Recursive Least Squares based Kalman Hybrid Precoding for Multi-User Millimeter Wave Massive MIMO Systems
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Abstract
Massive MIMO and mmWave are critical enabling technologies in the 5G cellular network.
mmWave has a higher frequency range, which corresponds to a very short wavelength,
resulting in high path loss and blockage in communication systems. To address these
challenges, Integrating mmWave and massive MIMO can improve communication
performance and RLS Kalman Filter-based Hybrid beamforming is the best technique for
minimizing bit error rates, efficiently utilizing energy, and improve spectral efficiency. This
thesis compares the performance of various precoding techniques, including Zero Forcing
(ZF), Minimum Mean Square Error (MMSE), Kalman, Normalized Least Mean Squares
(NLMS) Kalman, Minimum Square Error Fully digital (MSE Fully digital), and Proposed
Recursive Least Squares (RLS) Kalman Hybrid Precoding, using performance metric
parameters such as bit error rate, energy efficiency, and spectral efficiency. For the
simulation purpose Matlab R2018a is used. Simulation outcomes demonstrate that the
Proposed Recursive Least Squares (RLS) Kalman Hybrid Precoding achieved the best
energy efficiency, spectral efficiency performance, and bit error rate with increased
transmitter and receiver antennae and fewer users. The RLS Kalman Hybrid Precoding
improved the spectral efficiency by almost 4.105 bps/Hz at 20dB with ten channel paths
compared to the Zero Forcing (ZF) Hybrid Precoding and almost 3.758 bps/Hz, 3.159
bps/Hz, 2.107 bps/Hz, and 0.57 bps/Hz for the MMSE, Kalman, NLMS Kalman, and MSE
Fully Digital Hybrid Precoding techniques, respectively, under the same conditions.
