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            課程目錄:Simulation of Wireless Communication Systems using MATLAB培訓
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                   Simulation of Wireless Communication Systems using MATLAB培訓

             

             

             

            ? Outcomes of this course
            After the completion of this course, the student should be able to attack many of the currently open research problems in the field of communications engineering as he/she should have acquired at least the following skills:

            ? Map and manipulate complicated mathematical expressions that appear frequently in communications engineering literature

            ? Ability to use the programming capabilities offered by MATLAB in order to reproduce the simulation results of other papers or at least approach these results.

            ? Create the simulation models of self-proposed ideas.

            ? Employ the acquired simulation skills efficiently in conjunction with the powerful MATLAB capabilities to design optimized MATLAB codes in terms of the code run time while economizing the memory space.

            ? Identify the key simulation parameters of a given communication systems, extract them from the system model and study the impact of these parameters on the performance of the system considered.

            ? Course Structure

            The material provided in this course is extremely correlated. It is not recommended that a student attend a level unless he/she attends and deeply understands its prior level in order to ensure the continuity of the acquired knowledge. The course is structured into three levels starting from an introduction to MATLAB programming up to the level of complete system simulation as follows.

            Level 1: Communications Mathematics with MATLAB
            Sessions 01-06

            After the completion of this part, the student will be able to evaluate complicated mathematical expressions and easily construct the proper graphs for different data representation such as time and frequency domain plots; BER plots antenna radiation patterns…etc.

            Fundamental concepts

            1. The concept of simulation
            2. The importance of simulation in communications engineering
            3. MATLAB as a simulation enviroment
            4. About matrix and vector representation of scalar signals in communications mathematics
            5. Matrix and vector representations of complex baseband signals in MATLAB

            MATLAB Desktop

            6. Tool bar
            7. Command window
            8. Work space
            9. Command history

            Variable, vector and matrix declaration

            10. MATLAB pre-defined constants
            11. User defined variables
            12. Arrays, vectors and matrices
            13. Manual matrix entry
            14. Interval definition
            15. Linear space
            16. Logarithmic space
            17. Variable naming rules

            Special matrices

            18. The ones matrix
            19. The zeros matrix
            20. The identity matrix

            Element-wise and matrix-wise manipulation

            21. Accessing specific elements
            22. Modifying elements
            23. Selective elimination of elements (Matrix truncation)
            24. Adding elements, vectors or matrices (Matrix concatenation)
            25. Finding the index of an element inside a vector or a matrix
            26. Matrix reshaping
            27. Matrix truncation
            28. Matrix concatenation
            29. Left to right and right to left flipping

            Unary matrix operators

            30. The Sum operator
            31. The expectation operator
            32. Min operator
            33. Max operator
            34. The trace operator
            35. Matrix determinant |.|
            36. Matrix inverse
            37. Matrix transpose
            38. Matrix Hermitian
            39. …etc

            Binary matrix operations

            40. Arithmetic operations
            41. Relational operations
            42. Logical operations

            Complex numbers in MATLAB

            43. Complex baseband representation of passband signals and RF up-conversion, a mathematical review
            44. Forming complex variables, vectors and matrices
            45. Complex exponentials
            46. The real part operator
            47. The imaginary part operator
            48. The conjugate operator (.)*
            49. The absolute operator |.|
            50. The argument or phase operator

            MATLAB built in functions

            51. Vectors of vectors and matrix of matrix
            52. The square root function
            53. The sign function
            54. The "round to integer" function
            55. The "nearest lower integer function"
            56. The "nearest upper integer function"
            57. The factorial function
            58. Logarithmic functions (exp, ln,log10,log2)
            59. Trigonometric functions
            60. Hyperbolic functions
            61. The Q(.) function
            62. The erfc(.) function
            63. Bessel functions Jo (.)
            64. The Gamma function
            65. Diff, mod commands

            Polynomials in MATLAB

            66. Polynomials in MATLAB
            67. Rational functions
            68. Polynomial derivatives
            69. Polynomial integration
            70. Polynomial multiplication

            Linear scale plots

            71. Visual representations of continuous time-continuous amplitude signals
            72. Visual representations of stair case approximated signals
            73. Visual representations of discrete time – discrete amplitude signals

            Logarithmic scale plots

            74. dB-decade plots (BER)
            75. decade-dB plots (Bode plots, frequency response, signal spectrum)
            76. decade-decade plots
            77. dB-linear plots

            2D Polar plots
            78. (planar antenna radiation patterns)

            3D Plots

            79. 3D radiation patterns
            80. Cartesian parametric plots

            Optional Section (given upon the demand of the learners)

            81. Symbolic differentiation and numerical differencing in MATLAB
            82. Symbolic and numerical integration in MATLAB
            83. MATLAB help and documentation

            MATLAB files

            84. MATLAB script files
            85. MATLAB function files
            86. MATLAB data files
            87. Local and global variables

