Abstract:
The use of Orthogonal Frequency Division Multiplexing (OFDM) for high rate
data transmission over fading dispersive channels has been of wide interest in recent
years. OFDM, which already forms a part of several wireless broadcasting standards,
is being viewed as a potential candidate for the design of upcoming 4G systems.
When the intervening channel is doubly selective, the transmitted signal undergoes
impairments due to multipath fading and Doppler spread. In order to facilitate the use
of coherent modulation techniques, the receiver has to employ efficient channel
estimation and equalization schemes. Relying on a block fading channel assumption,
we propose a channel estimation scheme that makes use of cyclic prefix (CP) part of
the OFDM symbols as a training sequence. CP serves the added task of channel
estimation in the proposed system; although it is appended to ease the equalizer
design in OFDM systems, and is normally discarded at the receiver. Channel
estimation is carried out using Kalman filter algorithm and is compared against a class
of adaptive filtering algorithms. The proposed method is shown to outperform
variants of LMS and LS algorithms, which are commonly proposed for tracking timevarying
systems. Comparison with conventional frequency domain pilot based
method also illustrates the gain of the proposed method at low training overhead and
computational complexity.
The use of orthogonal frequency division multiplexing (OFDM) in frequency
selective fading environments has been explored. The use of block fading channel
assumption facilitates the use of OFDM in slowly varying environments. However,
when the channel undergoes rapid time variations, the orthogonality between OFDM
subcarriers is perturbed and inter-carrier interference (ICI) is introduced. In presence
of time selective fading, OFDM is found to be more prone to errors as compared to
single carrier systems. Besides this, obtaining reliable channel estimates in rapidly
fading environments for receiver equalization is a non-trivial task. Channel estimation
and equalization for OFDM are found to be the two major bottlenecks in applying
in
OFDM to systems with large Doppler spread. We have addressed the problem of
channel estimationand ICI suppression by viewingthe system as a state space model.
Kalman filter is employed to estimate the channel; this is followed by a time domain
ICI mitigation filter which maximizes the SINR (signal to interference plus noise
ratio) at the receiver. The method is seen to provide good tracking performance for
moderate to high Doppler spreads at low training overhead. Apart from this, the
performance is validated with suitable bounds on the performance of the system; the
BER performance over a TIV Rayleigh fading channel serves as the lower bound,
whereas the BER performance of the system over a double selective channel, with ICI
as the dominant impairment forms the upper bound. Apart from this, the method
provides significant SINR gain compared with a method that uses pilot based channel
estimation followed by interpolation.
As the order of channel mobility increases, the channel estimation techniques fail
to keep up with the channel variations unless the channel is approximated with a
simple model, (linearly varying or AR-1 model for instance), or a large amount of
training is provided. The use of ICI mitigation schemes for effective equalization is
limited by the need for reliable channel estimates at the receiver. The problem of
channel estimation at high Doppler spread is addressed by relying on generalized
complex exponential basis expansion model (GCE-BEM), which allows the modeling
of each time varying channel tap in a deterministic manner, via a set of time-invariant
(TIV) parameters and a set of complex exponential basis functions. Of the various
kinds of BEM available in literature, the efficacy of GCE-BEM in approximating a
wireless fading channel is demonstrated. Beginning with the development of a CPbased
state-space model, the receiver carries out channel estimation with Kalman
filtering, and equalizes the received OFDM symbols with a time-domain filter that
maximizes the SINR at each received subcarrier. The method attempts to estimate the
BEM parameters from the CP part of received symbols and is highly effective in
tracking channels with a normalized Doppler spread up to 0.2. Simulations show
good MSEE and BER performance with low training overhead, when compared with
a method based on conventional training.
ICI forms the dominant impairment for the performance ofOFDM systems at high
Doppler spreads. Even with perfect channel estimates available at the receiver,
demodulation using FFT, which is simply matched filtering operation, introduces
errors since the subcarriers are not orthogonal. Thus receiver equalization in doubly
selective fading channels, in presence of ICI, is a non-trivial task. The conventional
block equalizer designs in literature, which provide optimal performance in some
sense (MMSE or ZF) incur a prohibitively large computational complexity. The
number of floating-point operations FLOPs is usually a function of the square or cube
of the number of data subcarriers in the OFDM symbol. The time-varying finite
impulse response (TV-FIR) equalizer designs too involve a large computational
overhead. This is a major concern for recent systems which study OFDM at large
carrier frequencies with thousands of subcarriers. We address the problem of
equalization by formulating a state space model. Kalman filter, which is known to
yield the optimum solution to a linear filtering problem, is employed as an equalizer
to estimate the unknown state of the system, which comprises the transmitted
symbols. Besides this, the use of convolutional coding is explored. The proposed
transceiver structure provides good performance at high Doppler spreads, which falls
close to the theoretical performance over a TIV Rayleigh fading channel. Compared
with other equalizers, the method provides a better performance, and incurs a
considerably low computational complexity, which is a function of the number of
discrete channel taps, and is only linear in the number ofOFDM subcarriers.
The concept of Multiple Input Multiple Output (MIMO) systems allows improved
communications by exploiting the multipath structure available between a set of
transmitting and receiving antennas. The systems are not taxing in terms of the two
basic communications resources, namely the transmit power and bandwidth; and this
advantage comes at the cost of increased computational complexity and equipment.
MIMO-OFDM systems have been studied recently as a means of providing high-rate
data transmission over wireless channels. The use of space-time coding (STC) is
known to achieve diversity and/or coding gain in MIMO configurations. However, the
decoding and demodulation of STC-MIMO-OFDM requires channel knowledge at the
receiver, unless differential modulation technique is employed. Semi-blind techniques
like EM algorithm perform well but involve large computational complexity, when
applied directly for MIMO channel estimation. We propose a receiver design for
STC-MIMO-OFDM systems based on semi-blind channel estimation and maximum
likelihood (ML) decoding of STC. Simplification of the conventional EM algorithm
and its coupling with the ML decoder yields an algorithm, which converges within a
few iterations and provides a performance comparable to the case of ideal channel
knowledge. Simulation results show that the system tracks doubly selective channels
with significant accuracy and exhibits good MSEE and BER performance at low to
moderate Doppler spreads.
Unlike space-time coded systems that encode data across transmit antennas over
multiple symbols to exploit coding gain, spatial multiplexing MIMO systems transmit
independent data streams from different antennas, and attempt to achieve higher data
rates through diversity gain. MIMO-OFDM has been recently explored for providing
high speed data communication over fading dispersive channels. Bit interleaved
coded modulation (BICM) architecture with iterative detection and decoding
techniques (IDD) at the receiver has been found to attain good performance (close to
Turbo MIMO) with moderate computational complexity. The scheme however relies
on the availability of perfect channel knowledge at the receiver, for VBLAST
decoding algorithm as well as MMSE interference cancellation. We propose a semiblind
channel estimation scheme for MIMO-OFDM systems based on VBLAST
decoding and modified EM algorithm. The proposed VBLAST-EM channel estimator
is coupled with MMSE based interference cancellation and demapping-decoding
block for improved performance. The technique is seen to converge within a few
iterations and provides a performance comparable to that of the ideal CSI case for
2x2 as well as 4x4 MIMO-OFDM systems.