Meta-Learning Based Optimization for Large Scale Wireless Systems
- URL: http://arxiv.org/abs/2407.01823v2
- Date: Wed, 3 Jul 2024 11:09:00 GMT
- Title: Meta-Learning Based Optimization for Large Scale Wireless Systems
- Authors: Rafael Cerna Loli, Bruno Clerckx,
- Abstract summary: It is known that the limitation of conventional optimization algorithms in the literature often increases with the number of transmit antennas and communication users in wireless system.
This paper proposes an unsupervised meta-learning based approach to perform non-diaconfigurable optimization at significantly reduced complexity.
- Score: 45.025621137165025
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Optimization algorithms for wireless systems play a fundamental role in improving their performance and efficiency. However, it is known that the complexity of conventional optimization algorithms in the literature often exponentially increases with the number of transmit antennas and communication users in the wireless system. Therefore, in the large scale regime, the astronomically large complexity of these optimization algorithms prohibits their use and prevents assessing large scale wireless systems performance under optimized conditions. To overcome this limitation, this work proposes instead the use of an unsupervised meta-learning based approach to directly perform non-convex optimization at significantly reduced complexity. To demonstrate the effectiveness of the proposed meta-learning based solution, the sum-rate (SR) maximization problem for the following three emerging 6G technologies is contemplated: hierarchical rate-splitting multiple access (H-RSMA), integrated sensing and communication (ISAC), and beyond-diagonal reconfigurable intelligent surfaces (BD-RIS). Through numerical results, it is demonstrated that the proposed meta-learning based optimization framework is able to successfully optimize the performance and also reveal unknown aspects of the operation in the large scale regime for the considered three 6G technologies.
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