Techniques to control noise and fading

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Presentation transcript:

Techniques to control noise and fading Noise and fading are the primary sources of distortion in communication channels Techniques to reduce noise and fading are usually implemented at the receiver The most common mechanism is to have a receiver filter that can cancel the effects of noise and fading, at least partially Digital technology has made it possible to have adaptive filters

Principle of Equalization Equalization is the process of compensation at the receiver, to reduce noise effects The channel is treated as a filter with transfer function Equalization is the process of creating a filter with an inverse transfer function of the channel Since the channel is a varying filter, equalizer filter also has to change accordingly, hence the term adaptive.

Equalization Model-Signal detection Transmitter Receiver Front End Channel IF Stage Detector Carrier Message signal x(t) Detected signal y(t)

Equalization model-Correction Reconstructed Signal nb(t) Decision Maker Equalizer + Equivalent Noise

Equalizer System Equations Detected signal Time domain:. y(t) = x(t) Equalizer System Equations Detected signal Time domain: y(t) = x(t) * f(t) + nb(t) Frequency domain: Y(f) = X(f) F(f) + Nb(f) Output of the Equalizer ^ d(t) = y(t) * heq(t)

Equalizer System Equations Desired output. ^ Equalizer System Equations Desired output ^ D(f) = Y(f) Heq(f) = X(f) => Heq(f) X(f) F(f) = X(f) => Heq(f) F(f) = 1 Heq(f) = 1/ F(f) => Inverse filter

System Equations Error MSE Error = Aim of equalizer: To minimize MSE error

Equalizer Operating Modes Training Tracking

Training and Tracking functions Training sequence is a known fixed bit pattern sent by the transmitter The user data is sent immediately after the training sequence The equalizer uses training sequence to adjust its frequency response Heq (f) and is optimally ready for data sequence Adjustment goes on dynamically, hence it is adaptive equalizer

Block Diagram of Digital Equalizer w0k w2k w1k wNk ∑ - + ∑ Adaptive Algorithm

Digital Equalizer equations Digital systems use time sampling: t = k T T is the sampling interval Equalizer output:

The error signal updates the equalizer weights Error minimization The adaptive algorithm minimizes error The error signal updates the equalizer weights The updating is continued until convergence

Diversity techniques Diversity is a powerful communications technique for minimizing fading effects It provides wireless link improvement at relatively low cost Unlike equalization, diversity requires no training overhead Practical version is the popular Rake receiver

Fading effects Small Scale fading causes rapid amplitude fluctuations in received wireless signal Fading results in signal loss and distortion

Principle of diversity If we space 2 antennas at 0.5 m, one may receive a null while the other receives a strong signal By selecting the best signal at all times, a receiver can mitigate or reduce small-scale fading. This concept is Space diversity or Antenna Diversity

Space Diversity Concept of using more than one antenna (or branch )for reception Parameters gi = instantaneous SNR G = Average SNR g= Threshold SNR

SNR Improvement Using Diversity M diversity branches Probability [gi > g] Average SNR improvement

Example : Assume that 5 antennas are used to provide space diversity. If average SNR is 20 dB, determine the probability that the instantaneous SNR will be  10 dB. Compare this with the case of a single receiver.

Solution :  = 20 dB => 100 Threshold g = 10 dB = 10 Prob [gi > g] = 1 – (1 – e – g/  )M For M = 5 branches, Prob = 1 – (1 – e – 0.1 )5 = 0.9999 For M = 1 branch (No Diversity), Prob = 1 – (1 – e – 0.1 ) = 0.905

Maximal Ratio Combining (MRC) MRC uses each of the M branches in co-phased and weighted manner such that highest achievable SNR is available If each branch has gain Gi, rM = total signal envelope =

SNR Improvement with MRC

Example : Repeat earlier problem for MRC case

Types of diversity Space Diversity Either at the mobile or base station Polarization Diversity Orthogonal Polarization to exploit diversity Frequency Diversity More than one carrier frequency is used Time Diversity : Information is sent at time spacings

Practical diversity – Rake receiver CDMA system uses RAKE Receiver to improve the signal to noise ratio at the receiver Generally CDMA systems do not require equalization due to multi-path resolution.

Block Diagram Of Rake Receiver α1 M1 M2 M3 α2 r(t) αM Z’ Z Correlator 1  ()dt Correlator 2 Σ Correlator M > < m’(t)

Principle Of Operation M correlators – correlator i is synchronized to strongest multi-path Mi The weights 1 , 2 ,……,M are based on SNR from each correlator output Demodulation and bit decisions are then based on the weighted outputs of M correlators