            Loops, conditions flow control and decision making in MATLAB

            88. The for end loop
            89. The while end loop
            90. The if end condition
            91. The if else end conditions
            92. The switch case end statement
            93. Iterations, converging errors, multi-dimensional sum operators

            Input and output display commands

            94. The input(' ') command
            95. disp command
            96. fprintf command
            97. Message box msgbox

            Level 2: Signals and Systems Operations (24 hrs)
            Sessions 07-14

            The main objectives of this part are as follows

            ? Generate random test signals which are necessary to test the performance of different communication systems

            ? Integrate many elementary signal operations may be integrated to implement a single communication processing function such as encoders, randomizers, interleavers, spreading code generators …etc. at the transmitter as well as their counterparts at the receiving terminal.

            ? Interconnect these blocks properly in order to achieve a communications function

            ? Simulation of deterministic, statistical and semi-random indoor and outdoor narrowband channel models

            Generation of communications test signals

            98. Generation of a random binary sequence
            99. Generation of a random integer Sequences
            100. Importing and reading text files
            101. Reading and playback of audio files
            102. Importing and exporting images
            103. Image as a 3D matrix
            104. RGB to gray scale transformation
            105. Serial bit stream of a 2D gray scale image
            106. Sub-framing of image signals and reconstruction

            Signal Conditioning and Manipulation

            107. Amplitude scaling (gain, attenuation, amplitude normalization…etc.)
            108. DC level shifting
            109. Time scaling (time compression, rarefaction)
            110. Time shift (time delay, time advance, left and right circular time shift)
            111. Measuring the signal energy
            112. Energy and power normalization
            113. Energy and power scaling
            114. Serial-to-parallel and parallel-to-serial conversion
            115. Multiplexing and de-multiplexing

            Digitization of Analog Signals

            116. Time domain sampling of continuous time baseband signals in MATLAB
            117. Amplitude quantization of analog signals
            118. PCM encoding of quantized analog signals
            119. Decimal-to-binary and binary-to-decimal conversion
            120. Pulse shaping
            121. Calculation of the adequate pulse width
            122. Selection of the number of samples per pulse

            123. Convolution using the conv and filter commands
            124. The autocorrelation and cross-correlation of time limited signals
            125. The Fast Fourier Transform (FFT) and IFFT operations
            126. Viewing a baseband signal spectrum
            127. Effect of sampling rate and the proper frequency window
            128. Relation between the convolution, correlation and the FFT operations
            129. Frequency domain filtering, low pass filtering only

            Auxiliary Communications Functions

            130. Randomizers and de-randomizers
            131. Puncturers and de-puncturers
            132. Encoders and decoders
            133. Interleavers and de-interleavers

            Modulators and demodulators

            134. Digital baseband modulation schemes in MATLAB
            135. Visual representation of digitally modulated signals

            Channel Modelling and Simulation

            136. Mathematical modeling of the channel effect on the transmitted signal

            ? Addition – additive white Gaussian noise (AWGN) channels
            ? Time domain multiplication – slow fading channels, Doppler shift in vehicular channels
            ? Frequency domain multiplication – frequency selective fading channels
            ? Time domain convolution – channel impulse response

            Examples of deterministic channel models

            137. Free space path loss and environment dependent path loss
            138. Periodic Blockage Channels

            Statistical Characterization of Common Stationary and Quasi-Stationary Multipath Fading Channels

            139. Generation of a uniformly distributed RV
            140. Generation of a real valued Gaussian distributed RV
            141. Generation of a complex Gaussian distributed RV
            142. Generation of a Rayleigh distributed RV
            143. Generation of a Ricean distributed RV
            144. Generation of a Lognormally distributed RV
            145. Generation of an arbitrary distributed RV
            146. Approximation of an unknown probability density function (PDF) of an RV by a histogram
            147. Numerical calculation of the cumulative distribution function (CDF) of an RV
            148. Real and complex additive white Gaussian noise (AWGN) Channels

            Channel Characterization by its Power Delay Profile

            149. Channel characterization by its power delay profile
            150. Power normalization of the PDP
            151. Extracting the channel impulse response from the PDP
            152. Sampling the channel impulse response by an arbitrary sampling rate, mismatched sampling and delay quantization
            153. The problem of mismatched sampling of the channel impulse response of narrow band channels
            154. Sampling a PDP by an arbitrary sampling rate and fractional delay compensation
            155. Implementation of several IEEE standardized indoor and outdoor channel models
            156. (COST – SUI - Ultra Wide Band Channel Models…etc.)

            Level 3: Link Level Simulation of Practical Comm. Systems (30 hrs)
            Sessions 15-24

            This part of the course is concerned with the most important issue to research students, that is, how to re-produce the simulation results of other published papers by simulation.

