Framework for Federated Learning and Edge Deployment of Real-Time Reinforcement Learning Decision Engine on Software Defined Radio

Jithin Jagannath
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Abstract

Machine learning promises to empower dynamic resource allocation requirements of Next Generation (NextG) wireless networks including 6G and tactical networks. Recently, we have seen the impact machine learning can make on various aspects of wireless networks. Yet, in most cases, the progress has been limited to simulations and/or relies on large processing units to run the decision engines as opposed to deploying it on the radio at the edge. While relying on simulations for rapid and efficient training of deep reinforcement learning (DRL) may be necessary, it is key to mitigate the sim-real gap while trying to improve the generalization capability. To mitigate these challenges, we developed the Marconi-Rosenblatt Framework for Intelligent Networks (MR-iNet Gym), an open-source architecture designed for accelerating the deployment of novel DRL for NextG wireless networks. To demonstrate its impact, we tackled the problem of distributed frequency and power allocation while emphasizing the generalization capability of DRL decision engine. The end-to-end solution was implemented on the GPU-embedded software-defined radio and validated using over-the-air evaluation. To the best of our knowledge, these were the first instances that established the feasibility of deploying DRL for optimized distributed resource allocation for next-generation of GPU-embedded radios.
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软件无线电实时强化学习决策引擎的联合学习和边缘部署框架
机器学习有望满足下一代(NextG)无线网络(包括 6G 和战术网络)的动态资源分配要求。最近,我们看到了机器学习对无线网络各个方面的影响。然而,在大多数情况下,进展仅限于模拟和/或依赖大型处理单元来运行决策引擎,而不是将其部署在边缘的无线电上。虽然依靠仿真来快速高效地训练深度强化学习(DRL)可能是必要的,但关键是要在努力提高泛化能力的同时缩小仿真与真实之间的差距。为了缓解这些挑战,我们开发了马可尼-罗森布拉特智能网络框架(MR-iNet Gym),这是一个开源架构,旨在加速部署适用于 NextG 无线网络的新型 DRL。为了证明其影响力,我们在强调 DRL 决策引擎的泛化能力的同时,解决了分布式频率和功率分配问题。端到端解决方案是在嵌入 GPU 的软件定义无线电上实现的,并通过空中评估进行了验证。据我们所知,这些是为下一代 GPU 嵌入式无线电优化分布式资源分配部署 DRL 的可行性的首个实例。
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