Evolution toward intelligent communications: Impact of deep learning applications on the future of 6G technology

Author:

Abd Elaziz Mohamed1234ORCID,Al‐qaness Mohammed A. A.5ORCID,Dahou Abdelghani67ORCID,Alsamhi Saeed Hamood89ORCID,Abualigah Laith4101112ORCID,Ibrahim Rehab Ali1,Ewees Ahmed A.13ORCID

Affiliation:

1. Department of Mathematics, Faculty of Science Zagazig University Zagazig Egypt

2. Faculty of Computer Science and Engineering Galala University Suze Egypt

3. Artificial Intelligence Research Center (AIRC) Ajman University Ajman United Arab Emirates

4. Department of Electrical and Computer Engineering Lebanese American University Byblos Lebanon

5. College of Physics and Electronic Information Engineering Zhejiang Normal University Jinhua China

6. School of Computer Science and Technology Zhejiang Normal University Jinhua China

7. LDDI Laboratory, Faculty of Science and Technology University of Ahmed DRAIA Adrar Algeria

8. Insight Centre for Data Analytics University of Galway Galway Ireland

9. Faculty of Engineering IBB University IBB Yemen

10. Hourani Center for Applied Scientific Research Al‐Ahliyya Amman University Amman Jordan

11. MEU Research Unit Middle East University Amman Jordan

12. Applied Science Research Center Applied Science Private University Amman Jordan

13. Department of Computer Damietta University Damietta Egypt

Abstract

AbstractThe sixth generation (6G) represents the next evolution in wireless communication technology and is currently under research and development. It is expected to deliver faster speeds, reduced latency, and greater capacity compared to the current 5G wireless technology. 6G is envisioned as a technology capable of establishing a fully data‐driven network, proficient in analyzing and optimizing end‐to‐end behavior and handling massive volumes of real‐time data at rates of up to terabits per second (Tb/s). Moreover, 6G is designed to accommodate an average of 1000+ substantial connections per person over the course of a decade. The concept of a data‐driven network introduces a new service paradigm, which offers fresh opportunities for applications within 6G wireless communication and network design in the future. This paper aims to provide a survey of existing applications of 6G that are based on deep learning techniques. It also explores the potential, essential technologies, scenarios, challenges, and related topics associated with 6G. These aspects are crucial for meeting the requirements for the development of future intelligent networks. Furthermore, this work delves into various research gaps between deep learning and 6G that remain unexplored. Different potential deep learning applications for 6G networks, including privacy, security, environmentally friendly communication, sustainability, and various wireless applications, are discussed. Additionally, we shed light on the challenges and future trends in this field.This article is categorized under: Technologies > Computational Intelligence Fundamental Concepts of Data and Knowledge > Explainable AI Technologies > Machine Learning

Publisher

Wiley

Subject

General Computer Science

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