Uniform Linear Array based Spectrum Sensing from sub-Nyquist Samples

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Presentation transcript:

Uniform Linear Array based Spectrum Sensing from sub-Nyquist Samples Or Yair, Shahar Stein Supervised by Deborah Cohen and Prof. Yonina C. Eldar December 7, 2015

Goal: Perfect blind signal reconstruction from sub-Nyquist samples Signal Model Multiband sparse signal Each transmission 𝑠 𝑖 corresponds to a carrier frequency, 𝑓 𝑖 Each transmission 𝑠 𝑖 is narrow band of maximum bandwidth 𝐵 All transmissions are assumed to have identical and known angle of arrival 𝜃 ≠ 90 𝑜 Goal: Perfect blind signal reconstruction from sub-Nyquist samples

We show that the a sufficient condition is 𝑴+𝟏 samplers Proposed Algorithm We suggest a ULA based system Each sensor of the array, followed by one branch of the MWC with the same periodic function Each sampler is of rate 𝐵 From the samples we can form a classic DOA equation 𝒙=𝑨𝒘 and use known techniques to obtain 𝒘 We show that the a sufficient condition is 𝑴+𝟏 samplers

System Description The received signal at the 𝑛’th sensor: 𝑢 𝑛 𝑡 ≈ 𝑖=1 𝑀 𝑠 𝑖 𝑡 𝑒 𝑗2𝜋 𝑓 𝑖 (𝑡+ 𝜏 𝑛 ) The mixed signal after multiplying with periodic function: 𝑌 𝑛 𝑓 = 𝑙=−∞ ∞ 𝑐 𝑙 𝑖=1 𝑀 𝑆 𝑖 𝑓− 𝑓 𝑖 −𝑙 𝑓 𝑝 𝑒 𝑗2𝜋 𝑓 𝑖 𝜏 𝑛 𝐵 𝑆 2 (𝑓− 𝑓 2 ) 𝑆 1 (𝑓− 𝑓 1 ) 𝑆 3 (𝑓− 𝑓 3 )

The unknown frequencies are held at the relative accumulated phase System Description The filtered signal at the baseband: 𝑌 𝑛 𝑓 = 𝑖=1 𝑀 𝑆 𝑖 𝑓 𝑒 𝑗2𝜋 𝑓 𝑖 𝜏 𝑛 , 𝑆 𝑖 𝑓 = 𝑙=− 𝐿 0 𝐿 0 𝑐 𝑙 𝑆 𝑖 𝑓− 𝑓 𝑖 −𝑙 𝑓 𝑝 The sampled signal: 𝑋 𝑛 𝑒 𝑗2𝜋𝑓 𝑇 𝑠 = 𝑖=1 𝑀 𝑊 𝑖 𝑒 𝑗2𝜋𝑓 𝑇 𝑠 𝑒 𝑗2𝜋 𝑓 𝑖 𝜏 𝑛 𝑤 𝑖 𝑘 = 𝑠 𝑖 (𝑘 𝑇 𝑠 ) The unknown frequencies are held at the relative accumulated phase

Sufficient condition on 𝒇 𝒔 ,𝒇 𝒑 : Sampling Scheme Modified MWC sampling chain. All sensors use the same periodic function with period 𝑓 𝑝 Single sensor output: Sufficient condition on 𝒇 𝒔 ,𝒇 𝒑 : 𝒇 𝒔 ≥ 𝒇 𝒑 ≥𝑩

Sampling Scheme Our measurements The sampling scheme is simpler than the MWC, since the same sequence can be used in all cannels

Basic Equation Goal: estimate 𝒇 and 𝒘 Similar to classic DOA equation Source Signal vector is scaled and cyclic-shifted | | | 𝒂 𝑓 1 𝒂 𝑓 2 𝒂 𝑓 3 | | | 𝑨 𝑁×𝑀 𝑿 𝑒 𝑗2𝜋𝑓 𝑇 𝑠 𝑾 𝑒 𝑗2𝜋𝑓 𝑇 𝑠 Goal: estimate 𝒇 and 𝒘

Reconstruction Steps Estimate all frequencies 𝑓 𝑖 . Reconstruct the steering matrix 𝑨 𝒇 . Calculate 𝒘= 𝑨 † 𝒙 Uniquely recover 𝒔 from 𝒘.

Achievable sampling rate: 𝑴+𝟏 𝑩 Theorem For multiband signal (as presented), If the following conditions hold: Minimal number of sensors: 𝑀+1 𝑓 𝑝 =𝑓 𝑠 > 𝐵 𝑑< 𝑐 𝑓 𝑁𝑌𝑄 p 𝑡 = 𝑙=−∞ ∞ 𝑐 𝑙 𝑒 2𝜋𝑙 𝑓 𝑝 𝑡 , 𝑐 𝑙 ≠0,∀𝑙: 𝑙 𝑓 𝑝 ≤ 𝑓 𝑁𝑌𝑄 2 Then: 𝑓 𝑖 , 𝑠 𝑖 𝑓 can be perfectly reconstructed Achievable sampling rate: 𝑴+𝟏 𝑩

Simulations For the ULA based system 2 reconstruction methods were tested: ESPRIT – analytic method based on SVD MMV – CS method based on OMP algorithm The performance were compared against the MWC Both systems used the same amount of samplers At the ULA based system – the number of sensors At the MWC – the number of branches

Simulations Performance against different number of sensors For the MWC system: the amount of branches 10dB SNR 400 Number of Snapshots 3 Number of Signals 𝟓𝟎𝑴𝑯𝒛 𝑩 𝟏𝟎𝑮𝑯𝒛 𝒇 𝑵𝒀𝑸 𝒇 𝒔

Simulations ⇓ Sampling Rate: 𝟓𝟎𝟎𝑴𝑯𝒛 Performance against different SNR 10 Number of Sensors 400 Number of Snapshots 3 Number of Signals 𝟓𝟎𝑴𝑯𝒛 𝑩 𝟏𝟎𝑮𝑯𝒛 𝒇 𝑵𝒀𝑸 𝒇 𝒔 ⇓ Sampling Rate: 𝟓𝟎𝟎𝑴𝑯𝒛

Summary We suggest an ULA based system for the spectrum sensing problem In each sensor of the array, we sample using one branch of the MWC with the same periodic function We relate the unknown parameter and signal to the sub-Nyquist samples We show that a sufficient condition for perfect recovery are 𝑴+𝟏 sensors, each sampling at rate 𝑩 We perform parameter estimation out of the DOA equation

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