Thanks to its capability of classifying complex phenomena without explicit modeling, deep learning (DL) has been demonstrated to be a key enabler of Wireless Signal Classification (WSC). Although DL can achieve a very high accuracy under certain conditions, recent research has unveiled that the wireless channel can disrupt the features learned by the DL model during training, thus drastically reducing the classification performance in real-world live settings. Since retraining classifiers is cumbersome after deployment, existing work has leveraged the usage of carefully-tailored Finite Impulse Response (FIR) filters that, when applied at the transmitter's side, can restore the features that are lost because of the the channel actions, i.e., waveform synthesis. However, these approaches compute FIRs using offline optimization strategies, which limits their efficacy in highly-dynamic channel settings. In this paper, we improve the state of the art by proposing Chares, a Deep Reinforcement Learning (DRL)-based framework for channel-resilient adaptive waveform synthesis. Chares adapts to new and unseen channel conditions by optimally computing through DRL the FIRs in real-time. Chares is a DRL agent whose architecture is-based upon the Twin Delayed Deep Deterministic Policy Gradients (TD3), which requires minimal feedback from the receiver and explores a continuous action space. Chares has been extensively evaluated on two well-known datasets. We have also evaluated the real-time latency of Chares with an implementation on field-programmable gate array (FPGA). Results show that Chares increases the accuracy up to 4.1x when no waveform synthesis is performed, by 1.9x with respect to existing work, and can compute new actions within 41us.
翻译:由于在没有明确模型的情况下对复杂现象进行分类的能力,深度学习(DL)已被证明是无线信号分类(WSC)的关键推进器。虽然DL在某些条件下可以达到非常高的精确度,但最近的研究揭示了无线频道可以破坏DL模型在培训期间学到的特征,从而大大降低了在现实世界现场设置中的分类性能。由于再培训分类器在部署后非常繁琐,现有工作已经利用了精心定制的离线信号信号响应(FIR)过滤器的使用,该过滤器在发射器一侧应用时,可以恢复由于频道动作(即波形合成)而丢失的功能。然而,这些方法利用离线优化战略对飞行器进行解析,从而限制其在高动态频道环境中的效能。在部署后,我们通过推荐Charmines,深度学习(DRL)基于频道的可识别适应性适应波变组合框架来改进艺术的状态。通过优化的DRRDR(R)的准确度,在真实的磁盘中,运行过程中需要一个最起码的SAR-DRDR(C),在真实的SIRA上显示一个最起码的动作。