Title of article
A Novel Detector based on Compressive Sensing for Uplink Massive MIMO Systems
Author/Authors
Amiri, Mojtaba School of Electrical and Computer Engineering - College of Engineering - University of Tehran, Tehran, Iran , Akhavan, Amir Department of Electrical and Computer Engineering - Isfahan University of Technology, Isfahan, Iran
Pages
8
From page
249
To page
256
Abstract
Massive multiple-input multiple-output is a promising technology in future communication networks where a large number
of antennas are used. It provides huge advantages to the future communication systems in data rate, the quality of services,
energy efficiency, and spectral efficiency. Linear detection algorithms can achieve a near-optimal performance in large-
scale MIMO systems, due to the asymptotic orthogonal channel property. But, the performance of linear MIMO detectors
degrades when the number of transmit antennas is close to the number of receive antennas (loaded scenario). Therefore, this
paper proposes a series of detectors for large MIMO systems, which is capable of achieving promising performance in
loaded scenarios. The main idea is to improve the performance of the detector by finding the hidden sparsity in the residual
error of the received signal. At the first step, the conventional MIMO model is converted into the sparse model via the
symbol error vector obtained from a linear detector. With the aid of the compressive sensing methods, the incorrectly
detected symbols are recovered and performance improvement in the detector output is obtained. Different sparse recovery
algorithms have been considered to reconstruct the sparse error signal. This study reveals that error recovery by imposing
sparse constraint would decrease the bit error rate of the MIMO detector. Simulation results show that the iteratively
reweighted least squares method achieves the best performance among other sparse recovery methods.
Keywords
Massive MIMO , MMSE Detector , Error Recovery , Compressive Sensing , Iteratively Reweighted Least Squares (IRLS) Method
Journal title
Journal of Information Systems and Telecommunication
Serial Year
2022
Record number
2732177
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