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Introduction to RF Planning

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Title: Introduction to RF Planning


1
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2
Introduction to RF Planning
  • A good plan should address the following Issues
  • Provision of required Capacity.
  • Optimum usage of available frequency spectrum.
  • Minimum number of sites.
  • Provision for easy and smooth expansion of the
    Network in future.
  • Provision of adequate coverage.

3
Introduction to RF Planning
  • In general a planning process starts with the
    inputs from the customer. The customer inputs
    include customer requirements, business plans,
    system characteristics, and any other
    constraints.
  • After the planned system is implemented, the
    assumptions made during the planning process need
    to be validated and corrected wherever necessary
    through an optimization process.
  • We can summarize the whole planning process under
    the 4 broad headings
  • Capacity planning
  • Coverage planning
  • Parameter planning
  • Optimization

4
CELLULAR ENGINERING OBJECTIVES
5
COST JUSTIFICATION OF CELLULAR RNP
6
COST JUSTIFICATION OF CELLULAR RNP
7
COST JUSTIFICATION OF CELLULAR RNP
8
COST JUSTIFICATION OF CELLULAR RNP
9
DESIGN CONSTRAINTS
10
LICENSE CONDITIONS
11
MANUFACTURER SPECIFIC PARAMETERS
12
RADIO COMMUNICATION FUNDAMENTALS
13
QUALITY OF SERVICE SPECIFICATIONS
14
QUALITY OF SERVICE SPECIFICATIONS
15
DEFINITION OF COVERAGE QUALITY
16
DEFINITION OF COVERAGE QUALITY
17
BLOCKING RATE ( Grade of Service, GOS )
18
CALL SUCCESS RATE
19
RADIO PLANNING METHODOLOGY
20
Introduction to RF Planning
  • A simple Planning Process Description

Capacity Studies
Business plan. No of Subs. Traffic per Subs. Subs
distribution Grade of service. Available
spectrum. Frequency Reuse. Types of coverage RF
Parameters Field strength studies Available
sites Site survey
Plan verification Quality check Update documents
Implement Plan
Monitor Network
Coverage C/I study Search areas
Optimize Network
Capacity Studies Coverage plan Interference
studies Frequency plans and interference
Studies Antenna Systems BSS parameter
planning Data base documentation of approved
sites Expansion Plans.
Customer Acquires sites
21
Introduction to RF Planning
Implemented Planning Data
Data Acquisition OMC Statistics
A Interface Drive Test
Data Evaluation
Implemented Recommendation
Recommendations Change frequency plan Change
antenna orientation/Down tilt Change BSS
Parameters Dimension BSS Equipment Add new cells
for coverage Interference reduction Blocking
reduction Augment E1 links from MSC to PSTN
22
Cell Planning Aspects
23
The Basic Cell Planning Process
24
Cell Planning Aspects
25
Cell Planning Aspects
26
A typical Power Budget
RF Link Budget UL DL
Transmitting End MS BTS

Tx Rf power output 33 dBm 43 dBm
Body Loss -3 dB 0 dB
Combiner Loss 0 dB 0 Db
Feeder Loss(_at_2 Db/100 M) 0 dB - 1.5 dB
Connector loss 0 dB - 2 Db
Tx antenna gain 0 dB 17.5 dB
EIRP 30 dBm 57 dBm
27
A typical Power Budget
RF Link Budget UL DL
Receiving End MS BTS
Rx sensitivity -107 dBm -102 dBm
Rx antenna gain 17.5 dBm 0 dB
Diversity gain 3 Db 0 dB
Connector Loss - 2 dB 0 dB
Feeder loss - 1.5 dB 0 dB
Interference degradation margin 3 dB 3 Db
Body loss 0 dB -3 dB
Duplexer loss 0 dB 0 dB
Rx Power -121 dBm -96 dBm
Fade margin 4 dB 4 dB
Reqd Isotropic Rx. Power -117 dBm -92 dBm
Maximum Permis. Path los 147 Db 149 dB
28
Summary
29
Urban Propagation Environment
30
Propagation Environment
  • Some Typical values for Building Attenuation

Type of building Attenuation in dBs
Farms, Wooden houses, Sport halls 0-3
Small offices,Parking lots,Independent houses,Small apartment blocks 4-7
Row Houses, offices in containers, Offices, Apartment blocks 8-11
Offices with large areas 12-15
Medium factories, workshops without roof tops windows 16-19
Halls of metal, without windows 20-23
Shopping malls, ware houses, buildings with metals/glass 24-27
31
Propagation Models
  • Classical Propagation models -
  • Log Distance propagation model
  • Longley Rice Model (Irregular terrain model )
  • Okumara
  • Hata
  • Cost 231 Hata (Similar to Hata, for 1500-2000
    MHz band
  • Walfisch Ikegami Cost 231
  • Walfisch-Xia JTC
  • XLOS (Motorola proprietary Model )
  • Bullington
  • Du path Loss Model
  • Diffracting screens model

