Title :
Direct blind MMSE channel equalization based on second-order statistics
Author :
Shen, Junqiang ; Ding, Zhi
Author_Institution :
Delphi Dalco Electron. Syst., Kokomo, IN, USA
fDate :
4/1/2000 12:00:00 AM
Abstract :
A family of new MMSE blind channel equalization algorithms based on second-order statistics are proposed. Instead of estimating the channel impulse response, we directly estimate the cross-correlation function needed in Wiener-Hopf filters. We develop several different schemes to estimate the cross-correlation vector, with which different Wiener filters are derived according to minimum mean square error (MMSE). Unlike many known sub-space methods, these equalization algorithms do not rely on signal and noise subspace separation and are consequently more robust to channel order estimation errors. Their implementation requires no adjustment for either single- or multiple-user systems. They can effectively equalize single-input multiple-output (SIMO) systems and can reduce the multiple-input multiple-output (MIMO) systems into a memoryless signal mixing system for source separation. The implementations of these algorithms on SIMO system are given, and simulation examples are provided to demonstrate their superior performance over some existing algorithms
Keywords :
MIMO systems; Wiener filters; blind equalisers; correlation theory; least mean squares methods; memoryless systems; statistical analysis; MIMO systems; SIMO systems; Wiener-Hopf filters; channel order estimation errors; cross-correlation function; direct blind MMSE channel equalization; memoryless signal mixing system; minimum mean square error; multiple-input multiple-output systems; performance; second-order statistics; single-input multiple-output systems; source separation; Blind equalizers; Channel estimation; Estimation error; Intersymbol interference; MIMO; Multipath channels; Radiofrequency interference; Signal processing algorithms; Statistics; Wiener filter;
Journal_Title :
Signal Processing, IEEE Transactions on