핵심 개념
This work proposes two deep unfolding-based models for energy-efficient power control in multi-cell wireless networks. The first model (MASUM) combines domain knowledge and data-driven deep learning, while the second model (FUM) fully unfolds the closed-form solution of the power control problem. The proposed models achieve high accuracy and fast inference speed compared to traditional iterative solutions.
초록
This paper investigates the use of deep unfolding techniques to design energy-efficient power control solutions for multi-cell wireless networks. The power control problem is formulated as a non-convex sum-of-ratios optimization problem.
The authors first propose two iterative solutions based on fractional programming. The first solution is a numerical solution obtained by transforming the original problem into a sequence of convex subproblems. The second solution is a closed-form solution derived by combining fractional programming and Lagrange dual transform.
To address the high computational complexity and slow convergence of the iterative solutions, the authors then design two deep unfolding-based models. The first model, called MASUM, is a semi-unfolding model that combines the domain knowledge from the numerical solution with data-driven deep learning techniques, including attention mechanisms. The second model, called FUM, is a fully unfolded model that directly maps the closed-form solution to a deep neural network architecture.
The simulation results show that both MASUM and FUM achieve high accuracy in power allocation while providing significantly faster inference speed compared to the iterative solutions. The authors also conduct an ablation study to investigate the optimal design of the proposed models, including the number of layers and the placement of attention blocks.
The key highlights of this work are:
- Formulation of the energy-efficient power control problem as a non-convex sum-of-ratios optimization problem.
- Development of two iterative solutions based on fractional programming, one numerical and one closed-form.
- Design of two deep unfolding-based models (MASUM and FUM) that leverage the domain knowledge and data-driven deep learning techniques.
- Comprehensive performance evaluation and ablation study to demonstrate the advantages of the proposed deep unfolding models.
통계
The peak rate is expected to be 20 Gbps for downlink and 10 Gbps for uplink in 6G networks.
Energy efficiency is expected to improve 100 times compared to 5G, while spectral efficiency is expected to be 3 times higher.
인용구
"Deep unfolding combines both domain knowledge with learning ability of DL to overcome the problem of both traditional methods and DL-based methods (i.e., data-driven methods)."
"The emphasis on specific patterns in multivariate system is one of domain knowledge nonnegligible trait in communications systems. The impact of several parameters should be incorporated during the design of DL models which can enhance the prediction."