Spectrum coexistence is essential for next generation (NextG) systems to share the spectrum with incumbent (primary) users and meet the growing demand for bandwidth. One example is the 3.5 GHz Citizens Broadband Radio Service (CBRS) band, where the 5G and beyond communication systems need to sense the spectrum and then access the channel in an opportunistic manner when the incumbent user (e.g., radar) is not transmitting. To that end, a high-fidelity classifier based on a deep neural network is needed for low misdetection (to protect incumbent users) and low false alarm (to achieve high throughput for NextG). In a dynamic wireless environment, the classifier can only be used for a limited period of time, i.e., coherence time. A portion of this period is used for learning to collect sensing results and train a classifier, and the rest is used for transmissions. In spectrum sharing systems, there is a well-known tradeoff between the sensing time and the transmission time. While increasing the sensing time can increase the spectrum sensing accuracy, there is less time left for data transmissions. In this paper, we present a generative adversarial network (GAN) approach to generate synthetic sensing results to augment the training data for the deep learning classifier so that the sensing time can be reduced (and thus the transmission time can be increased) while keeping high accuracy of the classifier. We consider both additive white Gaussian noise (AWGN) and Rayleigh channels, and show that this GAN-based approach can significantly improve both the protection of the high-priority user and the throughput of the NextG user (more in Rayleigh channels than AWGN channels).
翻译:下一代( 下G) 系统与当前( 主要) 用户共享频谱并满足对带宽的需求增长, 光谱共存是下一代( 下G) 系统与当前( 主要) 用户共享频谱的关键。 一个例子就是3.5 GHz 公民宽带广播服务( CBRS) 频段。 在动态无线环境中, 5G 及以后的通信系统需要感知频谱, 然后当当前用户( 如雷达) 不传输时, 以机会方式访问频道。 为此, 需要基于深层神经网络的高纤维分级, 以便低检测( 保护当前用户) 和低假警报( 实现高传输) 。 在动态无线环境中, 分类器只能用于有限的时间段, 也就是说, 一致性时间段。 部分时间段用于学习感测结果, 并用于传输。 在频谱共享系统中, 以感测时间段时间段与传输时间间隔时间( 增加感测时间段的感测时间段) 。 在增加光谱感测时间时, 感测时间可以提高感测精确度,,, 白感测时间比白传输数据传输时间要少时间 。