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A Joint Decentralized Federated Learning and Communications Framework for Industrial Networks

机译:工业网络联合分散式联合学习和通信框架

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Industrial wireless networks are pushing towards distributed architectures moving beyond traditional server-client transactions. Paired with this trend, new synergies are emerging among sensing, communications and Machine Learning (ML) co-design, where resources need to be distributed across different wireless field devices, acting as both data producers and learners. Considering this landscape, Federated Learning (FL) solutions are suitable for training a ML model in distributed systems. In particular, decentralized FL policies target scenarios where learning operations must be implemented collaboratively, without relying on the server, and by exchanging model parameters updates rather than training data over capacity-constrained radio links. This paper proposes a real-time framework for the analysis of decentralized FL systems running on top of industrial wireless networks rooted in the popular Time Slotted Channel Hopping (TSCH) radio interface of the IEEE 802.15.4e standard. The proposed framework is suitable for neural networks trained via distributed Stochastic Gradient Descent (SGD), it quantifies the effects of model pruning, sparsification and quantization, as well as physical and link layer constraints, on FL convergence time and learning loss. The goal is to set the fundamentals for comprehensive methods and procedures supporting decentralized FL pre-deployment design. The proposed tool can be thus used to optimize the deployment of the wireless network and the ML model before its actual installation. It has been verified based on real data targeting smart robotic-assisted manufacturing.
机译:工业无线网络正朝着超越传统服务器-客户端事务的分布式架构的方向发展。伴随着这一趋势,传感,通信和机器学习(ML)协同设计之间出现了新的协同效应,需要在不同的无线现场设备之间分配资源,同时充当数据产生者和学习者。考虑到这种情况,联合学习(FL)解决方案适用于在分布式系统中训练ML模型。尤其是,分散式FL策略的目标是必须通过协作实现学习操作而不依赖服务器的情况,并且必须通过交换模型参数更新而不是通过容量受限的无线电链路来训练数据来实现。本文提出了一个实时框架,用于分析基于工业无线网络之上运行的分散FL系统,该系统植根于IEEE 802.15.4e标准的流行的时隙信道跳频(TSCH)无线接口。所提出的框架适用于通过分布式随机梯度下降(SGD)训练的神经网络,它量化了模型修剪,稀疏化和量化以及物理和链接层约束对FL收敛时间和学习损失的影响。目标是为支持分散式FL预先部署设计的综合方法和程序设置基础。因此,在实际安装之前,可以使用所提出的工具来优化无线网络和ML模型的部署。它已基于针对智能机器人辅助制造的真实数据进行了验证。

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