4.7 Article

A Tutorial on Ultrareliable and Low-Latency Communications in 6G: Integrating Domain Knowledge Into Deep Learning

Journal

PROCEEDINGS OF THE IEEE
Volume 109, Issue 3, Pages 204-246

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JPROC.2021.3053601

Keywords

Cross-layer optimization; deep reinforcement learning (DRL); sixth generation (6G); supervised deep learning; ultrareliable and low-latency communications (URLLCs); unsupervised deep learning

Funding

  1. Australian Research Council Discovery Early Career Research Award [DE210100415]
  2. Australian Research Council [DP190101988, DP210103410]
  3. Australian Research Council Laureate Fellowship [FL160100032]
  4. Australian Research Council [DE210100415] Funding Source: Australian Research Council

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This tutorial discusses the development of URLLCs in future 6G networks using deep learning algorithms and highlights the inadequacy of current mobile communication systems in meeting URLLCs requirements. It introduces the integration of domain knowledge into deep learning algorithms and suggests future research directions.
As one of the key communication scenarios in the fifth-generation and also the sixth-generation (6G) mobile communication networks, ultrareliable and low-latency communications (URLLCs) will be central for the development of various emerging mission-critical applications. State-of-the-art mobile communication systems do not fulfill the end-to-end delay and overall reliability requirements of URLLCs. In particular, a holistic framework that takes into account latency, reliability, availability, scalability, and decision-making under uncertainty is lacking. Driven by recent breakthroughs in deep neural networks, deep learning algorithms have been considered as promising ways of developing enabling technologies for URLLCs in future 6G networks. This tutorial illustrates how domain knowledge (models, analytical tools, and optimization frameworks) of communications and networking can be integrated into different kinds of deep learning algorithms for URLLCs. We first provide some background of URLLCs and review promising network architectures and deep learning frameworks for 6G. To better illustrate how to improve learning algorithms with domain knowledge, we revisit model-based analytical tools and cross-layer optimization frameworks for URLLCs. Following this, we examine the potential of applying supervised/unsupervised deep learning and deep reinforcement learning in URLLCs and summarize related open problems. Finally, we provide simulation and experimental results to validate the effectiveness of different learning algorithms and discuss future directions.

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