the data created may be 111111, no change in the value, best case In another, 101010, maximum change in the values, worst case In another, 001010, change in between the above two cases We have already shown. . More the changes higher are the frequency components

Figure 3. 18 Digital versus analog

Figure 3. 18 Digital versus analog

Usingle harmonic – just to get the intuition The signal 111111 (or 00000 )

Usingle harmonic – just to get the intuition The signal 111111 (or 00000 ) can be simulated by sending a single-frequency signal with frequency 0. The signal 101010 (010101) can be simulated by sending a single-frequency signal with frequency 3 Hz. (3 signals or sine waves per second)

 All other cases are between the best and the worst cases. We can

All other cases are between the best and the worst cases. We can simulate other cases with a single frequency of 1 0 r 2 Hz (using appropriate phase). I. e. to simulate the digital signal at data rate 6 bps, sometimes we need to send a signal of frequency 0, sometimes 1, sometimes 2 and sometimes 3. We need that our medium should be able to pass frequencies of 0 -3 Hz.

Generalizing the example above Bit rate = n bps Best case ---- frequency 0

Generalizing the example above Bit rate = n bps Best case ---- frequency 0 Hz Worst case ----- frequency n/2 Hz Hence B (bandwidth) = n/2

Using more harmonics However, as said earlier, one harmonic does not approximate the digital

Using more harmonics However, as said earlier, one harmonic does not approximate the digital signal nicely and more harmonics are required to approximate the digital signal. As shown earlier, such a signal consists of odd harmonics When we add 3 rd harmonic to the worst case, we need B = n/2 + 3 n/2 = 4 n/2 When we add 5 th harmonic to the worst case, we need B = n/2 + 3 n/2 + 5 n/2= 9 n/2 and so on. In other words, B >= n/2 or n <= 2 B

Relationship b/w bit rate and reqd. channel b/w (informal) Hence we conclude that bit

Relationship b/w bit rate and reqd. channel b/w (informal) Hence we conclude that bit rate and the bandwidth of a channel are proportional to each other.

Analog vs Digital Low-pass channel : has a bandwidth with frequencies between 0 and

Analog vs Digital Low-pass channel : has a bandwidth with frequencies between 0 and f (f could be anything including infinity). Band-pass channel : has a bandwidth with frequencies between f 1 (>=0) and f 2 A band-pass channel is more easily available than a low-pass channel.

Figure 3. 19 Low-pass and band-pass

Figure 3. 19 Low-pass and band-pass

Digital Rate limits Data rate depends on 3 factors: The bandwidth available Number of

Digital Rate limits Data rate depends on 3 factors: The bandwidth available Number of levels of signals Quality of the channel (noise level)

Figure 3. 18 Digital versus analog

Figure 3. 18 Digital versus analog

Noiseless Channel: Nyquist Bit rate b = 2 B log L (log is to

Noiseless Channel: Nyquist Bit rate b = 2 B log L (log is to base 2) b : bit rate B : Bandwidth L : number of levels

Noisy channel : Shannon Capacity C = B log (1 + SNR) C =

Noisy channel : Shannon Capacity C = B log (1 + SNR) C = capacity of the channel in bps B = Bandwidth SNR = signal to noise ratio

Digital vs Analog contd… Digital signal needs a low-pass channel Analog signal can use

Digital vs Analog contd… Digital signal needs a low-pass channel Analog signal can use a band-pass channel. Moreover, bandwidth of a signal can always be shifted ( a property required for FDM – The bandwidth of a medium can be divided into several band-pass channels to carry several analog transmissions at the same time. )

Example 1 Consider an extremely noisy channel in which the value of the signal-to-noise

Example 1 Consider an extremely noisy channel in which the value of the signal-to-noise ratio is almost zero. In other words, the noise is so strong that the signal is faint. For this channel the capacity is calculated as C = B log 2 (1 + SNR) = B log 2 (1 + 0) = B log 2 (1) = B 0 = 0

Example 2 We can calculate theoretical highest bit rate of a regular telephone line.

Example 2 We can calculate theoretical highest bit rate of a regular telephone line. A telephone line normally has a bandwidth of 3000 Hz (300 Hz to 3300 Hz). The signal-to-noise ratio is usually 3162. For this channel the capacity is calculated as C = B log 2 (1 + SNR) = 3000 log 2 (1 + 3162) = 3000 log 2 (3163) C = 3000 11. 62 = 34, 860 bps

Using both the limits In practice we use both the limits to determine, given

Using both the limits In practice we use both the limits to determine, given the channel bandwidth, what should be the number of levels a signal should have.

Acknowledgement http: //www. mhhe. com/engcs/compsci/forouzan/

Acknowledgement http: //www. mhhe. com/engcs/compsci/forouzan/

Q&A ?

Q&A ?