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Comprehensive Review of Deep Unfolding Techniques for Next-Generation Wireless Communication Systems

Sukanya Deka, Kuntal Deka, Nhan Thanh Nguyen, Sanjeev Sharma, Vimal Bhatia, Nandana Rajatheva

TL;DR

The applications of deep unfolding in key areas are explored, including signal detection, channel estimation, beamforming design, decoding for error-correcting codes, sensing and communication, power allocation, and security.

Abstract

The application of machine learning in wireless communications has been extensively explored, with deep unfolding emerging as a powerful model-based technique. Deep unfolding enhances interpretability by transforming complex iterative algorithms into structured layers of deep neural networks (DNNs). This approach seamlessly integrates domain knowledge with deep learning (DL), leveraging the strengths of both methods to simplify complex signal processing tasks in communication systems. To provide a solid foundation, we first present a brief overview of DL and deep unfolding. We then explore the applications of deep unfolding in key areas, including signal detection, channel estimation, beamforming design, decoding for error-correcting codes, sensing and communication, power allocation, and security. Each section focuses on a specific task, highlighting its significance in emerging 6G technologies and reviewing recent advancements in deep unfolding-based solutions. Finally, we discuss the challenges associated with developing deep unfolding techniques and propose potential improvements to enhance their applicability across diverse wireless communication scenarios.

Comprehensive Review of Deep Unfolding Techniques for Next-Generation Wireless Communication Systems

TL;DR

The applications of deep unfolding in key areas are explored, including signal detection, channel estimation, beamforming design, decoding for error-correcting codes, sensing and communication, power allocation, and security.

Abstract

The application of machine learning in wireless communications has been extensively explored, with deep unfolding emerging as a powerful model-based technique. Deep unfolding enhances interpretability by transforming complex iterative algorithms into structured layers of deep neural networks (DNNs). This approach seamlessly integrates domain knowledge with deep learning (DL), leveraging the strengths of both methods to simplify complex signal processing tasks in communication systems. To provide a solid foundation, we first present a brief overview of DL and deep unfolding. We then explore the applications of deep unfolding in key areas, including signal detection, channel estimation, beamforming design, decoding for error-correcting codes, sensing and communication, power allocation, and security. Each section focuses on a specific task, highlighting its significance in emerging 6G technologies and reviewing recent advancements in deep unfolding-based solutions. Finally, we discuss the challenges associated with developing deep unfolding techniques and propose potential improvements to enhance their applicability across diverse wireless communication scenarios.

Paper Structure

This paper contains 43 sections, 10 equations, 5 figures, 8 tables, 1 algorithm.

Figures (5)

  • Figure 1: Typical block diagram of a modern wireless communication system. The section number covering a particular component is shown as well.
  • Figure 2: Outline of the paper.
  • Figure 3: General framework of training for deep unfolding. The learnable parameters are shown in red color.
  • Figure 4: Deep unfolding training framework for ADMM-based MIMO detection. The learnable parameters are shown in red color.
  • Figure 5: BER performance comparison for 16$\times$16 MIMO system in EVA model 3gpp36.104. For soft projection, $tanh$ is used.

Theorems & Definitions (1)

  • Example 1