            Bit Error Rate Performance of Baseband Digital Modulation Schemes

            1. Performance comparison of different baseband digital modulation schemes in AWGN channels (Comprehensive comparative study via simulation to verify theoretical expressions); scatter plots, bit error rate

            2. Performance comparison of different baseband digital modulation schemes in different stationary and quasi-stationary fading channels; scatter plots, bit error rate(Comprehensive comparative study via simulation to verify theoretical expressions)

            3. Impact of Doppler shift channels on the performance of baseband digital modulation schemes; scatter plots, bit error rate

            Helicopter-to-Satellite Communications

            4. Paper (1): Low-Cost Real-Time Voice and Data System for Aeronautical Mobile Satellite Service (AMSS) – Problem statement and analysis
            5. Paper (2): Pre-Detection Time Diversity Combining with Accurate AFC for Helicopter Satellite Communications – The first proposed solution
            6. Paper (3): An Adaptive Modulation Scheme for Helicopter-Satellite Communications – A performance improvement approach

            Simulation of Spread Spectrum Systems

            1. Typical Architecture of spread spectrum based Systems
            2. Direct sequence spread spectrum based Systems
            3. Pseudo random binary sequence (PBRS) generators
            ? Generation of Maximal length sequences
            ? Generation of gold codes
            ? Generation of Walsh codes

            4. Time hopping spread spectrum based Systems
            5. Bit Error Rate Performance of spread spectrum based systems in AWGN channels
            ? Impact of coding rate r on the BER performance
            ? Impact of the code length on the BER performance

            6. Bit Error Rate Performance of spread spectrum based Systems in multipath Slow Rayleigh Fading Channels with Zero Doppler Shift
            7. Bit error rate performance analysis of spread spectrum based systems in high mobility fading enviroments
            8. Bit error rate performance analysis of spread spectrum based systems in the presence of multi-user interference
            9. RGB image transmission over spread spectrum systems
            10. Optical CDMA (OCDMA) systems
            ? Optical orthogonal codes (OOC)
            ? Performance limits of OCDMA systems ;bit error rate performance of synchronous and asynchronous OCDMA systems

            Ultra wide band SS systems

            OFDM Based Systems

            11. Implementation of OFDM systems using the Fast Fourier Transform
            12. Typical Architecture of OFDM based Systems
            13. Bit Error Rate Performance of OFDM Systems in AWGN channels
            ? Impact of coding rate r on the BER performance
            ? Impact of the cyclic prefix on the BER performance
            ? Impact of the FFT size and subcarrier spacing on the BER performance

            14. Bit Error Rate Performance of OFDM Systems in multipath Slow Rayleigh Fading Channels with Zero Doppler Shift
            15. Bit Error Rate Performance of OFDM Systems in multipath Slow Rayleigh Fading Channels with CFO
            16. Channel Estimation in OFDM Systems
            17. Frequency Domain Equalization in OFDM Systems
            ? Zero Forcing Equalizer
            ? MMSE Equalizers
            18. Other Common Performance Metrics in OFDM Based Systems (Peak – to – Average Power Ratio, Carrier – to – Interference Ratio…etc.)
            19. Performance analysis of OFDM based systems in high mobility fading enviroments (as a simulation project consisting of three papers)
            20. Paper (1): Inter carrier interference mitigation
            21. Paper (2): MIMO-OFDM Systems

            Optimization of a MATLAB Simulation Project

            The aim of this part is to learn how to build and optimize a MATLAB simulation project in order to simplify and organize the overall simulation process. Moreover, memory space and processing speed are also considered in order to avoid memory overflow problems in limited storage systems or long run times arising from slow processing.

            1. Typical Structure of a small scale simulation projects
            2. Extraction of simulation parameters and theoretical to simulation mapping
            3. Building a Simulation Project
            4. Monte Carlo Simulation Technique
            5. A Typical Procedure for Testing a Simulation Project
            6. Memory Space Management and Simulation Time Reduction Techniques
            ? Baseband vs. Passband Simulation
            ? Calculation of the adequate pulse width for truncated arbitrary pulse shapes
            ? Calculation of the adequate number of samples per symbol
            ? Calculation of the Necessary and Sufficient Number of Bits to Test a System

            GUI programming

            Having a MATLAB code free from debugs and working properly to produce correct results is a great achievement. However, a set of key parameters in a simulation project controls the For this reason and more, an extra lecture on "Graphical User Interface (GUI) Programming" is given in order to bring the control over various parts of your simulation project at your hand tips rather than diving in a long source codes full of commands. Moreover, having your MATLAB code masked with a GUI helps presenting your work in a way that facilitates combining multi results in one master window and makes it easier to compare data.

            1. What is a MATLAB GUI
            2. Structure of MATLAB GUI function file
            3. Main GUI components (important properties and values)
            4. Local and global variables

            Note: The topics covered in each level of this course include, but not limited to, those stated in each level. Moreover, the items of each particular lecture are subject to change depending on the needs of the learners and their research interests.

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