Performance analysis of channel estimation and adaptive equalization in slow fading channel Chen Zhifeng Electrical and Computer Engineering University.

Slides:



Advertisements
Similar presentations
1 Chapter 3 Digital Communication Fundamentals for Cognitive Radio Cognitive Radio Communications and Networks: Principles and Practice By A. M. Wyglinski,
Advertisements

Feedback Reliability Calculation for an Iterative Block Decision Feedback Equalizer (IB-DFE) Gillian Huang, Andrew Nix and Simon Armour Centre for Communications.
Introduction[1] •Three techniques are used independently or in tandem to improve receiver signal quality •Equalization compensates for.
Communication System Overview
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.
S Digital Communication Systems Bandpass modulation II.
The Impact of Channel Estimation Errors on Space-Time Block Codes Presentation for Virginia Tech Symposium on Wireless Personal Communications M. C. Valenti.
CIS 6930 Powerline Communications PHY Layer (c) 2013 Richard Newman.
Wireless Transmission Fundamentals (Physical Layer) Professor Honggang Wang
Channel Estimation in OFDM Systems Zhibin Wu Yan Liu Xiangpeng Jing.
Channel Estimation Techniques Based on Pilot Arrangement in OFDM Systems Sinem Colet, Mustafa Ergen, Anuj Puri, and Ahmad Bahai IEEE TRANSACTIONS ON BROADCASTING,
MARCH 14, 2009 Telecom Engineering Research Lab, INHA University, Korea S.M.R. Islam Channel Estimation Techniques Based on Pilot Arrangement in OFDM Systems.
Optimization of pilot Locations in Adaptive M-PSK Modulation in a Rayleigh Fading Channel Khaled Almustafa Information System Prince Sultan University.
APRIL 2002, PARISIPCN02 M. Ergen A Survey on Channel Estimation Techniques Based on Pilot Arrangement in OFDM Systems by Mustafa Ergen Authors: Sinem Coleri,
Quadrature Amplitude Modulation Forrest Sedgwick UC Berkeley EECS Dept. EE290F October 2003.
1 Channel Estimation for IEEE a OFDM Downlink Transmission Student: 王依翎 Advisor: Dr. David W. Lin Advisor: Dr. David W. Lin 2006/02/23.
Ultra-Wideband Part II David Yee. Overview a.k.a. impulse radio because it sends pulses of tens of picoseconds( ) to nanoseconds (10 -9 ) Duty cycle.
1 Enhancement of Wi-Fi Communication Systems through Symbol Shaping and Interference Mitigation Presented by Tanim M. Taher Date: Monday, November 26 th,
Basics of Small Scale Fading: Towards choice of PHY Narayan Mandayam.
Wireless Communication Channels: Small-Scale Fading
ECE 4730: Lecture #10 1 MRC Parameters  How do we characterize a time-varying MRC?  Statistical analyses must be used  Four Key Characteristics of a.
© 2002 Pearson Education, Inc. Commercial use, distribution, or sale prohibited. Wireless Communications Principles and Practice 2/e T.S. Rapppaport Chapter.
Digital Communications I: Modulation and Coding Course Spring Jeffrey N. Denenberg Lecture 4: BandPass Modulation/Demodulation.
Wireless Communication Channels: Small-Scale Fading
1 Lecture 9: Diversity Chapter 7 – Equalization, Diversity, and Coding.
EE 6332, Spring, 2014 Wireless Communication Zhu Han Department of Electrical and Computer Engineering Class 12 Feb. 24 nd, 2014.
Adaptive modulation schemes for frequency selective fading channels Mª Carmen Aguayo Torres, José Paris Angel, José Tomás Entrambasaguas Muñoz Universidad.
ECE 4371, Fall, 2014 Introduction to Telecommunication Engineering/Telecommunication Laboratory Zhu Han Department of Electrical and Computer Engineering.
1 Secure Cooperative MIMO Communications Under Active Compromised Nodes Liang Hong, McKenzie McNeal III, Wei Chen College of Engineering, Technology, and.
CHAPTER 6 PASS-BAND DATA TRANSMISSION
EE 6332, Spring, 2014 Wireless Communication Zhu Han Department of Electrical and Computer Engineering Class 3 Jan. 22 nd, 2014.
Abdul-Aziz.M Al-Yami Khurram Masood Case Study: Phase III Transmitter Receiver Simulation.
Coding No. 1  Seattle Pacific University Modulation Kevin Bolding Electrical Engineering Seattle Pacific University.
Wireless Communication Technologies 1 Outline Introduction OFDM Basics Performance sensitivity for imperfect circuit Timing and.
EELE 5490, Fall, 2009 Wireless Communications Ali S. Afana Department of Electrical Engineering Class 5 Dec. 4 th, 2009.
NTU Confidential Baseband Transceiver Design for the DVB-Terrestrial Standard Baseband Transceiver Design for the DVB-Terrestrial Standard Advisor : Tzi-Dar.
Abdul-Aziz .M Al-Yami Khurram Masood
05 - Winter 2005 ECE ECE 766 Computer Interfacing and Protocols 1 Modulation Conversion of digital information to analog signals –Example: Telephone lines.
GMSK - Gaussian Minimum Shift Keying
Adaphed from Rappaport’s Chapter 5
Doppler Spread Estimation in Frequency Selective Rayleigh Channels for OFDM Systems Athanasios Doukas, Grigorios Kalivas University of Patras Department.
Digital Modulation Schemes
Combined Linear & Constant Envelope Modulation
Department of Electrical and Computer Engineering
Fading in Wireless Communications Yan Fei. Contents  Concepts  Cause of Fading  Fading Types  Fading Models.
A Simple Transmit Diversity Technique for Wireless Communications -M
CEN 5501C - Computer Networks - Spring UF/CISE - Newman 1 Computer Networks PHY.
Bandpass Modulation & Demodulation Detection
Outline Transmitters (Chapters 3 and 4, Source Coding and Modulation) (week 1 and 2) Receivers (Chapter 5) (week 3 and 4) Received Signal Synchronization.
1 Channel Equalization for STBC- Encoded Cooperative Transmissions with Asynchronous Transmitters Xiaohua (Edward) Li, Fan Ng, Juite Hwu, Mo Chen Department.
Doc.: IEEE Submission John Lampe, Nanotron Technologies, GmbHSlide 1 Project: IEEE P Working Group for Wireless Personal Area Networks (WPANs)
Decision Feedback Equalization for Underwater Acoustic Channels Deepthi Chander ( ) Pallavi Manohar ( )
EEE 441 Wireless And Mobile Communications
Small-Scale Fading Prof. Michael Tsai 2016/04/15.
Mobile Radio Propagation - Small-Scale Fading and Multipath
الخبو صغير المقياس أو(المدى)
Modulation Techniques
Basics of Small Scale Fading: Towards choice of PHY
Digital transmission over a fading channel
TLEN 5830-AWL Advanced Wireless Lab
Advanced Wireless Networks
Fundamentals of Cellular and Wireless Networks
Cellular and Wireless Networks Common Mobile Modulation Techniques
Channel Estimation 黃偉傑.
Channel Estimation in OFDM Systems
Chen Zhifeng Electrical and Computer Engineering University of Florida
Radio Propagation Review
Month Year doc.: IEEE yy/xxxxr0 January 2008
Channel Estimation in OFDM Systems
Chapter 5 Digital Modulation Systems
Presentation transcript:

