Javascript must be enabled to continue!
Robust Long Short-Term Memory-Enabled Beamforming for Cell-Free Massive MIMOs in 6G Networks
View through CrossRef
This paper presents a performance evaluation of a long short-term memory (LSTM)-based precoder for cell-free (CF) massive multiple-input multiple-output (MIMO) systems in 6G networks operating under hardware impairments and imperfect channel state information (CSI). It also compares the proposed method with traditional Kalman, minimum mean square error (MMSE), and zero forcing (ZF) precoders. Simulations conducted at 2.4 GHz show that the LSTM-based scheme offers improved spectral efficiency (SE) and energy efficiency (EE) while remaining computationally feasible. Specifically, the LSTM precoder achieves an average per-user SE of 1.74 bps/Hz, representing gains of about 1.15% over Kalman, 3.45% over MMSE, 4.6% over ZF, and 5.75% over MRT. Under severe hardware impairments, it provides a 2.94% improvement over Kalman and a 5.88% improvement over MMSE. The total SE reaches 17.4 bps/Hz, increasing the overall system capacity by approximately 2.87% over Kalman, 4.02% over MMSE, 6.32% over ZF, and 8.05% over MRT when the number of users (K) is 10. The LSTM-based precoder also achieves the highest peak EE, indicating that its learning-driven adaptability yields higher SE for comparable power usage. Despite a slight increase in power consumption, its inference time remains shorter than both MMSE and ZF, offering a favorable balance between performance and computational complexity. Overall, the results demonstrate that a learning-driven, impairment-aware precoding approach provides significant advantages in terms of robustness and scalability for next-generation 6G CF massive MIMO networks, particularly in non-ideal hardware environments.
Title: Robust Long Short-Term Memory-Enabled Beamforming for Cell-Free Massive MIMOs in 6G Networks
Description:
This paper presents a performance evaluation of a long short-term memory (LSTM)-based precoder for cell-free (CF) massive multiple-input multiple-output (MIMO) systems in 6G networks operating under hardware impairments and imperfect channel state information (CSI).
It also compares the proposed method with traditional Kalman, minimum mean square error (MMSE), and zero forcing (ZF) precoders.
Simulations conducted at 2.
4 GHz show that the LSTM-based scheme offers improved spectral efficiency (SE) and energy efficiency (EE) while remaining computationally feasible.
Specifically, the LSTM precoder achieves an average per-user SE of 1.
74 bps/Hz, representing gains of about 1.
15% over Kalman, 3.
45% over MMSE, 4.
6% over ZF, and 5.
75% over MRT.
Under severe hardware impairments, it provides a 2.
94% improvement over Kalman and a 5.
88% improvement over MMSE.
The total SE reaches 17.
4 bps/Hz, increasing the overall system capacity by approximately 2.
87% over Kalman, 4.
02% over MMSE, 6.
32% over ZF, and 8.
05% over MRT when the number of users (K) is 10.
The LSTM-based precoder also achieves the highest peak EE, indicating that its learning-driven adaptability yields higher SE for comparable power usage.
Despite a slight increase in power consumption, its inference time remains shorter than both MMSE and ZF, offering a favorable balance between performance and computational complexity.
Overall, the results demonstrate that a learning-driven, impairment-aware precoding approach provides significant advantages in terms of robustness and scalability for next-generation 6G CF massive MIMO networks, particularly in non-ideal hardware environments.
Related Results
Complex Collision Tumors: A Systematic Review
Complex Collision Tumors: A Systematic Review
Abstract
Introduction: A collision tumor consists of two distinct neoplastic components located within the same organ, separated by stromal tissue, without histological intermixing...
Compressive focused beamforming based on vector sensor array
Compressive focused beamforming based on vector sensor array
With the rapid development of the theory and algorithms for sparse recovery in finite dimension, compressive sensing (CS) has become an exciting field that has attracted considerab...
Frequency of Common Chromosomal Abnormalities in Patients with Idiopathic Acquired Aplastic Anemia
Frequency of Common Chromosomal Abnormalities in Patients with Idiopathic Acquired Aplastic Anemia
Objective: To determine the frequency of common chromosomal aberrations in local population idiopathic determine the frequency of common chromosomal aberrations in local population...
Review and Analysis of Beamforming's Power Allocation Studies for (5G) Networks
Review and Analysis of Beamforming's Power Allocation Studies for (5G) Networks
The necessity to investigate viable spectrum areas for satisfying the anticipated needs has been prompted by the rising cellular data traffic demands. As a result, the scientific c...
A Study on the Basics Processes of Massive MIMO
A Study on the Basics Processes of Massive MIMO
Massive Multiple Input Multiple Output (MIMO) is a key technique used in 5G mobile communication systems; it aims to efficiently increase the spectral efficiency of the communicati...
Sub-System Architecture for millimeter-wave massive MIMO systems
Sub-System Architecture for millimeter-wave massive MIMO systems
In this paper, we study the hybrid beamforming design for millimeter-wave (mmWave) massive multiple-input multiple-output (mMIMO) systems. The designing of hybrid beamforming for o...
Beamforming Techniques for Massive MIMO Antennas in 5G Networks
Beamforming Techniques for Massive MIMO Antennas in 5G Networks
Massive MIMO (Multiple Input, Multiple Output) technology is a cornerstone of 5G networks, enabling higher data rates, improved capacity, and more reliable communication. Beamformi...
Orthogonal beamforming technique for massive MIMO systems
Orthogonal beamforming technique for massive MIMO systems
Abstract
Beamforming represents a pivotal technology in massive multiple-input multiple-output (MIMO) systems, as it facilitates the regulation of transmission and recept...

