Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory...

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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

Transcript of Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory...

Page 1: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

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: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

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: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

Background: Sub-Nyquist SamplingMWC system

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Page 4: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

Background: Sub-Nyquist SamplingDigital Processing

Page 5: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

System OutputFull signal reconstruction, or support

recovery using Energy DetectionThe problem: Noise is enhanced by Aliasing

Page 6: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

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: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

Cyclostationary SignalsWide sense Cyclostationary signal: mean and

autocorrelation are periodic with

Page 8: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

Cyclostationary SignalsThe Autocorrelation can be expanded in a

fourier series:

Page 9: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

Cyclostationary SignalsSpecral Correlation Function (SCF):

[Gardner, 1994]

Page 10: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

Cyclostationary SignalsThe Cyclic Autocorrelation function can also

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

[Gardner, 1994]

Page 11: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

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: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

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: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

SCF Reconstruction – Mathematical derivation

Discarding zero elements from :

B

Page 14: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

Algorithm Pseudo Code

Page 15: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

Pseudo Code

Page 16: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

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: Asaf Barel Eli Ovits Supervisor: Debby Cohen June 2013 High speed digital systems laboratory Technion - Israel institute of technology department of Electrical.

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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