论文标题

基于WGAN的自动编码器训练

WGAN-based Autoencoder Training Over-the-air

论文作者

Dörner, Sebastian, Henninger, Marcus, Cammerer, Sebastian, Brink, Stephan ten

论文摘要

通信系统端到端培训的实际实现在根本上受到其渠道梯度的可访问性的限制。为了克服这一重大负担,最近在文献中提出了模仿实际渠道行为的生成对抗网络(GAN)的想法。与手工制作的古典渠道建模相反,这些渠道建模永远无法完全捕捉现实世界,甘斯原则上承诺,可以通过数据驱动的学习算法来学习任何身体障碍的能力。在这项工作中,我们验证了基于GAN的自动编码器培训的概念。为了提高训练稳定性,我们首先将该概念扩展到有条件的Wasserstein Gans,并将其嵌入到最先进的自动编码器架构中,包括位估计和外通道代码。此外,在同一框架中,我们比较了现有的三种不同培训方法:基于模型的预训练与接收器登录,加强学习(RL)和基于GAN的渠道建模。为此,我们显示了基于GAN的端到端培训的优势和局限性。特别是,对于非线性效应,事实证明,学习整个勘探空间变得非常复杂。最后,我们表明,与基于RL的培训相比,培训策略受益于更简单的(培训)数据获取,这需要连续发射器重量更新。由于发射器和训练算法之间的带宽有限,甚至可能在物理上不同的位置运行,因此这成为了重要的实用瓶颈。

The practical realization of end-to-end training of communication systems is fundamentally limited by its accessibility of the channel gradient. To overcome this major burden, the idea of generative adversarial networks (GANs) that learn to mimic the actual channel behavior has been recently proposed in the literature. Contrarily to handcrafted classical channel modeling, which can never fully capture the real world, GANs promise, in principle, the ability to learn any physical impairment, enabled by the data-driven learning algorithm. In this work, we verify the concept of GAN-based autoencoder training in actual over-the-air (OTA) measurements. To improve training stability, we first extend the concept to conditional Wasserstein GANs and embed it into a state-of-the-art autoencoder-architecture, including bitwise estimates and an outer channel code. Further, in the same framework, we compare the existing three different training approaches: model-based pre-training with receiver finetuning, reinforcement learning (RL) and GAN-based channel modeling. For this, we show advantages and limitations of GAN-based end-to-end training. In particular, for non-linear effects, it turns out that learning the whole exploration space becomes prohibitively complex. Finally, we show that the training strategy benefits from a simpler (training) data acquisition when compared to RL-based training, which requires continuous transmitter weight updates. This becomes an important practical bottleneck due to limited bandwidth and latency between transmitter and training algorithm that may even operate at physically different locations.

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