卫星网络中基于半异步和定时同步控制策略的智能分层联邦学习系统

Qiang Mei, Rui Huang, Duo Li, Jingyi Li, Nan Shi, Mei Du, Yingkang Zhong, Chunqi Tian
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引用次数: 0

摘要

联邦学习(FL)是一种允许多设备在不共享原始数据的情况下协同训练全局模型的技术,是分布式智能系统研究的热点。与卫星网络相结合,FL可以克服地理限制,实现更广泛的应用。但也面临着离散效应、网络环境不可靠、样本非独立同分布(Non-IID)等问题。为了解决这些问题,我们提出了一种基于半异步和调度同步控制策略的卫星网络云端-客户端结构智能分层FL系统。我们的智能系统通过将中心云的通信负载分配到各个边缘云,有效地处理多个客户端请求。此外,云服务器选择算法和边缘客户端半异步控制策略最大限度地减少了客户端等待时间,提高了FL流程的整体效率。中心边缘调度同步控制策略保证了局部模型的时效性。实验结果表明,与传统的fedag相比,我们提出的智能分层FL系统在全局精度方面具有明显的优势,在相同的时间框架内实现了2%的全局精度提高,并减少了52%的训练时间以达到目标精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent hierarchical federated learning system based on semi-asynchronous and scheduled synchronous control strategies in satellite network

Federated learning (FL) is a technology that allows multiple devices to collaboratively train a global model without sharing original data, which is a hot topic in distributed intelligent systems. Combined with satellite network, FL can overcome the geographical limitation and achieve broader applications. However, it also faces the issues such as straggler effect, unreliable network environments and non-independent and identically distributed (Non-IID) samples. To address these problems, we propose an intelligent hierarchical FL system based on semi-asynchronous and scheduled synchronous control strategies in cloud-edge-client structure for satellite network. Our intelligent system effectively handles multiple client requests by distributing the communication load of the central cloud to various edge clouds. Additionally, the cloud server selection algorithm and the edge-client semi-asynchronous control strategy minimize clients’ waiting time, improving the overall efficiency of the FL process. Furthermore, the center-edge scheduled synchronous control strategy ensures the timeliness of partial models. Based on the experiment results, our proposed intelligent hierarchical FL system demonstrates a distinct advantage in global accuracy over traditional FedAvg, achieving 2% higher global accuracy within the same time frame and reducing 52% training time to achieve the target accuracy.

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