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Review Of a Book Entitled Computer Know


KNOW YOUR COMPUTER
BEFORE you use the computer, you should know first
advance what is called the computer. The introduction of this important
so that we can use the computer with the best possible way
highly efficient and effective.
Computer Systems
Generally, what people call a "computer" is a set of
tool consisting of CPU, monitor, and keyboard. There are also
which states that the CPU was the one who called the computer, while
Other tools are complementary, with its own name
such as monitors, keyboards, mouse, printer and others.
Actually, the notion of computers are more accurately called as
computer system. Computer system consists of three devices (devices),
namely:
􀂃 hardware (hardware),
􀂃 software (software), and
􀂃 Man (brainware).
The tools mentioned above is an example of the hardware.
Computer systems can not run only with one
device, but requires all three.
Chapter 1

Hardware
Computer hardware that we know can be classified into three
group:
􀂃 input devices (input devices);
􀂃 Devices processor (processing unit);
􀂃 The device output (output device).
Input device is equipment that we use to enter
data to a computer, such as keyboard, mouse, and scanner.
Processing devices are devices that perform data processing
into information, or who becomes "brains" of computers in the machine
execute the command given. Processing devices are often
called a CPU (central processing unit / central processing unit) or called
also the processor.
Output devices are devices used to display
information processed by computers, such as monitors, printers, and speakers.
From the above it can be concluded that the often mentioned
CPU is actually a part of computer processing
data (processor), a chip, and is known by the name
brands such as Intel Pentium, Intel Celeron, AMD Athlon, and so forth.

Figure 1. Computer hardware
The "body" (casing) computer which is called the CPU not only
contains a processor, but also contains the mainboard (or
also called mother-board), diskette drives, CD drives, hard drives, memory
(RAM), VGA cards, sound cards, LAN cards (also called Ethernet
cards), modems, and so forth.

to be continue.....

The Mobile Radio Propagation Channel Over Part


In general, it is imperative to understand the target operating environment in order
to optimize the transmitter and receiver design of the communication systems. There
is no such thing as a universal communication systems that is effective for all communication
environments. For examples, both wireless LAN systems and 3G networks
are designed to offer high bit rate. For IEEE 802.11g system, the highest bit rate
is 54Mbps. For UMTS systems (Re1 99), the highest bit rate is just 2Mbps. Obviously,
the cost of the UMTS system is much higher than the wireless LAN systems.
Hence, one might query about why we still require UMTS system when wireless
LAN systems cost only less than US$lOO. Figure 1.8 illustrates a more comprehensive
comparison between Wi-Fi and UMTS systems. We do not just look at the
maximum bit rate offered by both systems but we also have to compare the target
environment of operations. For instance, while Wi-Fi systems offer higher bit rate,
they are designed to operate at pedestrian mobility and indoor coverage. For 3G/4G
cellular systems, although their maximum bit rate is lower than Wi-Fi systems, they
are designed to operate at very high mobility and macroscopic coverage.

Figure 1.8 A comparison between WiFi systems and 3G cellular systems.

1.6 SUMMARY
In this chapter, we have elaborated on the modeling of wireless channels. We have
introduced the 3 levels of channel models, namely the large scale path loss model, the
medium scale shadowing model as well as the microscopic scale fading model. The
path loss model deals with the variation of received signal strength with respect to
variation of distance between the transmitter and the receiver and is focused on the time
scale of seconds. The path loss between a transmitter and a receiver is characterized
by a path loss exponent. In free space or line of sight propagation condition, the path
loss exponent is 2 meaning that the signal power will be reduced by 4 times for every
double in the distance separation. In non line-of-sight propagation environment, the
path loss exponent can reach 4 or above. The larger the path loss exponent, the faster
the signal attenuates as it propagates.
Shadowing model deals with medium scale variation of received signal strength
when the distance is fixed. This is contributed by the variation in the terrain profile
such as obstacles, hills and buildings. Due to law of large number, the shadowing
effects (received signal strength variations) can be modeled by log-normal shadowing
component and parameterized by the standard derivation a(dB).
Finally, microscopic fading deals with small scale variation of received signal
strength due to constructive and destructive multipath superpositions. The time scale
of interests can be of millisecond order. Microscopic fading can be parameterized by
the delay spread (coherence bandwidth) for the multipath dimension as well as the
Doppler spread (coherence time) for the time variation dimension. Note that the multipath
dimension and the time variation dimension are two independent dimensions.
The number of resolvable multipaths is given by L, = [Wtl/Bc]W. hen there is only
one resolvable multipath (Wt, < B,), the signal experiences flat fading channels.
Otherwise, the signal experiences frequency selective fading channels. Similarly,
when T, > T,, the signal experiences fast fading channels. Otherwise, the signal
experiences slow fading channels. Figure 1.9 summarizes the concept of frequency
flat fading, frequency selective fading, fast fading and slow fading channels.

