未来无线通信系统的实用射频学习

D. Adesina, J. Bassey, Lijun Qian
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引用次数: 6

摘要

在未来的无线系统中,智能能力是至关重要的。为了有效地利用资源,通信系统需要通过学习了解某一频段的流行情况。为了正确地学习,从业者在构建学习模型时选择正确的参数,使用适当的算法和性能评估方法至关重要。在本文中,我们评估了一些深度学习模型与其他机器学习方法的性能,探索了将深度学习用于射频(RF)监测的不同场景,并评估了各种场景下的性能。我们的工作着眼于开发智能射频学习的最佳实践和程序。具体来说,我们分析了从基于usrp的测试平台收集的无线射频数据集,以确定干扰设备的数量作为案例研究。根据获得的结果,我们讨论了训练的信噪比(SNR)选择如何影响模型性能,因为它与通信系统中深度学习的实际实施有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Practical Radio Frequency Learning for Future Wireless Communication Systems
In future wireless systems, intelligent capabilities are of utmost importance. To efficiently utilize resources, communication systems require knowledge of the prevalent situation in a frequency band through learning. To learn appropriately, it is critical for practitioners to select the right parameters in building learning models, use the appropriate algorithms and performance evaluation methods. In this paper, we evaluate the performance of some deep learning models compared to other machine learning methods, explore the different scenarios in which deep learning can be used for radio frequency (RF) monitoring, and evaluate performance in the various scenarios. Our work looks at the best practices and procedures for developing intelligent RF Learning. Specifically, we analysed over-the-air RF dataset collected from a USRP-based testbed to identify the number of interfering devices as a case study. From the obtained results, we discuss how Signal-to-Noise Ratio (SNR) selection for training affects the model performance as it relates to practical implementation of Deep Learning in communications systems.
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