Performance analysis of channel estimation and adaptive equalization in slow fading channel Chen Zhifeng Electrical and Computer Engineering University of Florida

Outline System Model and Main Techniques Simulation and Experimental Result Possible Improvement Future work My Questions

System Model and Main Techniques Flow chart diagram Build up our model Produce data and set parameters Produce different channels Channel estimation for flat fading Equalization for frequency selective fading

Flow chart diagram

Build up our model For slow fading, Ts<<Tc For flat fading, Ts>>σ τ For frequency selective fading, Ts < σ τ So we get: σ τ <<Ts<<Tc for a slow flat fading channel Ts< σ τ <Tc for slow frequency selective fading channel.

Build up our model --Cont. Two Scenarios: Urban and Suburb Suppose in both environments, there are no dominant stationary signal component, such as light-of-sight path, i.e. Rayleigh fading To simulate GSM: Carrier frequency: fc = 1.8GHz Bandwidth of each channel: 200KHz Symbol period: Ts = 5us for Nyquist pulse

Build up our model --Cont. First scenario – urban environment RMS delay spread σ τ = 10 us (in Rappaport) Suppose walking at: 5km/hr Coherence time Tc = 9/(16*pi*fm) = 21.5ms Ts (5us) < σ τ (10us) < Tc (21.5ms) So, it is a slow frequency selective fading channel

Build up our model --Cont. Second scenario – suburb environment RMS delay spread σ τ = 300 ns (in Rappaport) Suppose on a train at: km/hr V = 20km/hr  fm = fc*V/C = 33.3Hz Coherence time Tc = 9/(16*pi*fm) = 5.4ms σ τ (300ns) < Ts (5us) < Tc (5.4ms) V = 120km/hr  fm = fc*V/C = 200Hz Coherence time Tc = 9/(16*pi*fm) = 900us σ τ (300ns) < Ts (5us) < Tc (900us) So, they are both slow flat fading channel

Produce data and set parameters Support random data and image data Modulation: Phase shift keying (PSK) In our simulation, use QPSK May use Gray coding or not 8% pilot data is inserted preceding source data in each coherence time

Produce different channels AWGN: r = s + n Slow flat Fading r = s.*h + n Slow frequency selective fading r = s.*h + n

