Machine Learning-aided Design of Thinned Antenna Arrays for Optimized
Network Level Performance
- URL: http://arxiv.org/abs/2001.09335v2
- Date: Thu, 28 Jan 2021 13:12:47 GMT
- Title: Machine Learning-aided Design of Thinned Antenna Arrays for Optimized
Network Level Performance
- Authors: Mattia Lecci, Paolo Testolina, Mattia Rebato, Alberto Testolin,
Michele Zorzi
- Abstract summary: We propose a Machine Learning framework that enables a simulation-based optimization of the antenna design.
We show how learning methods are able to emulate a complex simulator with a modest dataset.
Overall, our results show that the proposed methodology can be successfully applied to the optimization of thinned antenna arrays.
- Score: 19.17059890143665
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the advent of millimeter wave (mmWave) communications, the combination
of a detailed 5G network simulator with an accurate antenna radiation model is
required to analyze the realistic performance of complex cellular scenarios.
However, due to the complexity of both electromagnetic and network models, the
design and optimization of antenna arrays is generally infeasible due to the
required computational resources and simulation time. In this paper, we propose
a Machine Learning framework that enables a simulation-based optimization of
the antenna design. We show how learning methods are able to emulate a complex
simulator with a modest dataset obtained from it, enabling a global numerical
optimization over a vast multi-dimensional parameter space in a reasonable
amount of time. Overall, our results show that the proposed methodology can be
successfully applied to the optimization of thinned antenna arrays.
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