cyclostationary feature detection of sub- nyquist sampled sparse signals

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Cyclostationary Feature Detection of Sub-Nyquist Sampled Sparse Signals Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical Engineering

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Technion - Israel institute of technology department of Electrical Engineering. High speed digital systems laboratory. Cyclostationary Feature Detection of Sub- Nyquist Sampled Sparse Signals. Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013. Project Motivation. - PowerPoint PPT Presentation

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Page 1: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Cyclostationary Feature Detection of Sub-Nyquist Sampled Sparse Signals

Asaf Barel Eli Ovits

Supervisor: Debby CohenJune 2013

High speed digital systems laboratoryTechnion - Israel institute of technologydepartment of Electrical Engineering

Page 2: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Project MotivationCommunication Signals are wideband with

very high Nyquist rateCommunication Signals are Sparse, therefore

subnyquist sampling is possiblePossible application: Cognitive RadioCurrent system suffers from low noise

robustness Project goal: implementing algorithm for

cyclic detection with high noise robustness

Page 3: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Background: Sub-Nyquist SamplingMWC system

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Page 4: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Background: Sub-Nyquist SamplingDigital Processing

Page 5: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

System OutputFull signal reconstruction, or support

recovery using Energy DetectionThe problem: Noise is enhanced by Aliasing

Page 6: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Energy Detection: simulation

SNR = 10 dB SNR = -10 dBOriginal support: 24 35 117 135 217 228

Reconstructed support: 24 87 107 217 232 168 228 165 145 35 20 84

Original support is not contained!

Signal:

Original support:8 72 90 162 180 244

Reconstructed support: 90 180 244 21 200 241 162 72 8 231 52 11

Original support is contained!

Page 7: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Cyclostationary SignalsWide sense Cyclostationary signal: mean and

autocorrelation are periodic with

Page 8: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Cyclostationary SignalsThe Autocorrelation can be expanded in a

fourier series:

Page 9: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Cyclostationary SignalsSpecral Correlation Function (SCF):

[Gardner, 1994]

Page 10: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Cyclostationary SignalsThe Cyclic Autocorrelation function can also

be viewed as cross correlation between frequency modulations of the signal:

[Gardner, 1994]

Page 11: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Cyclic Detection Signal Model: Sparse, Cyclostationary signal.

No correlation between different bands.

The goal: blind detection

Support Recovery: instead of simple energy detection, we will use our samples to reconstruct the SCF, and then recover the signal’s support.

Page 12: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

SCF ReconstructionUsing the latter definition for cyclic

Autocorrelation, we can get Autocorrelation from a signal:

For a Stationary Signal

For a Cyclostationary Signal

Page 13: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

SCF Reconstruction – Mathematical derivation

Discarding zero elements from :

B

Page 14: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Algorithm Pseudo Code

Page 15: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Pseudo Code

Page 16: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Further ObjectivesMATLAB implementation of the Algorithm

Simulation of the new system, including Comparison to the Energy Detection system (Receiver operating characteristic (ROC) in different SNR scenarios )

Comparison to Cyclic detection at Nyquist rate (mean square error )

Page 17: Cyclostationary Feature Detection of Sub- Nyquist  Sampled Sparse Signals

Gantt Chart

Adaptation of exisiting algorithm to the cyclic case

Implementing MATLAB code for SCF reconstruction

Adding signal detecion from the SCF

Simulations and comparison

Optional: Implementing cyclic detection in Hardware simulating enviroument

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