1 / 17

ICA Based Blind Adaptive MAI Suppression in DS-CDMA Systems

ICA Based Blind Adaptive MAI Suppression in DS-CDMA Systems. Malay Gupta and Balu Santhanam SPCOM Laboratory Department of E.C.E. The University of New Mexico. DSP-WKSP-2004. Motivation. Conventional detector ignores MAI and is near far sensitive.

niveditha
Download Presentation

ICA Based Blind Adaptive MAI Suppression in DS-CDMA Systems

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. ICA Based Blind Adaptive MAI Suppression in DS-CDMA Systems Malay Gupta and Balu Santhanam SPCOM Laboratory Department of E.C.E. The University of New Mexico DSP-WKSP-2004

  2. Motivation • Conventional detector ignores MAI and is near far sensitive. • Optimum detector requires complete knowledge of MAI and has exponential complexity. • Decorrelator requires complete knowledge of MAI. • MMSE detector requires training. • MOE detector requires knowledge about the desired user only. • ICA has been used in various source separation problems. DSP-WKSP-2004

  3. Blind Multiuser Detection • Channel supports multiple users simultaneously. No separation between the users either in time or in frequency domain. • Receiver observers superposition of signal from all the active users in the channel. • Detection process needs to form a decision about the desired user (MISO model) or about all the active users (MIMO model), based only on the observed data. DSP-WKSP-2004

  4. CDMA Signal Model • Composite signal at time t can be expressed as • User signature waveform is given as • Matrix formulation of the chip synchronous signal with AWGN is • b(i) is a bpsk signal DSP-WKSP-2004

  5. Traditional Applications of ICA • Processing of biomedical signals, i.e. ECG, EEG, fMRI, and MEG. • Algorithms for reducing noise in natural images, e.g. Nonlinear Principal Component Analysis (NLPCA). • Finding hidden factors in financial data. • Separation and enhancement of speech or music (few of them were applied to deal with real environments). • Rotating machine vibration analysis, nuclear reactor monitoring and analyzing seismic signals. DSP-WKSP-2004

  6. Independent Component Analysis • Mutual information between random vectors x and y is given as : • Mutual information in terms of Kullback-Leibler distance : • Kullback-Leibler distance of a random vector is defined as. DSP-WKSP-2004

  7. ICA Algorithms • ICA algorithms minimize mutual information (or it’s approximation) to restore independence at the output. • ICA algorithms use SOS for preprocessing the data and HOS for independence. • Fixed Point ICA algorithm is the cost function to be minimized. G(.) is any non quadratic function. DSP-WKSP-2004

  8. Interfering User subspace • Correlation matrix corresponding to the interfering users data, based on snapshots • Performing an eigen-decomposition on gives DSP-WKSP-2004

  9. Projection Operators • Us=[u1, u2, …, uK-1] forms an orthonormal basis for the interfering users. • Us?denotes an orthogonal complement of Us • Projection of a vector x on Us?is given as DSP-WKSP-2004

  10. Code Constrained ICA • Unconstrained ICA algorithms lead to extraction of one user but there is no control over which user is extracted. • Desired detector belongs to a subspace associated with the desired user’s code sequence. • Eigen-structure can be obtained only from the knowledge of the received data. • Indeterminacy can be removed by constraining the ICA detector to desired user’s subspace. DSP-WKSP-2004

  11. Proposed Algorithm • Use the knowledge of the desired user’s code to estimated the interfering user signal subspace. • Use fixed point ICA algorithm to compute the separating vector. • Compute the projection of the separating vector onto the null space of the interfering user subspace. • Apply norm constraint to converge to the desired solution. DSP-WKSP-2004

  12. Performance Metric • To demonstrate the efficacy of the present approach average symbol error probability measure is used. For binary modulation case this is given as :- • Effect of increasing correlation between the users is quantified by the signal to noise and interference ratio (SINR). DSP-WKSP-2004

  13. Effect of Correlation • Eigen-spread quantifies the correlation between active users. • SINR is degrades when eigen-spread or correlation is high. • BER performance depends on the extent of correlation. DSP-WKSP-2004

  14. Performance with two users • Performance of CC-ICA better than MOE detector. • Performance close to that of decorrelator. • Perfect power control is assumed. DSP-WKSP-2004

  15. Performance with five users • Performance better than MOE. • Exhibits performance close to decorrelator. • Five equal energy user channel. DSP-WKSP-2004

  16. No Power Control • Performance comparison in absence of power control. • Number of users in the channel is 5. insensitive to near far problem. • Performance again close to that of the decorrelator. DSP-WKSP-2004

  17. Conclusions • Attempts to remove the inherent indeterminacy problem in ICA computations by constraining the ICA weight vector to lie in the null space of the interfering users. • The detector performance is near-far resistant. • Performance is close to that of decorrelator and better than MOE with significantly lesser side information. DSP-WKSP-2004

More Related