32
Propagation Models
  • Important Propagation models -
  • Okumara Hata model (urban / suburban areas )( GSM
    900 band )
  • Cost 231 Hata model (GSM 1800 band )
  • Walfisch Ikegami Model (Dense Urban / Microcell
    areas )
  • XLOS (Motorola proprietary Model )

33
Okumara Hata Models
  • In the early 1960 , a Japanese scientist by name
    Okumara conducted extensive propagation tests for
    mobile systems at different frequencies. The test
    were conducted at 200, 453, 922, 1310, 1430 and
    1920 Mhz.
  • The test were also conducted for different BTS
    and mobile antenna heights, at each frequency,
    over varying distances between the BTS and the
    mobile.
  • The Okumara tests were valid for
  • 150-2000 Mhz.
  • 1-100 Kms.
  • BTS heights of 30-200 m.
  • MS antenna height, typically 1.5 m. (1-10 m.)
  • The results of Okumara tests were graphically
    represented and were not easy for computer based
    analysis.
  • Hata took Okumaras data and derived a set of
    empirical equations to calculate the path loss in
    various environments. He also suggested
    correction factors to be used in Quasi open and
    suburban areas.

34
Hata Urban Propagation Model
  • The general path loss equation is given as -
  • Lp Q1Q2Log(f) 13.82 Log(Hbts) -
    a(Hm)44.9-6.55 Log(Hbts)Log(d)Q0
  • Lp L0 10r Log (d) path loss in dB
  • F frequency in Mhz.
  • D distance between BTS and the mobile (1-20
    Kms.)
  • Hbts Base station height in metres ( 30 to 100
    m )
  • A(hm) 1.1log(f) - 0.7 hm - 1.56log(f) - 0.8
    for Urban areas and
  • 3.2log(11.75 hm)2 - 4.97 for dense urban
    areas.
  • Hm mobile antenna height (1-10 m)
  • Q1 69.55 for frequencies from 150 to 1000 MHz.
  • 46.3 for frequencies from 1500 to 2000
    MHz.
  • Q2 26.16 for frequencies from 150 to 1000 MHz.
  • 33.9 for frequencies from 1500 to 2000
    MHz.
  • Q0 0 dB for Urban
  • 3 dB for Dense Urban

35
Path Loss Attenuation Slope
  • The path loss equation can be rewritten as
  • Lp L0 44.9 6.55 26.16 log (f) 13.83
    log (hBTS)-a(Hm)
  • Where L0 is 69.55 26.16 log (f) 13.82 log
    ( HBTS ) A (Hm)
  • Or more conveniently
  • Lp L0 10 log(d)
  • is the SLOPE and is 44.9 6.55
    log(hBTS)/10
  • Variation of base station height can be plotted
    as shown in the diagram.
  • We can say that Lp 10 log(d)
  • typically varies from 3.5 to 4 for urban
    environment.
  • When the environment is different, then we have
    to choose models fitting the environment and
    calculate the path loss slope. This will be
    discussed subsequently.

36
Non line of Sight Propagation
  • Here we assume that the BTS antenna is above roof
    level for any building within the cell and that
    there is no line of sight between the BTS and the
    mobile
  • We define the following parameters with reference
    to the diagram shown in the next slide
  • W the distance between street mobile and
    building
  • Hm mobile antenna height
  • hB BTS antenna height
  • Hr height of roof
  • hB difference between BTS height and roof
    top.
  • Hm difference between mobile height and the
    roof top.

37
Non line of Sight Propagation
  • The total path loss is given by
  • Lp LFSLRFTLMDB
  • LFS Free space loss 32.4420 log(f) 20
    log(d)
  • Where,
  • LFS Free space loss.
  • LRFT Rooptop diffraction loss.
  • LMDB Multiple diffraction due to surrounding
    buildings.
  • LRFT -16.9 10 log(w) 10log(f)
    20log(Hm)L(0)
  • Where
  • hmhr-hm
  • L( ) Losses due to elevation angle.
  • L( ) -10 0.357 ( -00) for 0lt lt35
  • 2.5 0.075 ( -35) for 35lt lt55
  • 4.0 0.114 ( -55) for 55lt lt90

38
Non line of Sight Propagation
  • The losses due to multiple diffraction and
    scattering components due to building are given
    by
  • LMBD k0 ka kd.log(d) kf.log(f) 9.log(w)
  • Where
  • K0 - 18 log (1 hB)
  • Ka 54 0.8 ( hB)
  • Kd 18 15 ( hB/hr)
  • Kf - 4 0.7 f/925) 1 for suburban areas
  • Kf - 4 1.5 f/925) 1 for urban areas
  • W street width
  • hB hB hr
  • For simplified calculation we can assume ka 54
    and kd 18

