向无线边缘的同行学习

Shuvam Chakraborty, Hesham Mohammed, D. Saha
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引用次数: 0

摘要

最后一英里连接由无线链路主导,其中异构节点共享有限且已经拥挤的电磁频谱。当前基于争用的分散无线接入系统本质上是被动的,以减少干扰。在本文中,我们建议使用神经网络以协作方式学习和预测频谱可用性,从而可以高精度地预测其可用性,从而最大化无线访问并最小化同步链路之间的干扰。边缘节点具有广泛的感知和计算能力,同时通常使用不同的运营商网络,这些运营商可能不愿意共享他们的模型。因此,我们引入了点对点联邦学习模型,其中基于每个节点的感知结果训练局部模型,并在其对等节点之间共享以创建全局模型。不再需要基站或接入点充当集中式参数服务器,而是将边缘节点授权为本地模型的聚合器,并将模型传输的通信开销降至最低。我们生成无线信道访问数据,用于训练局部模型。局部和全局模型的仿真结果表明,在各种网络拓扑中预测信道机会的准确率超过95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning from Peers at the Wireless Edge
The last mile connection is dominated by wireless links where heterogeneous nodes share the limited and already crowded electromagnetic spectrum. Current contention based decentralized wireless access system is reactive in nature to mitigate the interference. In this paper, we propose to use neural networks to learn and predict spectrum availability in a collaborative manner such that its availability can be predicted with a high accuracy to maximize wireless access and minimize interference between simultaneous links. Edge nodes have a wide range of sensing and computation capabilities, while often using different operator networks, who might be reluctant to share their models. Hence, we introduce a peer to peer Federated Learning model, where a local model is trained based on the sensing results of each node and shared among its peers to create a global model. The need for a base station or access point to act as centralized parameter server is replaced by empowering the edge nodes as aggregators of the local models and minimizing the communication overhead for model transmission. We generate wireless channel access data, which is used to train the local models. Simulation results for both local and global models show over 95 % accuracy in predicting channel opportunities in various network topology.
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