PROBLEMS
1.1 A wideband signal is more difficult to transmit than a narrowband signal
because of the inter-symbol interference problem faced by the wideband signal.
[ TrueFalse]
1.2 In flat fading channels, there is no multipath effect at all as there is only a single
resolvable echo at the receiver. [TruelFalse].

Figure 1.9 Summary of classifications of fading channels.

The End

The Mobile Radio Propagation Channel Part 6


.
1.4.2 Fast Fading vs Slow Fading
Similarly, based on the Doppler spread and the transmitted bandwidth (or equivalently
the coherence time and the symbol / frame duration), the fading channel is classified
as fusr fading or slow fading. A fading channel is classified as f i s t fading if the symbol
duration T, is larger than the coherence time T,. Otherwise, the fading channel is
called slow fading. Note that whether a transmitted signal experiences fast fading
or slow fading depends on both the channel parameters (such as the Doppler spread
or coherence time) and the transmitted signal parameters (such as the transmitted
bandwidth or the symbol duration). Hence, for slow fading channels, the channel
fading coefficients hi(t) remains to be quasi-static within a symbol duration T,.
Note that sometimes, we define slow fading to be the case when T, (coherence
time) is larger than Tf (frame duration) instead of symbol duration.
1.5 PRACTICAL CONSIDERATIONS
In this section, we briefly discuss the implications of path loss, shadowing and microscopic
fading components on system design. In fact, the design and performance of
communication systems depends heavily on the underlying channels. For instance,
path loss exponent determines how fast the received signal strength attenuates with
respect to distance separation between the transmitter and receiver. For a point to
point digital link, higher path loss exponents results in faster signal attenuation and
therefore is undesirable. This is because for the same transmitter and receiver design,
a higher path loss exponent results in shorter communication range (for the same
transmit power) or higher required transmit power (for the same distance) to overcome
the higher path loss. This holds in general for noise-limited systems. However, if we
consider multicell systems such as cellular networks like GSM, or CDMA systems,


higher path loss exponent results in more confined interference (as the interference
signal cannot propagate very far) and this translates into higher system capacity because
more aggressive resource reuse can be realized. In general, higher path loss
exponent is desirable for interference-limited systems. We will elaborate the cellular
system designs in Chapter 3.
Shadowing introduces randomness in the coverage of cellular systems. For instance,
if the standard derivation of the shadowing component is large, the average
received signal power at the cell edge will have large fluctuations. To achieve a certain
Quality of Service (QoS) such as 90% probability that the received signal strength at
the cell edge is above a target threshold, higher power or shorter cell radius is needed
to allow for some shadowing margins to satisfy the QoS target. Hence, shadowing
with larger standard derivation is undesirable.
Finally, the effects of microscopic fading have high impact on the physical layer
design of communication systems. For instance, by common sense, it is more challenging
to setup a wireless link to transmit high quality video then audio signals. This
is because for the same environment, transmitting a video signal generally involves
a higher transmit bandwidth, Wtr, relative to an audio signal. From Section 1.4.1, it
is very likely that the video signal will experience frequency selective fading while
the audio signal will experience frequency flat fading. As we elaborate in Chapter 4,
frequency selective fading will introduce intersymbol interference (ISI) and this induces
irreducible error floor. Hence, complex equalization at the receiver is needed.
On the other hand, for audio signal, since Wt, << B,, the signal will experience
flat fading only and no equalization at the receiver is needed. Hence, this results
in more simple design. Another common-sense example is that it is easier to setup
a wireless link for indoor environment than an outdoor environment to transmit the
same signal. This again can be analyzed by the frequency selective or frequency flat
fading channels. For the same transmit signal, the indoor environment in general
has a larger coherence bandwidth and hence, the number of resolvable multipaths
in indoor environment will be small. On the other hand, the coherence bandwidth
for outdoor environment in general will be small and this results in larger number of
resolvable multipaths (frequency selective fading). Hence, more complicated designs
are needed in the latter case.

To be Continue,,,,

The Mobile Radio Propagation Channel Part 5



Time Varying dimension: To characterize the time variation dimension, we can
have either the Doppler spread or coherence time. Doppler spread [ 1671 refers
to the spread of frequency introduced by the fading channel when we transmit
a single tone signal (narrow pulse in frequency domain) as illustrated in
Figure 1.7(a). The spread in frequency is due to the mobility between the
transmitter and the receiver or the mobility of the surrounding obstacles. The
maximum Doppler spread is given by:



where ƛ is the wavelength of the signal and ti is the maximum speed between
the mobile and the base station. Typical values of Doppler spread for pedestrian
users (5km/hr) and vehicular users (100km/hr) at carrier frequency of 2.4 GHz
are given by 14 Hz and 300 Hz respectively.

