Capacity of Wireless Channels

Slides:



Advertisements
Similar presentations
نیمسال اوّل افشین همّت یار دانشکده مهندسی کامپیوتر مخابرات سیّار (626-40) ظرفیت انتقال اطلاعات.
Advertisements

EE359 – Lecture 8 Outline Capacity of Fading channels Fading Known at TX and RX Optimal Rate and Power Adaptation Channel Inversion with Fixed Rate Capacity.
Sampling and Pulse Code Modulation
EE359 – Lecture 7 Outline Multipath Intensity Profile Doppler Power Spectrum Shannon Capacity Capacity of Flat-Fading Channels Fading Statistics Known.
Enhancing Secrecy With Channel Knowledge
HKUST Robust Optimal Cross Layer Designs for TDD- OFDMA Systems with Imperfect CSIT and Unknown Interference — State-Space Approach based on 1-bit.
Submission May, 2000 Doc: IEEE / 086 Steven Gray, Nokia Slide Brief Overview of Information Theory and Channel Coding Steven D. Gray 1.
Chapter 6 Information Theory
Optimization of pilot Locations in Adaptive M-PSK Modulation in a Rayleigh Fading Channel Khaled Almustafa Information System Prince Sultan University.
Three Lessons Learned Never discard information prematurely Compression can be separated from channel transmission with no loss of optimality Gaussian.
EE360 – Lecture 3 Outline Announcements: Classroom Gesb131 is available, move on Monday? Broadcast Channels with ISI DFT Decomposition Optimal Power and.
Modeling OFDM Radio Channel Sachin Adlakha EE206A Spring 2001.
Collaborative Wireless Networks Computer Laboratory Digital Technology Group Wireless Communications Today Wireless communications today has evolved into.
Introduction to Cognitive radios Part two HY 539 Presented by: George Fortetsanakis.
EE360: Lecture 6 Outline MAC Channel Capacity in AWGN
ECE 776 Information Theory Capacity of Fading Channels with Channel Side Information Andrea J. Goldsmith and Pravin P. Varaiya, Professor Name: Dr. Osvaldo.
5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 1 5. Capacity of Wireless Channels.
HKUST Combined Cross-Layer Design and HARQ for TDD Multiuser systems with Outdated CSIT Rui Wang & Vincent K. N. Lau Dept. of ECE The Hong Kong University.
1 Today, we are going to talk about: Shannon limit Comparison of different modulation schemes Trade-off between modulation and coding.
Matched Filters By: Andy Wang.
Capacity of multi-antenna Gaussian Channels, I. E. Telatar By: Imad Jabbour MIT May 11, 2006.
Noise, Information Theory, and Entropy
Variable Bit Rate Video Coding April 18, 2002 (Compressed Video over Networks: Chapter 9)
EE359 – Lecture 15 Outline Announcements: HW due Friday MIMO Channel Decomposition MIMO Channel Capacity MIMO Beamforming Diversity/Multiplexing Tradeoffs.
ECE 480 Wireless Systems Lecture 14 Problem Session 26 Apr 2006.
Noise and SNR. Noise unwanted signals inserted between transmitter and receiver is the major limiting factor in communications system performance 2.
Wireless Communication Elec 534 Set IV October 23, 2007
Optimization of adaptive coded modulation schemes for maximum average spectral efficiency H. Holm, G. E. Øien, M.-S. Alouini, D. Gesbert, and K. J. Hole.
Multilevel Coding and Iterative Multistage Decoding ELEC 599 Project Presentation Mohammad Jaber Borran Rice University April 21, 2000.
A New Algorithm for Improving the Remote Sensing Data Transmission over the LEO Satellite Channels Ali Payandeh and Mohammad Reza Aref Applied Science.
مخابرات سیّار (626-40) چند مسیری
