1 / 14

Bo Wu

Resolving and Parameter Estimation of Non-Synchronous Sampling Pulse Signals Based on Taylor Series Expansion. Bo Wu National Mobile Communications Research Laboratory Southeast University, Nanjing 210096, P.R. China Email : Wuboyx@gmail.com. Introduction.

nevaeh
Download Presentation

Bo Wu

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Resolving and Parameter Estimation of Non-Synchronous Sampling Pulse Signals Based on Taylor Series Expansion Bo Wu National Mobile Communications Research Laboratory Southeast University, Nanjing 210096, P.R. China Email: Wuboyx@gmail.com

  2. Introduction • Overlapped pulse signals detection in white noise has been widely discussed, the well-known matched filter maximizes signal-to-noise ratio in the presence of Gaussian wideband noise. • To reduce the effects of masking nearby targets, Many efforts have been made. In general, there are two kinds of approaches, one widely accepted approach is to adopt different kinds of waveforms, Another type of approach is different estimation strategies.

  3. Introduction • Non-synchronous sampling is shown in this figure.

  4. Algorithm description: PE • Considering the non-synchronous sampling, the receive signal can be represented as • By executing Taylor series expansion, we have

  5. Algorithm description • The performance of parameter estimation with derivative is acceptable, Better performance is achieved by using higher derivatives but more consumption and calculation is needed. Simplified, we have • Expressing the above equation in vector form, we get

  6. Algorithm description • Our parameter estimation procedure is listed as follows • ignoring the noise , we get the below tentative estimates • Without considering the noise and using the tentative, we get • From the above equation, we obtain

  7. Algorithm description • Our parameter estimation procedure is listed as follows • Refining by using the estimated • The sampling phase offsetthe amplitudecan be achieved thought Grid searching instead of our tentative setting and calculating, but the dramatic increment in the computational complexity as the number of targets increasing makes it hard to be implemented.

  8. Modified CLEAN Algorithm for Discrete Point Targets • The proposed algorithm tentatively chooses the strongest target signal and estimates the parameter of the chosen target by the presented parameter estimation method based on Taylor series, then recovers the echo using the tentative estimator and subtracts it from original received signal. Without disturbing from the strongest echo, the output from estimator about rest targets' parameter is more reliable and accurate. Canceling the weaker echoes recovered using the above estimator, the strongest echo's parameter can be accurate.

  9. Modified CLEAN Algorithm for Discrete Point Targets • The novel method is detailed as follows: • Save the originally received signal in the proceeding window as OS and the initial signal is SC <= OS, • Get output from the conventional matched filter, find the maximum peak and its integer time delay index , • Estimate timing phase and amplitudes of the strongest signal • Recover the strongest signal , cancel it and update • Using matched filter processing , repeat steps (3) - (4), until all observed target echoes are detected and canceled fromand form the table of the targets' parameters, • Cancel all targets' echo fromusing the parameters' table except the strongest signal , repeat steps (3) - (5) until the estimation of parameters can't be improved obviously, • Output

  10. Computational Complexity analysis • the total consumption can be expressed as follows: • Multiplication: • Addition:

  11. Simulation Results • This figure shows how our algorithm distinguishes the two adjacent targets. The signal amplitude from the stronger target is a little greater than another target.

  12. Simulation Results • The effect of different iterations on performance is given in this figure.

  13. Simulation Results • The performance of the algorithms is been raised as the increasing of time interval. Beyond 1.1 time of symbol length, the simulation's statistics are primarily affected by SNR instead of the targets’ distance.

  14. Conclusion • Non-synchronous sampling inevitably exists because of the low SNR and persistently sampling time. Most of the exiting algorithms fail to separate the overlapped pulse signals in non-synchronous sampling. We propose a Taylor series based parameter estimation method which combines with the CLEAN. Simulation results demonstrate that our proposed algorithm can succeed in distinguishing two adjacent similar-power targets. Simultaneously, the proposed algorithm is effective in eliminating the sidelobe effect of nearby targets.

More Related