利用金字塔扩张注意卷积神经网络增强大规模 5G MIMO-OFDM 系统的信道预测能力

IF 0.9 Q4 TELECOMMUNICATIONS
C. R. Rathish, Balakrishnan Manojkumar, Lakshmanaperumal Thanga Mariappan, Panchapakesan Ashok, Udayakumar Arun Kumar, Krishnan Balan
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引用次数: 0

摘要

为了在 5G 及以后的时代增强通信,同时最大限度地降低复杂性,MIMO-OFDM 系统需要精确的信道预测。为了增强信道预测,降低误差矢量幅度、峰值功率和相邻信道泄漏比,本研究采用了金字塔扩展注意卷积神经网络(PDACNN)。带滤波器的简化削波(SCF)可减少 PAPR 数据,该技术采用的 PDACNN 是用减少的数据训练的。通过将注意力技术与金字塔扩张卷积相结合,建议的 PDACNN 架构能够提取多个尺度的 OFDM 信道参数。注意力方法允许模型动态地集中在重要信息上,从而增强了信道预测能力。主要目的是利用网络理解 OFDM 信道数据中错综复杂的时空联系的能力。这些技术的目标是提高信道预测的准确性和弹性,同时减少对 EVM、峰值功率和 ACLR 的担忧。为了证实所建议的 CP-LSMIMO-OFDM-PDACNN 的有效性,我们测量了其频谱效率、峰均功率比、误码率 (BER)、信噪比 (SNR) 和吞吐量。CP-LSMIMO-OFDM-PDACNN 的吞吐量分别提高了 23.76%、30.45% 和 18.97%,误码率分别降低了 20.67%、12.78% 和 19.56%。PAPR 也分别降低了 21.66%、23.09% 和 25.11%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced channel prediction in large‐scale 5G MIMO‐OFDM systems using pyramidal dilation attention convolutional neural network
In order to enhance communication while minimizing complexity in 5G and beyond, MIMO‐OFDM systems need accurate channel prediction. In order to enhance channel prediction, decrease Error Vector Magnitude, Peak Power, and Adjacent Channel Leakage Ratio, this study employs the Pyramidal Dilation Attention Convolutional Neural Network (PDACNN). Simplified clipping with filtering (SCF) reduces PAPR data, and this technique employs a PDACNN trained with the reduced data. By combining attention techniques with pyramidal dilated convolutions, the suggested PDACNN architecture is able to extract OFDM channel parameters across several scales. Attention approaches enhance channel prediction by allowing the model to dynamically concentrate on essential information. The primary objective is to make use of the network's ability to comprehend intricate spatial–temporal connections in OFDM channel data. The goal of these techniques is to make channel forecasts more accurate and resilient while decreasing concerns about EVM, Peak Power, and ACLR. To confirm the effectiveness of the suggested CP‐LSMIMO‐OFDM‐PDACNN, we measure its spectral efficiency, peak‐to‐average power ratio, bit error rate (BER), signal‐to‐noise ratio (SNR), and throughput. Throughput gains of 23.76%, 30.45%, and 18.97% are achieved via CP‐LSMIMO‐OFDM‐PDACNN, while bit error rates of 20.67%, 12.78%, and 19.56% are reduced. PAPRs of 21.66%, 23.09%, and 25.11% are also decreased.
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