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Swish-Driven GoogleNet for Intelligent Analog Beam Selection in Terahertz Beamspace MIMO

Zarini, Hosein; Mili, Mohammad Robat; Rastiy, Mehdi; Andreev, Sergey; Nardelli, Pedro H.J. (2022)

 
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Swish_Driven_GoogleNet_for_Intelligent_Analog_Beam_Selection.pdf (710.2Kt)
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Zarini, Hosein
Mili, Mohammad Robat
Rastiy, Mehdi
Andreev, Sergey
Nardelli, Pedro H.J.
2022

This publication is copyrighted. You may download, display and print it for Your own personal use. Commercial use is prohibited.
doi:10.1109/VTC2022-Spring54318.2022.9860549
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Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi:tuni-202301041077

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Peer reviewed
Tiivistelmä
<p>In this paper, we propose an intelligent analog beam selection strategy in a terahertz (THz) band beamspace multiple-input multiple-output (MIMO) system. First inspired by transfer learning, we fine-tune the pre-trained off-the-shelf GoogleNet classifier to learn analog beam selection as a multi-class mapping problem. Simulation results show 83% accuracy for the analog beam selection, which subsequently results in 12% spectral efficiency (SE) gain over the existing counterparts. For a more accurate classifier, we replace the conventional rectified linear unit (ReLU) activation function of the GoogleNet with the recently proposed Swish and retrain the fine-tuned GoogleNet to learn analog beam selection. It is numerically indicated that the fine-tuned Swish-driven GoogleNet achieves 86% accuracy, as well as 18% improvement in achievable SE, over the similar schemes. Eventually, a strong ensembled classifier is developed to learn analog beam selection by sequentially training multiple fine-tuned Swish-driven GoogleNet classifiers. According to the simulations, the strong ensembled model is 90% accurate and yields 27% gain in achievable SE in comparison with prior methods.</p>
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