Figure 1.6 Illustration of the delay spread and coherence bandwidth.

Figure 1.7 Illustration of the doppler spread and coherence time.


Similarly, an equivalent parameter to quantify the time variation dimension of
microscopic fading is given by the coherence time. Figure 1.7(b) illustrates the
concept of coherence time. Suppose we transmit two narrow pulses in time
domain at times t = tl and t = t 2 with unit energy. After channel fading, the
corresponding signals will be received at t = tl + 71 and t = t 2 + 7 2 with
energies a1 and a2 respectively. Similar to coherence bandwidth, if we separate
the two transmissions sufficiently far in time, ( ț1 +ț2 > Tc), the channel
fading a1 and a2 are uncorrelated. Hence, the coherence time is defined as
the minimum time separation at the transmitter in order to have uncorrelated
fading at the receiver. It is found that for 0.5 correlation coefficient between
a1 and a2, the coherence time T, is related to the Doppler spread f d by:



Note that Doppler spread and coherence time are two sides of the same coin to
characterize the time variation dimension of microscopic fading.
1.4.1 Fiat Fading vs Frequency Selective Fading
Based on the delay spread and the transmitted symbol duration, (or equivalently,
the coherence bandwidth and the transmitted bandwidth), the multipath fading can
be classified as frequencyjat fading or frequency selective fading [287]. A fading
channel is said to be frequencyjat if ~7~< T, or equivalently, B, > Wt, where T,
and W,, are the symbol duration and the transmitted signal bandwidth, oT and B, are
the delay spread and the coherence bandwidth, respectively. Otherwise, the fading
channel is said to be frequency selective. Note that whether the transmitted signal
will experience frequency flat fading or frequency selective fading depends on both
the channel parameters (such as oT,B ,) as well as the transmitted signal parameters
(such as T, and Wt,).
When a transmitted signal experience frequency flat fading, the received signal
consists of superposition of multipath signals but the multipaths have delays much
smaller than the symbol duration T, and hence, the multipaths are unresolvable. As
a result of the unresolvable multipath, the received pulse shape will be different from
the transmitted pulse shape but the received pulse appears as one single pulse at the
receiver. The received signal is modeled as:



where h(t) is the time-varying channel fading which is modeled as complex Gaussian
random variable with zero mean and unit variance, z ( t ) is the complex AWGN noise
and z ( t ) is the low-pass equivalent complex transmitted signal.
On the other hand, when a transmitted signal experience frequency selective fading,
the received signal consists of multipaths with delay >> symbol duration (T,). Hence,

the received signal consists of pulses at resolvable deZays (integral multiples of T,),
In general, the number of resolvable multipaths is given by:



The received signal for frequency selective fading channel is modeled as:



where hi ( t )is the time varying channel fading for the i-th resolvable multipaths which

is modeled as complex Gaussian random variable with zero mean and unit variance.







to be continue....

The Mobile Radio Propagation Channel Part 4


1.4 SMALL SCALE MULTIPATH FADING EFFECTS
The third component of variation of received signal strength is called the small scale
fading or microscopicfading. In the small scale fading component, the signal strength
fluctuates over 30dB within a very short time scale of the order of milli-second as
illustrated in Figure 1.4. There are two independent dimensions in microscopic fading,
namely the multipath dimension and the time-varying dimension. They are elaborated
below.
Figure 1.5 illustrates the concept of multipath dimension and time varying dimension
of microscopic fading. For example, a narrow pulse transmitted at t = t o results
in one resolvable received pulse. The received pulse in general has a different shape
compared with the transmitted pulse because of multipaths propagation. At t = t l ,
the same transmit pulse results in two resolvable pulses with the first pulse stronger
than the second pulse. At t = t 2 , the same transmit pulse results in two resolvable
pulses with the first pulse weaker than the second pulse. Note that the multipath
dimension and the time-varying dimension are two independent dimensions. We
quantify the two dimensions below.
Multipath dimension: To quantify the multipath dimension in microscopic fading,
we can either look at the delay spread or coherence bandwidth. Delay spread

Figure 1.4 Illustration of the envelope and phase variations in microscopic fading.




