Mannerkoski, J., Koivunen, V., Taylor, D. P.
Prediction-based adaptive blind equalization: A comparison study
Blind equalization of a communication channel using a
prediction-based Lattice Blind Equalizer (LBE) is considered.
Second order cyclostationary statistics and a single-input
multiple-output (SIMO) model arising from fractional sampling
of the received data are used.
The performance of the LBE algorithm is studied in extensive
simulations where commonly used example channels are employed.
Convergence in the Mean Square Error (MSE) and Symbol Error Rate
(SER) as well as the number of symbols required to open the eye
are studied at different SNRs.
Robustness in the face of channel order mismatch and
channels with common subchannel zeros is considered.
The results are compared to the results obtained by the
fractionally spaced Constant Modulus Algorithm, the Cyclic-RLS
algorithm and the subspace method by Moulines et al.