dc.description.abstract |
Neural networks provide a powerful tool for many signal processing applications,
including blind signal processing. The task of blind equalization is concerned with retrieval
of unknown transmitted sequence, from the output of a channel, while the problem of blind
source separation consists of recovering the unknown sources from their observed mixtures.
In both cases, neither the knowledge of transmitted signals nor any information about the
channel or mixing medium is used.
The present study focuses on the application of neural networks in blind equalization
and source separation. The objective is to obtain better performance in terms of lower mean
square error (MSE), symbol error rate (SER) and inter-symbol interference in case of blind
equalization and to study some new algorithms concerning the problem of source separation.
The multi-layer feedforward neural networks are used for the symbol spaced and fractionally
spaced blind equalization of complex channels and the performance is compared with that
obtained with linear FIR filters. The nonlinear complex activation functions used in the
networks are found to be suitable for M-ary phase shift keying (PSK) and quadrature
amplitude modulation (QAM) signals. The learning rules based on constant modulus
algorithm (CMA) cost functions are obtained for updating the complex valued weights of the
networks. To improve the rate of convergence of the neural blind equalizers, a new cost
function, which is a modified version of the CMA cost function, is proposed. This cost
function enables the application of recursive least squares technique to achieve fast blind
equalization. Performance of these neural blind equalizers is examined in nonstationary
environment and a modified activation function is proposed for better performance.
Applicability of nonlinear activation functions for multi-input/multi-output blind equalization
is also studied. Application of RBF network as a nonlinear estimator is presented for a
Bussgang blind equalizationtechnique using zero-memory nonlinear estimator.
Next, the performance of recurrent structures for blind equalization is examined. For
a channel with distant echoes, the application of two different complex-valued recurrent
structures, namely, a recurrent neural network (RNN) and a multi-layer perceptron (MLP)
network with feedback of previously detected symbols in the output layer, is studied. To
reduce the computational complexity, a simplified learning rule is suggested for the MLPbased
recurrent structure. The concept of feedback is then extended to MIMO blind
equalization in order to achieve lower MSE and symbol error rate.
Nonlinear structures of the neural networks can effectively deal with the situations
where the nonlinearity is explicitly present in the form of nonlinear channels. For the
equalization of nonlinear channels different neural structures viz. MLP, RBF and Functional
Link Artificial Neural Network (FLANN) are used and their performances are compared. A
modification in the FLANN, namely, making the activation function of the FLANN
adaptable, leads to faster convergence of equalizer. Simulations are performed using CMA
and statistical moments-based cost functions for channels with two different nonlinearities.
For blind source separation problem, neural network approaches are, generally, based
on higher order statistics (HOS). HOS enters into the model, through nonlinear functions
used in the learning rules. For separation of sub-Gaussian and super-Gaussian signals,
different nonlinear functions are required. When the observed mixture contains both, sub-
Gaussian as well as super-Gaussian source signals, the choice of nonlinear function becomes
difficult in absence of any knowledge of statistical nature of source signals. To overcome this
problem, a kurtosis-based scheme is suggested for the selection of nonlinear functions. An
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algorithm to obtain the output signals according to the statistical properties of source signals
is also considered.
Finally the application of blind source separation in adaptive beamforming is
considered where the linear nodes of BSS networks are appropriately replaced by nonlinear
nodes. Performance in terms of signal to interference and noise ratio (SINR) of these
beamformers is compared with linear network beamformers. |
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