User Cooperation via Rateless Coding Mahyar Shirvanimoghaddam, Yonghui Li, and Branka Vucetic The University of Sydney, Australia IEEE GLOBECOM 2012 &
EE 6332, Spring, 2014 Wireless Communication Zhu Han Department of Electrical and Computer Engineering Class 11 Feb. 19 th, 2014.
EE359 – Lecture 15 Outline Introduction to MIMO Communications MIMO Channel Decomposition MIMO Channel Capacity MIMO Beamforming Diversity/Multiplexing.
Cross-Layer Optimization in Wireless Networks under Different Packet Delay Metrics Chris T. K. Ng, Muriel Medard, Asuman Ozdaglar Massachusetts Institute.
Digital Communications I: Modulation and Coding Course Term Catharina Logothetis Lecture 12.
Communication System A communication system can be represented as in Figure. A message W, drawn from the index set {1, 2,..., M}, results in the signal.
A Distributed Relay-Assignment Algorithm for Cooperative Communications in Wireless Networks ICC 2006 Ahmed K. Sadek, Zhu Han, and K. J. Ray Liu Department.
Transmission over composite channels with combined source-channel outage: Reza Mirghaderi and Andrea Goldsmith Work Summary STATUS QUO A subset Vo (with.
University of Houston Cullen College of Engineering Electrical & Computer Engineering Capacity Scaling in MIMO Wireless System Under Correlated Fading.
Part 3: Channel Capacity
EE359 – Lecture 12 Outline Combining Techniques
Timo O. Korhonen, HUT Communication Laboratory 1 Convolutional encoding u Convolutional codes are applied in applications that require good performance.
5: Capacity of Wireless Channels Fundamentals of Wireless Communication, Tse&Viswanath 1 5. Capacity of Wireless Channels.
Lecture 2-3: Multi-channel Communication Aliazam Abbasfar.
1 On the Channel Capacity of Wireless Fading Channels C. D. Charalambous and S. Z. Denic School of Information Technology and Engineering, University of.
Raptor Codes Amin Shokrollahi EPFL. BEC(p 1 ) BEC(p 2 ) BEC(p 3 ) BEC(p 4 ) BEC(p 5 ) BEC(p 6 ) Communication on Multiple Unknown Channels.
1 CSCD 433 Network Programming Fall 2013 Lecture 5a Digital Line Coding and other...
Channel Coding Theorem (The most famous in IT) Channel Capacity; Problem: finding the maximum number of distinguishable signals for n uses of a communication.
Midterm Review Midterm only covers material from lectures and HWs
Channel Capacity.
UNIT I. Entropy and Uncertainty Entropy is the irreducible complexity below which a signal cannot be compressed. Entropy is the irreducible complexity.
1 CSCD 433 Network Programming Fall 2016 Lecture 4 Digital Line Coding and other...
EE359 – Lecture 15 Outline Announcements: MIMO Channel Capacity
EE359 – Lecture 14 Outline Practical Issues in Adaptive Modulation
EE359 – Lecture 8 Outline Capacity of Flat-Fading Channels
Advanced Wireless Networks
Advanced Wireless Networks
Advanced Wireless Networks
EE359 – Lecture 15 Outline Announcements: MIMO Channel Capacity
Space Time Coding and Channel Estimation
Independent Encoding for the Broadcast Channel
Wireless Communication Channel Capacity
Wireless Communication Channel Capacity
Qingwen Liu, Student Member, IEEE Xin Wang, Member, IEEE,
EE359 – Lecture 9 Outline Linear Modulation Review
EE359 – Lecture 14 Outline Announcements:
EE359 – Lecture 7 Outline Announcements: Shannon Capacity
EE359 – Lecture 8 Outline Announcements Capacity of Fading channels
EE359 – Lecture 7 Outline Shannon Capacity
Presentation transcript:

