Abstract:
Significant performance gains are achievable in wireless communication systems using a
Multi-Input Multi-Output (MIMO) communications system employing multiple antennas. This
architecture is suitable for higher data rate multimedia communications. One of the
challenges in building a MIMO system is the tremendous processing power required at the
receiver side. MIMO Symbol detection involves detecting symbol from a complex signal at
the receiver. The existing MIMO detection techniques can be broadly divided into linear,
non-linear and exact detection methods. Linear methods like Zero-Forcing offer low
complexity with degraded Bit Error Rate (BER) performance as compared to non-linear
methods like VBLAST. Non-linear detectors are computationaly not very expansive with
acceptable performance. Exact solutions like Sphere Decoder provide optimal performance
however it suffers from exponentional complexity under certain conditions. The focus in the
early part of this thesis is on non-linear approximate MIMO detectors and an effort has been
made to develop a low complexity near-optimal MIMO detector. Computational Swarm
Intelligence based Meta-heuristics are applied for Symbol detection in a MIMO system. This
approach is particularly attractive as Swarm Intelligence (SI) is well suited for physically
realizable, real-time applications, where low complexity and fast convergence is of absolute
importance. Application of Particle Swarm Optimization (PSO) and Ant Colony Optimization
(ACO) algorithms is studied. While an optimal Maximum Likelihood (ML) detection using an
exhaustive search method is prohibitively complex, we show that the Swarm Intelligence
optimized MIMO detection algorithms gives near-optimal Bit Error Rate (BER) performance
in fewer iterations, thereby reducing the ML computational complexity significantly. In this
thesis novel non-conventional MIMO detection approaches based on Swarm-Intelligence
techniques have been presented.
An effective and practical way to enhance the capacity of MIMO wireless channels is to
employ space-time (ST) coding. Space-time block coding (STBC) is a transmit diversity
technique in which the data stream to be transmitted is encoded in blocks, which are
distributed among multiple antennas and across time. Alamouti’s simple STBC scheme for wireless communication systems uses two transmit antennas and linear maximum-likelihood
(ML) decoder. This system was generalized by Tarokh to an arbitrary number of transmit
antennas by applying the theory of orthogonal designs. In the later part of this thesis a simple
multi-step constellation reduction technique based decoding algorithm that further simplifies
the linear ML detection in Orthogonal Space-Time Block Coded systems is proposed. This
approach reduces the computational complexity of these schemes while presenting the ML
performance.
In addition, Spatial Multiplexing systems using Orthogonal Walsh codes are also studied.
This approach has a potential to reduce the search space to allow efficient symbols detection
in Spatial Multiplexing systems.