Channel estimation for flat fading Estimate the channel phase for PSK modulation Use first 8% data to training the detector Tc/Ts = 20km/hr  86 pilot data Tc/Ts = 120km/hr  14 pilot data Use the mean of phase shift in the pilot to adjust the received signal phase

Equalization for frequency selective fading Use first 8% data to training the equalizer Tc/Ts = 5km/hr  344 pilot data Support linear equalization: LMS & RLS Support training only and decision directed Support reset equalizer weights or not before beginning a new training cycle in next coherence time

Simulation and Experimental Result For AWGN channel For slow flat fading channel For slow frequency selective fading channel Comparison among three channels

For AWGN channel 1)BER of simulation vs theoretical The BER performance of simulation result is closely identical to theoretical BER. 2)Image quality of received vs original the received image is plot at SNR = 5dB, we see there are some random noises in the image. From simulation result, the received image quality is almost the same as original at SNR = 10dB. 3)BER of Image vs random data The correlation between image pixel does not effect the BER in AWGN channel.

For slow flat fading channel 1)BER of simulation vs theoretical the BER performance of simulation result is worse than theoretical BER since we do not know exactly the channel phase information BER performance is improved dramatically in low SNR, while not in high SNR. Since in low SNR, white Gaussian noise dominate the BER error, which can be improved by enhancing SNR; while in high SNR, phase estimation error dominate the BER error, which can not be improved by simply enhancing SNR. 2)BER & constellation of training vs non-training the constellation is plot at SNR = 25dB, we see both the BER performance and constellation are greatly improved by channel phase estimation.

For slow flat fading channel – Cont. 3)Image quality of received vs adjusted the received image is plot at SNR = 25dB, we see that other than some random noise, there is some block noise in the image. This is due to the phase estimation error in a coherence time. 4)BER of Image vs random data The correlation between image pixels does not affect the BER in flat fading channel.

For slow frequency selective fading channel 1)BER of simulation vs theoretical BER performance of simulation result is worse than theoratical BER. The reason is same from above reason addressed in flat fading channel. Different from in flat fading channel, the BER performance is improved dramastically in low SNR, while even degraded in high SNR. This is also reasonable, since in high SNR, phase estimation error and ISI dominate the BER error, and the estimation error will cause even severe ISI., which cause the BER even worse. 2)BER & constellation of training vs non-training the constellation is plot at SNR = 25dB, we see both the BER performance and constellation are greatly improved by channel phase estimation.

For slow frequency selective fading channel – Cont. 3)Reset vs continue training result BER performances of resetting the state of equalizer come from training result of last coherence time is worse than using the result of last coherence time. 4)Training only vs decision directed mode BER is improved by using decision directed mode, since the time-variant property of the channel cause the channel change from estimation result of training data. 5)LMS vs RLS BER performances are almost same for both of them LMS need more training data to converge the equalizer comparing to RLS RLS has more complexity and time consuming.

For slow frequency selective fading channel – Cont. 6)Image quality of received vs original received image is plot at SNR = 25dB, we see that other than some random noise and block noise in the image, there are some overlaps in the image. This is due to the whilte Gaussian noise, phase estimation error in a coherence time, and ISI caused by frequency selective fading channel. 7)BER of Image vs random data The correlation between image pixels does not effect the BER in frequency selective fading channel.

Comparison among three channels 1)For Image comparison in AWGN channel, the image is degraded by random noise; in flat fading channel, the image is degraded by random noise and block noise; in frequency selective fading channel, the image is degraded by random noise, block noise, and overlap. 2)For BER performance comparison BER performance is best in AWGN channel, worse in flat fading channel and worst in frequency selective fading channel. They are exactly as the theoretical analysis.

Possible Improvement In flat fading channel, we training the detector by the pilot data in the head of source data in each coherence time. But the channel is time-variant even during one coherence time, so in our future simulation, we may use different interpolation algo-rithms between different coherence time to improve the esti-mated channel phase and amplitude informance.

Possible Improvement – Cont. We use linear equalizer in our present model. As well know, linear equalizers do not perform well on channels which have deep spectral nulls in the passband. While frequency selective fading channel normally cause the deep spectral nulls, so in our future simulation, we may improve this by add Decision Feedback Equalization (DFE).

Future work In this project, we choose PSK modulation to test the effect of different channels to the received data. So, we only use estimate the channel phase information. We may add more modulation techniques in our model, such as ASK and QAM with different modulation orders. Then we will need to estimation both the channel phase information and amplitude information.

Future work – Cont. In this project, we produce two different scenarios by simulate a GSM carrier frequency and bandwidth, and use pilot data to estimate the channel phase. All of these are simulated in Matlab at present. In our future model, we may integrate our model into Qualnet, which will give a better environment to simulate a wireless network model.

Future work – Cont. In next project, we will integrate the project with last project, i.e. GNU Radio project, and test our algorithm on the practical communication system. We need to do some revision based on the practical system, such as add differential coding due to asynchronization, add pulse shaping, etc. We will add link layer protocol into the practical system, and test our algorithm.