一种非相干增量学习解调器

P. Gorday, N. Erdöl, H. Zhuang
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引用次数: 2

摘要

部署后的增量学习是激励使用神经网络解调器的几个有吸引力的功能之一。提出了一种适用于开关键解调的复杂非相干神经网络。当在AWGN信道中训练时,解调器学习到一种优于传统非相干匹配滤波器解调器的解。本文还探讨了能够在该领域持续学习的增量学习技术。在已知标签领域的训练提供了对新条件的最大适应性,但已知符号的可用性可能有限。作为替代方案,我们考虑了熵正则化和伪标签的有效性,以使实验室训练的参考网络适应新的现场条件。在一个示例多径信道中对这些技术的仿真表明,在初始符号错误率高达20%的情况下,无监督自适应是成功的;在每包已知符号的一小部分情况下,半监督自适应是成功的,初始符号错误率高达40%。在这两种情况下,适应后的符号错误率都低于0.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Noncoherent Incremental Learning Demodulator
Incremental learning after deployment is one of several attractive capabilities that motivate the use of neural network demodulators. This paper presents a complex noncoherent neural network suitable for on-off key (OOK) demodulation. When trained in an AWGN channel, the demodulator learns a solution that outperforms the traditional noncoherent matched filter demodulator. The paper also explores incremental learning techniques that enable continued learning in the field. Training in the field with known labels provides maximum adaptability to new conditions, but the availability of known symbols maybe limited. As an alternative, we considered the effectiveness of entropy regularization and pseudo-labels to adapt a lab-trained reference network to new field conditions. Simulation of these techniques in an example multipath channel demonstrates successful unsupervised adaptation with initial symbol error rates up to 20% and successful semi-supervised adaptation with a small fraction of known symbols per packet and initial symbol error rates as high as 40%. In both cases, symbol error rates after adaptation are below 0.3%.
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