Next-generation wireless systems aim at fulfilling diverse application requirements but fundamentally rely on point-to-point transmission qualities. Aligning with recent AI-enabled wireless implementations, this paper introduces autonomic radios, 6G-AUTOR, that leverage novel algorithm-hardware separation platforms, softwarization of transmission (TX) and reception (RX) operations, and automatic reconfiguration of RF frontends, to support link performance and resilience. As a comprehensive transceiver solution, our design encompasses several ML-driven models, each enhancing a specific aspect of either TX or RX, leading to robust transceiver operation under tight constraints of future wireless systems. A data-driven radio management module was developed via deep Q-networks to support fast-reconfiguration of TX resource blocks (RB) and proactive multi-agent access. Also, a ResNet-inspired fast-beamforming solution was employed to enable robust communication to multiple receivers over the same RB, which has potential applications in realisation of cell-free infrastructures. As a receiver the system was equipped with a capability of ultra-broadband spectrum recognition. Apart from this, a fundamental tool - automatic modulation classification (AMC) which involves a complex correntropy extraction, followed by a convolutional neural network (CNN)-based classification, and a deep learning-based LDPC decoder were added to improve the reception quality and radio performance. Simulations of individual algorithms demonstrate that under appropriate training, each of the corresponding radio functions have either outperformed or have performed on-par with the benchmark solutions.
翻译:下一代无线系统旨在满足不同的应用要求,但基本上依赖点对点传输质量。 本文结合最近由AI支持的无线实施,引入了自动无线电,6G-AUTOR,利用新型算法硬件分离平台、传输(TX)和接收(RX)软调整操作,并自动重组RF前端,以支持连接性能和复原力。作为一个全面的收发器解决方案,我们的设计包含若干由ML驱动的模式,每个模式都加强了TX或RX的具体方面,导致在未来无线系统受到严格限制的情况下进行强有力的收发器操作。一个数据驱动的无线电管理模块通过深层次的Q-网络开发,以支持TX资源区(RB)快速配置和接收(RX)和接收(RX)的快速配置和接收器接收器的自动重组。 我们的设计包括多个基于同一RB的接收器,这其中可能包含实现无细胞基础设施的应用程序。 系统接收器配备了超CN宽带接收器的能力,在超级宽带频谱系统上进行严格的操作。 除了这一基本的升级的升级,还有一种核心的升级的升级的升级的升级的系统。