39
Choice of Propagation Model
Environment Type Model
Dense Urban
Street Canyon propagation Walfish Ikegami,LOS
Non LOS Conditions, Micro cells COST231
Macro cells,antenna above rooftop Okumara-Hata
Urban
Urban Areas Walch-ikegami
Mix of Buildings of varying heights, vegetation, and open areas. Okumara-Hata
Sub urban
Business and residential,open areas. Okumara Hata
Rural
Large open areas,fields,difficult terrain with obstacles. Okumara-Hata
40
Calculation of Mobile Sensitivity.
  • The Noise level at the Receiver side as follows
  • NR KTB
  • Where,
  • K is the Boltzmanns constant 1.38x10-20
    (mW/Hz/0Kelvin)
  • T is the receiver noise temperature in 0Kelvin
  • B is the receiver bandwidth in Hz.

41
Signal Variations
  • Fade margin becomes necessary to account for the
    unpredictable changes in RF signal levels at the
    receiver. The mobile receive signal contains 2
    components
  • A fast fading signal (short term fading )
  • A slow fading signal (long term fading )

42
Probability Density Function
  • The study of radio signals involve actual
    measurement of signal levels at various points
    and applying statistical methods to the available
    data.
  • A typical multipath signal is obtained by
    plotting the RSS for a number of samples.
  • We divide the vertical scale in to 1 dB bin and
    count number of samples is plotted against RF
    level . This is how the probability density
    function for the receive signal is obtained.
  • However, instead of such elaborate plotting we
    can use a statistical expression for the PDF of
    the RF signal given by
  • P(y) 1/2 e - ( - y m )2 / 2 ( )2
  • Where y is the random variable (the measured RSS
    in this case ), m is the mean value of the
    samples considered and y is the STANDARD
    DEVIATION of the measured signal with reference
    to the mean .
  • The PDF obtained from the above is called a
    NORMAL curve or a Gaussian Distribution. It is
    always symmetrical with reference to the mean
    level.

43
Probability Density Function
  • Plotting the PDF

A PLOT OF RSS FOR A NUMBER OF SAMPLES
44
Probability Density Function
  • Plotting the PDF

P(x) ni/N Ni number of RSS within 1 dB bin
for a given level.
NORMAL DISTRIBUTION
45
Probability Density Function
  • A PDF of random variable is given by
  • P(y) ½ e - (y-m)2 / 2( )2
  • Where, y is the variable, m is the mean value and
    is the Standard Deviation of the variable
    with reference to its mean value.
  • The normal distribution (also called the Gaussian
    Distribution ) is symmetrical about the mean
    value.
  • A typical Gaussian PDF

46
Probability Density Function
  • The normal Distribution depends on the value of
    Standard Deviation
  • We get a different curve for each value of
  • The total area under the curve is UNITY

47
Calculation of Standard Deviation
  • If the mean of n samples is m, then the
    standard deviation is given by
  • Square root of (x1-m)2 ..( xn-m)2
    /(n-1)
  • Where n is the number of samples and m is the
    mean.
  • For our application we can re write the above
    equation as
  • Square root of RSS1-RSSMEAN)2..(RSSN-RSS
    MEAN)2/(N-1)

48
Confidence Intervals
  • The normal of the Gaussian distribution helps us
    to estimate the accuracy with which we can say
    that a measured value of the random variable
    would be within certain specified limits.
  • The total area under the Normal curve is treated
    as unity. Then for any value of the measured
    value of the variable, its probability can be
    expressed as a percentage.
  • In general, if m is mean value of the random
    variable within normal distribution and is the
    Standard Deviation, then,
  • The probability of occurrence of the sample
    within m and any value of x of the variable is
    given by
  • P
  • By setting (x-m)/ z, we get,
  • P

49
Confidence Intervals
  • The value of P is known as the Probability
    integral or the ERROR FUNCTION
  • The limits (m n )are called the confidence
    intervals.
  • From the formula given above, the probability
  • P(m- ) lt z lt (m ) 68.26 this means we
    are 68.34 confident.
  • P(m- ) lt z lt (m ) 95.44 this means
    we are 95.44 confident
  • P(m- ) lt z lt (m ) 99.72 this means
    we are 99.72 confident.
  • This is basically the area under the Normal Curve.

50
The Concept of Normalized Standard Deviation
  • The probability that a particular sample lies
    within specified limits is given by the equation
  • P
  • We define z (x-m)/ as the Normalized Standard
    Deviation.
  • The probability P could be obtained from Standard
    Tables (available in standard books on statistics
    ).
  • A sample portion of the statistical table is
    presented in the next slide..

