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Digital Communications I: Modulation and Coding Course

Spring - 2013 Jeffrey N. Denenberg Lecture 3b: Detection and Signal Spaces. Digital Communications I: Modulation and Coding Course. Last time we talked about:. Receiver structure Impact of AWGN and ISI on the transmitted signal Optimum filter to maximize SNR

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Digital Communications I: Modulation and Coding Course

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  1. Spring - 2013 Jeffrey N. Denenberg Lecture 3b: Detection and Signal Spaces Digital Communications I: Modulation and Coding Course

  2. Lecture 3b Last time we talked about: Receiver structure Impact of AWGN and ISI on the transmitted signal Optimum filter to maximize SNR Matched filter receiver and Correlator receiver

  3. Lecture 4 Receiver job Demodulation and sampling: Waveform recovery and preparing the received signal for detection: Improving the signal power to the noise power (SNR) using matched filter Reducing ISI using equalizer Sampling the recovered waveform Detection: Estimate the transmitted symbol based on the received sample

  4. Lecture 4 Receiver structure Digital Receiver Step 1 – waveform to sample transformation Step 2 – decision making Demodulate & Sample Detect Threshold comparison Frequency down-conversion Receiving filter Equalizing filter Compensation for channel induced ISI For bandpass signals Baseband pulse (possibly distored)‏ Received waveform Sample (test statistic)‏ Baseband pulse

  5. Lecture 4 Implementation of matched filter receiver Bank of M matched filters Matched filter output: Observation vector

  6. Lecture 4 Implementation of correlator receiver Bank of M correlators Correlators output: Observation vector

  7. Lecture 4 Today, we are going to talk about: Detection: Estimate the transmitted symbol based on the received sample Signal space used for detection Orthogonal N-dimensional space Signal to waveform transformation and vice versa

  8. Lecture 4 Signal space What is a signal space? Vector representations of signals in an N-dimensional orthogonal space Why do we need a signal space? It is a means to convert signals to vectors and vice versa. It is a means to calculate signals energy and Euclidean distances between signals. Why are we interested in Euclidean distances between signals? For detection purposes: The received signal is transformed to a received vector. The signal which has the minimum Euclidean distance to the received signal is estimated as the transmitted signal.

  9. Lecture 4 Schematic example of a signal space Transmitted signal alternatives Received signal at matched filter output

  10. Lecture 4 Signal space To form a signal space, first we need to know the inner product between two signals (functions): Inner (scalar) product: Properties of inner product: Analogous to the “dot” product of discrete n-space vectors = cross-correlation between x(t) and y(t)

  11. Lecture 4 Signal space … The distance in signal space is measure by calculating the norm. What is norm? Norm of a signal: Norm between two signals: We refer to the norm between two signals as the Euclidean distance between two signals. = “length” or amplitude of x(t)‏

  12. Lecture 4 Example of distances in signal space The Euclidean distance between signals z(t) and s(t):

  13. Lecture 4 Orthogonal signal space N-dimensional orthogonal signal space is characterized by N linearly independent functions called basis functions. The basis functions must satisfy the orthogonality condition where If all , the signal space is orthonormal. See my notes on Fourier Series

  14. Lecture 4 Example of an orthonormal basis Example: 2-dimensional orthonormal signal space Example: 1-dimensional orthonormal signal space 0 0 0 T t

  15. Lecture 4 Signal space … 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 orthonogal waveforms where . where Vector representation of waveform Waveform energy

  16. Lecture 4 Signal space … Waveform to vector conversion Vector to waveform conversion

  17. Lecture 4 Example of projecting signals to an orthonormal signal space Transmitted signal alternatives

  18. Lecture 4 Signal space – cont’d To find an orthonormal basis functions for a given set of signals, the Gram-Schmidt procedure can be used. Gram-Schmidt procedure: Given a signal set , compute an orthonormal basis 1. Define 2. For compute If let If , do not assign any basis function. 3. Renumber the basis functions such that basis is This is only necessary if for any i in step 2. Note that

  19. Lecture 4 Example of Gram-Schmidt procedure Find the basis functions and plot the signal space for the following transmitted signals: Using Gram-Schmidt procedure: 0 T t 0 -A A 0 T t 0 T t 1 2

  20. Lecture 4 Implementation of the matched filter receiver Bank of N matched filters Observation vector

  21. Lecture 4 Implementation of the correlator receiver Bank of N correlators Observation vector

  22. Lecture 4 Example of matched filter receivers using basic functions Number of matched filters (or correlators) is reduced by 1 compared to using matched filters (correlators) to the transmitted signal. Reduced number of filters (or correlators)‏ 0 T t T t 0 T t 0 1 matched filter 0 T t

  23. Lecture 4 White noise in the orthonormal signal space AWGN, n(t), can be expressed as Noise projected on the signal space which impacts the detection process. Noise outside of the signal space Vector representation of independent zero-mean Gaussain random variables with variance

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