Figure 1.5 Illustration of the multipath and time-varying dimensions in microscopic fading.


is defined as the range of multipath components with significant power when
an impulse is transmitted as illustrated in Figure 1.6 In Figure 1.6(a), a narrow
pulse (in time) at the transmitter results in a spread of energy across the delay
dimension. The graph of received power versus delay is called the powerdelay
profile and is used to measure the delay spread experimentally. Typically,
the delay spread in enclosed indoor environment is smaller than the outdoor
environment because the range of delays in the multipaths are more contained
in the indoor environment.
On the other hand, to quantify the multipath dimension [167], an equivalent
parameter, namely the coherence bandwidth, can be used. Figure 1.6(b) illustrates
the concept of coherence bandwidth. Suppose at the transmitter, we
transmit two single tone signals (impulse in frequency domain) with unit power
and frequencies fi and f2 respectively. At the receiver, the two single tones will
be received with received powers a1 and a2 respectively. cq and a2 represent
the random channel attenuation (or fading) experienced by the two single-tone
signals. It is found that if If1 - f2l > B,, the attenuation a1 and a2 are uncorrelated.


Otherwise, the attenuation a1 and a2 are correlated. Hence, the
minimum separation of frequency such that uncorrelated fading is resulted is
called the coherence bandwidth, B,. It is found that for 0.5 correlation coefficient
between al and a2, the coherence bandwidth is related to the delay
spread oT by:



Typical values of the coherence bandwidth for indoor and outdoor environment
are lMHz and lOOkHz respectively. Note that delay spread and coherence bandwidth
are two sides of the same coin to characterize the multipath dimension
of microscopic fading.

to be continue........

The Mobile Radio Propagation Channel Part 3



The free space path loss equation is not accurate to model the path loss in terrestrial
wireless communications with multipaths from the transmitter to the receiver. In
general, the path loss model can be represented by the equation:
PL(dB) = PL(d0) + 10nloglo(d/do)
where n is the path loss exponent which depends on the environment. Table 1.1
illustrates the values of path loss exponents under various environment.
Table 1.1 Path loss exponents.


Environment

Path Loss Exponent

In building line-of-sight
Free space
Obstructed in factories
Urban area cellular
Shadowed urban cellular
Obstructed in building
1.6-1.8
2
2-3
2.7-3.5
3-5
4-6

The higher the path loss exponent is, the faster the signal strength drops with respect
to the increase in distance. For example, a commonly assumed path loss exponent in
non line-of-sight environment is n = 4. In this case, doubling the distance separation
between the transmitter and the receiver will result in 16 times reduction in received
signal strength.
In some more complicated propagation environments such as irregular terrain and
cities, there is no simple analytical path loss model. Empirical models based on
extensive channel measurements are used to model the path loss versus distance in
such complex environments. Examples are the Okumura model [261], Hata model
and COST 231 extension to the Hata model [316] for cellular systems simulations
and link budget analysis.
1.3 SHADOWING EFFECTS
In the shadowing model, we are interested to study the medium term variation in
received signal strength when the distance between the transmitter and receiver is
fixed. For example, image a mobile station is circling around a base station with radius
T . As the mobile moves, one expects some medium term fluctuations in the received
signal strength but the variation is not due to the path loss component because the
distance between the transmitter and the receiver is not changed. This signal variation
is due to the variations in terrain profile such as variation in the blockage due to trees,
buildings, hills, etc. This effect is called shadowing. Consider a signal undergoing
multiple reflections (each with an attenuation factor ai) and multiple diffractions (each
with an attenuation factor bi) as illustrated in Figure 1.3

Figure 1.3
hills, etc.
Shadowing model-variations in path loss predication due to buildings, trees,
The received signal strength is given by:



where N, and Nt denote the number of obstacles with reflecting and diffracting the
signal respectively. Expressing the received power in dB, we have:



where ơ~i is the attenuation coefficient due to reflections or diffractions. Each of
the term ơ!i (dB) represents a random and statistically independent attenuation. As
the number of reflectors and diffractors increase, by central limit theorem, the sum
S(dB)= I a;i (dB)a pproaches a Gaussian random variable. Hence, the received
signal power can be expressed as:



where S(dB) N ( s , 02) and X ( d B ) N(0, 02). The mean shadowing ps is usually
included into the path loss model and that is why the path loss exponent can be larger
than 2. Hence, without loss of generality, we move the term ps(dB) to the path
loss model and consider only the shadowing effect X ( d B ) . Expressing the received
power in linear scale, we have:



where A, =10 ˣ̷¹º is the power attenuation due to shadowing and is modeled by
the log-normal distribution with standard derivation o (in dB).
Combining the path loss model and the shadowing model, the overall path loss is
given by:



where PL,, is the path loss component obtained from the large scale path loss model
and X ( d B ) is the shadowing component which is modeled as a zero-mean Guassian
random variable with standard derivation 0 in dB.


to be continue...