Analysis of Optimal and Suboptimal Discrete-Time Digital Communications Receivers Clemson University SURE Program 2005 Justin Ingersoll, Prof. Michael.

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Analysis of Optimal and Suboptimal Discrete-Time Digital Communications Receivers Clemson University SURE Program 2005 Justin Ingersoll, Prof. Michael Pursley Discrete Time Receiver Objective is to take multiple uncorrelated samples of each symbol period and use them to determine which symbol was sent. A tradeoff exists between the number of uncorrelated samples possible and the bandwidth of the filter used. As the filter is narrowed, the noise autocorrelation function spreads out, resulting in fewer opportunities for independent samples. May be forced to take correlated samples as a result. Take N samples in T seconds, define t 0 as T/N Summer: takes N samples and compares sum to threshold Correlator: multiplies R by its expected value and compares to a threshold, improving on the summer by giving more weight to samples with more signal power. LLR: performs log-likelihood ratio test and compares to a threshold, improving on the correlator by taking into account the relationship between the samples via the correlation matrix. System with RC Low Pass Filter System with Summer System with Discrete Time Correlator System with Log-Likelihood Ratio Test System uses a continuous-time RC low-pass filter and one of three discrete- time receivers. Objective is to compare relative performance of the three receivers. Signal Set Signal for Binary 0 All examined systems use binary antipodal signaling where: s 0 (t) = -s 1 (t) Basic waveform is a pulse with amplitude A and duration T: s 0 (t)=Ap T (t) Likelihood Ratio Test Detector design that utilizes the conditional probabilities of seeing a 0 or a 1 given a vector R of samples. The ratio of the probabilities is taken and tested against a threshold of 1 (choose s 0 if less and s 1 if greater). The log-likelihood ratio test is a variant that takes the logs of the ratio and threshold. Can be simpler to use in some situations. Define sample vector R and covariance matrix K (built from R x (  )). System with Ideal Low Pass Filter Autocorrelation Function Filtered White Noise System uses ideal low pass filter with bandwidth (B) set to ensure that N uncorrelated samples are possible: t0 = T\N = 1\2B, B = N\2T System Parameters Error Probability Calculation System Block Diagram System assumption that the ideal LPF does not distort the signal is invalid for narrow filter bandwidth. Error probability does not depend on N, only A, T, and N 0, therefore, for uncorrelated samples, taking extra samples does not improve probability of correct detection. System Parameters Receivers take N samples in T seconds. RC is chosen as a compromise between the optimal values for different values of N. Note that R x (  ) is a function of N 0 and RC and  b is the expected value of the sample vector for bit b. Sample Times Two values of N are examined. For N=10, the samples are evenly spaced, centered at 0.5. For N=3, the sample are evenly spaced in the second half of the signal period. Note that there is much more power in the signal during the second half of the signal period. P(e) Curves for N=10 Error probability curves for N=10. Note that LLR is best, followed by Correlator and then Summer. Also, curves are widely spaced because samples taken early in sample period have relatively low signal power and are more affected by noise. P(e) Curves for N=3 Error probability curves for N=3. Note that curves are in the same order, but much closer together. This is due to the fact that the 3 samples all have relatively high signal power and thus are less affected by noise in the channel. LLR Sensitivity to N0 LLR dependence on N 0 would require more complicated receiver, but not in this case. Changing N 0 in this system only multiplies K matrix by a scalar, which does not affect LLR since a threshold of 0 is used. LLR only depends on ratios of elements of K, not actual magnitudes. Background Ideal Continuous Time Receiver Discrete time receivers are useful because they can be implemented in software defined radios, DSPs, and other digital hardware rather than in traditional analog or continuous time systems. All of the examined systems use the same signal set and assume an additive white Gaussian noise channel with signal to noise ratio E b /N 0 where E b is the bit energy and N 0 /2 is the power spectral density of the noise process. In continuous time, the ideal receiver uses a filter matched to the signal set. This results in the error probability shown. The discrete time receivers examined attempt to approach this performance level. Error Probability