论文标题
深度学习增强了Rydberg多频微波识别
Deep learning enhanced Rydberg multifrequency microwave recognition
论文作者
论文摘要
识别多频微波(MW)电场的识别是具有挑战性的,因为多频场在实际应用中的复杂干扰。基于Rydberg原子的多频MW电场的测量值在MW雷达和MW通信中有希望。然而,rydberg原子不仅对MW信号敏感,而且对原子碰撞和环境的噪声也很敏感,这意味着噪声相互作用的管理Lindblad Master方程的解决方案使噪声和高阶项的包含变得复杂。在这里,我们通过将Rydberg原子与深度学习模型相结合来解决这些问题,并表明该模型使用Rydberg Atoms的灵敏度,同时还可以在不求解主方程的情况下减少噪声的影响。作为原则证明,深度学习增强了Rydberg接收器允许直接解码频段多路复用(FDM)信号。这种类型的传感技术有望使基于Rydberg的MW Fields感应和通信受益。
Recognition of multifrequency microwave (MW) electric fields is challenging because of the complex interference of multifrequency fields in practical applications. Rydberg atom-based measurements for multifrequency MW electric fields is promising in MW radar and MW communications. However, Rydberg atoms are sensitive not only to the MW signal but also to noise from atomic collisions and the environment, meaning that solution of the governing Lindblad master equation of light-atom interactions is complicated by the inclusion of noise and high-order terms. Here, we solve these problems by combining Rydberg atoms with deep learning model, demonstrating that this model uses the sensitivity of the Rydberg atoms while also reducing the impact of noise without solving the master equation. As a proof-of-principle demonstration, the deep learning enhanced Rydberg receiver allows direct decoding of the frequency-division multiplexed (FDM) signal. This type of sensing technology is expected to benefit Rydberg-based MW fields sensing and communication.