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Digital Communications Chapeter 3. Baseband Demodulation/Detection Signal Processing Lab.

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Presentation on theme: "Digital Communications Chapeter 3. Baseband Demodulation/Detection Signal Processing Lab."— Presentation transcript:

1 Digital Communications Chapeter 3. Baseband Demodulation/Detection Signal Processing Lab

2 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Block Diagram of a DCS

3 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Demodulation and Detection  Modeling the received signal

4 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ.

5 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Major Sources of Errors  Inter-Symbol Interference (ISI) Due to the filtering effect of transmitter and receiver, symbols are “smeared”.  Thermal noise (AWGN) Disturbs the signal in an additive fashion (Additive) Has flat spectral density for all frequencies interest (White) Modeled by Gaussian random process (Gaussian Noise)

6 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Demodulation and Detection (cont´d)  Demodulation and Sampling : Waveform recovery and preparing the received signal for detection  Improving SNR using matched filter  Reducing ISI using equalizer  Sampling the recovered waveform  Detection : Estimate the transmitted symbol based on the received sample

7 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Baseband and Bandpass  Bandpass model of detection process is equivalent to baseband model because: The received bandpass waveform is first transformed to a baseband waveform. Equivalence theorem:  Performing bandpass linear signal processing followed by heterodying the signal to the baseband yields the same results as heterodying the bandpass signal to the baseband followed by a baseband linear signal processing.

8 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Likelihood

9 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Signal Space  Inner (scalar) product  Properties of inner product :

10 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Signal Space (cont´d)  Norm properties :  Euclidean distance between two signals :

11 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Signal Space (cont´d)  N-dimensional orthogonal signal space is characterized by N linearly independent functions called basis functions. The basis functions must satisfy the orthogonality condition  If all K i =1, the signal space is orthonormal

12 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Signal Space (cont´d)  Any arbitrary finite set of waveforms where each member of the set is of duration T, can be expressed as a linear combination of N orthonormal waveforms where N≤M

13 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Vectorial Representation

14 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Signals and Noise

15 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. White Noise in Orthonormal Signal Space  AWGN n(t) can be expressed as

16 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. E b /N o : Figure of Merit in Digital Communications  SNR or S/N is the average signal power to the average noise power. SNR should be modified in terms of bit-energy in DCS because : Signals are transmitted within a symbol duration and hence, are energy signal (zero power) A merit at bit-level facilitates comparison of different DCSs transmitting different number of bits per symbol.

17 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Bit Error Probability vs E b /N o

18 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Decision Theory

19 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. MAP and ML

20 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Signal Detection Example

21 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Probability of Bit Error

22 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Matched Filter Receiver  Problem Design the receiver filter h(t) such that the SNR (signal power to average noise power) is maximized at the sampling time.  Solution The optimum filter is the Matched filter, given by which is the time-reversed and delayed version of the conjugate of the transmitted signal

23 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Matched Filter (cont´d) The output SNR of a matched filter depends only on the ratio of the signal energy to the PSD of the white noise at the filter input

24 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Correlator Receiver  The matched filter output at the sampling time can be realized as the correlator output.

25 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Matched Filter and Correlator

26 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Implementation of Matched Filter Receiver

27 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Implementation of correlator receiver

28 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Statistics of The Vector Signals  AWGN channel model : r = s i + n Signal vector s i =(s i1, s i2, … s iN ) is deterministic. Elements of noise vector n=(n 1, n 2, …, n N ) are i, i.d Gaussian random variables with zero-mean and variance N 0 /2. The noise vector pdf is The elements of observed vector r=(r 1, r 2,….r N ) are independent Gaussian random variables. Its pdf is

29 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Graphical Example of ML Detection

30 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Average Probability of Symbol Error  Erroneous decision : For the transmitted symbol m i or equivalently signal vector s i, an error in decision occurs if the observation vector r does not fall inside region Z i. Probability of erroneous decision for a transmitted symbol Probability of correct decision for a transmitted symbol

31 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Avg. Prob. of Symbol Error (cont´d)  Average probability of symbol error : For equally probable symbols :

32 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. BER (Bit Error Rate)  Received signal in Additive White Gaussian Noise Channel   After Matched Filtering & Sampling   where,

33 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Bit Error Probability

34 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Maximum Likelihood Decision

35 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. BER versus Eb/No

36 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Inter-Symbol Interference (ISI)

37 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Inter-Symbol Interference (ISI)  ISI in the detection process due to the filtering effects of the system  Overall equivalent system transfer function creates echoes and hence time dispersion causes ISI at sampling time

38 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Inter-Symbol Interference (ISI) (cont’d)  Nyquist pulses: No ISI at the sampling time  Ideal Nyquist pulse:

39 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Inter-Symbol Interference (ISI) (cont’d)  Nyquist bandwidth constraint  Ideal Nyquist filter is not realizable.  Goals and trade-off in pulse-shaping Reduce ISI Efficient bandwidth utilization Robustness to timing error (small side lobes)

40 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Inter-Symbol Interference (ISI) (cont’d)  Raised-Cosine Filter A Nyquist pulse (No ISI at the sampling time)

41 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Inter-Symbol Interference (ISI) (cont’d)

42 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. 3.3.2 Error-Performance Degradation

43 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Inter-Symbol Interference (ISI) (cont’d)  Square-Root Raised Cosine (SRRC) filter and Equalizer

44 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Types of Equalizers  Transversal filtering : Zero-forcing equalizer: Neglect the effect of noise Minimum mean square error (MSE) equalizer The basic limitation of a transversal equalizer is that it performs poorly on channels having spectral nulls.  Decision feedback Using the past decisions to remove the ISI contributed by them

45 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Transversal Equalizer

46 Signal Processing Lab., http://signal.korea.ac.kr Dept. of Elec. and Info. Engr., Korea Univ. Decision Feedback Equalizer


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