UGC Approved Journal no 63975(19)
New UGC Peer-Reviewed Rules

ISSN: 2349-5162 | ESTD Year : 2014
Volume 13 | Issue 3 | March 2026

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Volume 13 Issue 3
March-2026
eISSN: 2349-5162

UGC and ISSN approved 7.95 impact factor UGC Approved Journal no 63975

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Published Paper ID:
JETIR2603531


Registration ID:
577744

Page Number

f236-f241

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Title

Machine Learning-Enhanced RIS Phase Optimization Using SVD-Based Initialization and Momentum Gradient Descent in 6G

Abstract

Reconfigurable Intelligent Surfaces (RIS) have emerged as a key enabler for 6G wireless communication systems due to their ability to manipulate the wireless propagation environment and enhance signal quality. However, conventional RIS phase optimization methods face critical challenges such as high computational complexity, limited scalability, and performance degradation caused by discrete phase constraints. In particular, alternating optimization with discrete phase search often results in slow convergence and suboptimal configurations, limiting the achievable throughput and energy efficiency. To address these challenges, this paper introduces a Machine Learning (ML)-enhanced RIS phase optimization framework for 6G networks. The proposed method leverages intelligent Singular Value Decomposition (SVD)-based initialization to provide an effective starting point for the optimization process, significantly reducing convergence time. Furthermore, a momentum-based gradient descent algorithm is employed to overcome local minima and accelerate the optimization, enabling near-optimal performance under practical discrete phase conditions. Simulation results demonstrate that the proposed ML-enhanced approach outperforms conventional alternating optimization in terms of convergence speed, spectral efficiency, and energy efficiency, highlighting its potential for next generation RIS-assisted 6G communication systems.

Key Words

Reconfigurable Intelligent Surfaces (RIS), 6G communication, phase optimization, machine learning (ML), alternating optimization, discrete phase shift, SVD-based initialization, momentum-based gradient descent, spectral efficiency, energy efficiency.

Cite This Article

"Machine Learning-Enhanced RIS Phase Optimization Using SVD-Based Initialization and Momentum Gradient Descent in 6G", International Journal of Emerging Technologies and Innovative Research (www.jetir.org), ISSN:2349-5162, Vol.13, Issue 3, page no.f236-f241, March-2026, Available :http://www.jetir.org/papers/JETIR2603531.pdf

ISSN


2349-5162 | Impact Factor 7.95 Calculate by Google Scholar

An International Scholarly Open Access Journal, Peer-Reviewed, Refereed Journal Impact Factor 7.95 Calculate by Google Scholar and Semantic Scholar | AI-Powered Research Tool, Multidisciplinary, Monthly, Multilanguage Journal Indexing in All Major Database & Metadata, Citation Generator

Cite This Article

"Machine Learning-Enhanced RIS Phase Optimization Using SVD-Based Initialization and Momentum Gradient Descent in 6G", International Journal of Emerging Technologies and Innovative Research (www.jetir.org | UGC and issn Approved), ISSN:2349-5162, Vol.13, Issue 3, page no. ppf236-f241, March-2026, Available at : http://www.jetir.org/papers/JETIR2603531.pdf

Publication Details

Published Paper ID: JETIR2603531
Registration ID: 577744
Published In: Volume 13 | Issue 3 | Year March-2026
DOI (Digital Object Identifier): https://doi.org/10.56975/jetir.v13i3.577744
Page No: f236-f241
Country: TIRUPATI, Andhra Pradesh, India .
Area: Engineering
ISSN Number: 2349-5162
Publisher: IJ Publication


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