中国科技核心期刊

中文核心期刊

CSCD来源期刊

空间控制技术与应用 ›› 2023, Vol. 49 ›› Issue (4): 106-118.doi: 10.3969/j.issn.1674 1579.2023.04.012

• 论文与报告 • 上一篇    下一篇

面向异构场景的智能运维联邦学习算法

  

  1. 黑龙江大学数据科学与技术学院
  • 出版日期:2023-08-26 发布日期:2023-09-25
  • 基金资助:
    科技部重点研发项目(2021YFB1715000)、国家自然科学基金项目(U1811461、62022013、12150007、62103450、61832003和62272137)和黑龙江省高校大学专项科研资金项目(2022KYYWF1122)

Heterogeneous Federated Learning for Building Intelligent Operating Methods

  • Online:2023-08-26 Published:2023-09-25

摘要: 面向航天器等核心设备设计智能运维方法是构建自主运维能力的关键.得益于机器学习技术的发展,近年来出现的数据驱动智能运维方法极大提升了设备自主能力.然而,航天器设备日益呈现集群化的趋势,传统的智能运维方法面临分布式建模和隐私保护2个关键挑战.利用联邦学习框架构建智能运维模型是解决上述挑战的一种可行思路.航天器设备通常处于计算、通信等资源极为受限的工作环境,不同设备在数据分布、计算能力等方面呈现明显的异构特点,会极大影响联邦学习的性能.因此,针对上述异构特点,利用模型聚簇的思想,设计异构场景下的联邦学习方法,支持各航天器节点间的训练节奏调整,减少不同节点间的同步等待时间,支持面向各节点特征的模型构建,提升运维模型的构建性能.实验结果表明所提出的方法是有效的.

关键词: 智能运维, 联邦学习, 航天器, 异构

Abstract: Designing intelligent operating methods is a key for constructing autonomous operating abilities of core devices such as spacecraft. Benefiting from the development of machine learning techniques, current intelligent operating methods driven by data have shown significant improvements on the ability of autonomous operation. However, viewing the trend of spacecraft clusters, traditional methods are challenged by two key requirements, distributed learning and privacy protection. A feasible solution is based on federated learning whose major concerns are how to learn efficiently in a distributed way with privacy performance guarantee. Core devices like spacecraft usually work in extreme environments and are very limited on the resources of computation and communication, and different devices show significant heterogeneous characteristics on data distributions, computation resources and so on. The heterogeneous characteristics can reduce the performance of general federated learning methods. Therefore, in this paper, based on the idea of grouping models, a federated learning algorithm for constructing intelligent operation methods is proposed, which is designed with consideration of the heterogeneous characteristics. The proposed method can reduce the waiting costs among different heterogeneous devices, adjust the timing of local learning of different devices, provide different models for devices with significantly different data distributions, and achieve the goal of improving the performance of operation models obtained by federated learning. Experimental results are conducted to show the the effectiveness of the proposed method

Key words: intelligent operation, federated learning, spacecrafts, heterogenous

中图分类号: 

  • TP391