51
Calculation of Fade Margin
  • To calculate the fade margin we need to know
  • Propagation constant(?)
  • gtFrom formulae for the Model chosen
  • gtOr from the drive test plots
  • Area probability
  • gtA design objective usually 90
  • Standard Deviation(?)
  • gtCalculated from the drive test results using
    statistical formulae or
  • gtAssumed for different environments.
  • To use Jakes curves and tables.

52
Calculation of Edge Probability and Fade Margin
  • From the values of ? and ? we calculate
  • ? ? / ?
  • Find edge probability from Jakes curves for a
    desired coverage probability, against the value
    of on the x axis.
  • Use Jakes table to find out the correlation
    factor required
  • Look for the column that has value closest to the
    edge probability and read the correlation factor
    across the corresponding row.
  • Multiply ? by the correction factor to get the
    Fade Margin.
  • Add Fade Margin to the RSS calculated from the
    power budget

53
Significance Of Area and Edge Probabilities
  • Required RSS is 85 dBm.
  • Suppose the desired coverage probability is 90
    and the edge probability from the Jakes curves is
    0,75
  • This means that the mobile would receive a signal
    that is better than 85 dBm in 90 of the area
    of the cell
  • At the edges of the cell, 75 of the calls made
    would have this minimum signal strength (RSS).

54
In Building Coverage
  • Recalculate Fade Margin.
  • gtInvolves separate propagation tests in
    buildings.
  • gtCalculate and for the desired coverage (
    say 75 or 50 )
  • gtUse Jakes Curves and tables to calculate Fade
    Margin.
  • gtOften adequate data is not available for
    calculating the fade margin accurately.
  • gtInstead use typical values.
  • Typical values for building penetration loss

Area 75 coverage 50 coverage
Central business area lt 20 dB lt 15 dB
Residential area lt 15 dB lt 12 dB
Industrial area lt 12 dB lt 10 dB
In Car 6 to 8 dB 6 to 8 dB
55
Fuzzy Maths and Fuzzy Logic
  • The models that we studied so far are purely
    empirical.
  • The formulas we used do not all take care of all
    the possible environments.
  • Fuzzy logic could be useful for experienced
    planners in making right guesses.
  • We divide the environment into 5 categories viz.,
    Free space, Rural, Suburban, urban, and dense
    urban.
  • We divide assign specific attenuation constant
    values to each categories , say
  • Fuzzy logic helps us to guess the right value for
    , the attenuation constant for an environment
    which is neither rural nor suburban nor urban but
    a mixture, with a strong resemblance to one of
    the major categories.
  • The following simple rules can be used
  • Mixture of Free space and Rural
  • Mixture of Rural and Suburban
  • Mixture of Suburban and Urban
  • Mixture of Urban and Dense urban

56
Cell Planning and C/I Issues
  • The 2 major sources of interference are
  • Co Channel Interference.
  • Adjacent Channel Interference.
  • The levels of these Interference are dependent on
  • The cell radius
  • The distance cells (D)
  • The minimum reuse distance (D) is given by
  • D ( 3N )½ R
  • Where N Reuse pattern
  • i2 i j j2
  • Where I j are integers.

57
Cell Planning and C/I Issues
R
D
58
Cell Planning and C/I Issues
59
Cell Planning and C/I Issues
60
Cell Planning and C/I Issues
61
Frequency Planning Aspects
62
Frequency Planning Aspects
63
Frequency Planning Aspects
64
Frequency Planning Aspects
65
Frequency Planning Aspects
66
Antenna Considerations
67
Tackling Multipath Fading
68
Diversity Antenna Systems
69
Diversity Antenna Systems
70
Diversity Antenna Systems
71
Diversity Antenna Systems
72
General Antenna Specifications
73
General Antenna Specifications
74
RADIO PLANNING METHODOLOGY
75
RADIO PLANNING METHODOLOGY
76
COVERAGE PLANNING STRATEGIES
77
RADIO PLANNING METHODOLOGY
78
METHODOLOGY EXPLAINED
79
METHODOLOGY EXPLAINED
80
METHODOLOGY EXPLAINED
81
RF Planning Process
82
RF Planning Process
83
RF Planning Process
84
RF Planning Process
85
RF Planning Process
86
RF Planning Surveys
87
RF Propagation Test Kits
88
RF Planning Tool
89
RF Planning Tool
90
RF Planning Tool
91
Model Calibration
92
Link Budget and other Steps
93
Capacity Calculations
94
Fine Tune The Plan
95
Site Selection
96
Site Selection
97
Extending Cell Range
98
Extending Cell Range
99
Extending Cell Range
100
Extending Cell Range
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