Capacity of Wireless Channels ECE 480 Wireless Systems Lecture 13 Capacity of Wireless Channels 10 Apr 2010

Thoughts to Live by To the optimist, the glass is half full To the pessimist, the glass is half empty To the engineer, the glass is twice as big as it needs to be

Channel Side Information at Receiver and Transmitter Transmitter can adapt its transmission relative to this CSI Transmitter will not send bits unless they can be coded correctly Assumptions Optimal power Optimal rate adaptation

Shannon Capacity g [i] is known to both the transmitter and receiver Let s [i] be a stationary and ergodic stochastic process representing the channel state s [i] takes values on a finite set S of discrete memoryless channels C s = capacity of a particular channel s  S p (s) = denote the probability (fraction of time) that the channel is in state s

Capacity of an AWGN channel with average received SNR  Let p () = p ( [i] = ) be the distribution of the received SNR Same as CSI at receiver only – no increase in capacity Must adapt power as well to increase capacity

Let the transmit power P () vary with  subject to an average power constraint, Fading channel capacity with average power constraint

“Time diversity” system with multiplexed input and demultiplexed output Quantize the range of fading values to a finite set [ j: 1  j  N] For each  j we design an encoder – decoder pair for an AWGN channel with SNR  j

The input x j for encoder  j has average power P ( j) and data rate R j = C j C j is the capacity of a time – invariant AWGN channel with received SNR These encoder – decoder pairs correspond to a set of input and output ports associated with each  j

When  [i]   j the corresponding pair of ports are connected through the channel The codewords associated with each  j are multiplexed together for transmission and demultiplexed at the channel output Effectively, the system is reduces the time – varying channel to a set of time – invariant channels in parallel where the j th channel operates only with  [i]   j

 is a parameter that may set limitations To optimize the power allocation P () form the Lagrangian  is a parameter that may set limitations

Take the derivative of the Lagrangian and set to zero Solve for P () with the constraint that () > 0 0 is a “cutoff” value below which no data is transmitted The channel is used at time [i] only if  0   [i] < 

The time – varying data rate corresponding to the instantaneous data rate  is Since  0 is constant, the data rate increases with 

The optimal power allocation policy depends on the fading distribution only through  0 This expression defines  0 Depends only on p () Must be solved numerically

is called a “water – filling” formula Optimum power allocation Amount of power allocated for a given  Shows power allocated to the channel vs.  (t) =  When conditions are good ( large) more power and a higher data rate are fed over the channel

For any power adaptation policy P () the capacity can be achieved with arbitrarily small error probability Cannot exceed the case where power adaptation is optimized

Example 4.4 Assume the same channel as in the previous example, with a bandwidth of 30 KHz and three possible received SNRs:  1 = 0.8333 with p () = 0.1,  2 = 83.33 with p () = 0.5, and  3 = 333.33 with p() = 0.4. Find the ergodic capacity of this channel assuming that both transmitter and receiver have instantaneous CSI. Solution The optimal power allocation is water – filling Need to find  0 such that

Assume that all channel states are used to obtain  0 Assume that  0  min i  0 and see if the resulting cutoff value is below that of the weakest channel

Assume that the weakest state is not used 0.8872 > 0.8333 Inconsistent result Assume that the weakest state is not used Consistent result

Zero – Outage Capacity and Channel Inversion Suboptimal transmitter adaptation scheme Transmitter uses the CSI to maintain a constant received power (inverts the channel fading) Channel then appears to the encoder and decoder as a time – invariant AWGN channel Channel inversion:  = constant received SNR that can be maintained with the constraint

 satisfies the constraint With these definitions, fading channel capacity with channel inversion is the same as the capacity of an AWGN channel with SNR = 

The transmission strategy uses a fixed – rate encoder and decoder designed for an AWGN channel with SNR  Maintains a fixed data rate over the channel regardless of channel conditions (zero – outage capacity) – no channel outage Can exhibit a large data – rate reduction relative to Shannon capacity In Rayleigh fading, C = 0

Example 4.5 Assume the same channel as in the previous example, with a bandwidth of 30 KHz and three possible received SNRs:  1 = 0.8333 with p () = 0.1,  2 = 83.33 with p () = 0.5, and  3 = 333.33 with p() = 0.4. Assuming transmitter and receiver CSI, find the zero – outage capacity of this channel, Solution

Outage Capacity and Truncated Channel Inversion Zero – outage capacity may be much smaller than Shannon capacity Requirement of maintaining a constant data rate in all fading states By suspending transmission in bad fading states (outage channel states) we can maintain a higher constant data rate in the other states Outage capacity: the maximum data rate that can be maintained in all non – outage channel states multiplied by the probability of non – outage

Outage capacity is achieved with a truncated channel inversion policy for power adaptation that compensates for fading only above a certain cutoff fade depth,  0  0 is based on the outage probability Channel is only used when  >  0

The outage capacity associated with a given outage probability P out and corresponding cutoff  0 is The maximum outage capacity is obtained by maximizing outage capacity over the range of possible  0

The maximum outage capacity will still be less than Shannon capacity Truncated channel inversion is a suboptimal transmission strategy The transmit and receive strategies may be easier to implement or have lower complexity Based on AWGN design

Example 4.6 Assume the same channel as in the previous example, with a bandwidth of 30 KHz and three possible received SNRs:  1 = 0.8333 with p () = 0.1,  2 = 83.33 with p () = 0.5, and  3 = 333.33 with p() = 0.4. Find the outage capacity of this channel and associated outage probabilities for cutoff values  0 = 0.84 and  0 = 83.4. Which of these cutoff values yields a larger outage capacity?