Internet of Underwater Things (IoUT) have gained rapid momentum over the past decade with applications spanning from environmental monitoring and exploration, defence applications, etc. The traditional IoUT systems use machine learning (ML) approaches which cater the needs of reliability, efficiency and timeliness. However, an extensive review of the various studies conducted highlight the significance of data privacy and security in IoUT frameworks as a predominant factor in achieving desired outcomes in mission critical applications. Federated learning (FL) is a secured, decentralized framework which is a recent development in machine learning, that will help in fulfilling the challenges faced by conventional ML approaches in IoUT. This paper presents an overview of the various applications of FL in IoUT, its challenges, open issues and indicates direction of future research prospects.
翻译:过去十年来, " 水下物质 " (IOUT)互联网(IOUT)的快速发展势头随着环境监测和勘探、国防应用等应用的迅速发展。传统的IOUT系统使用机器学习(ML)方法,以满足可靠性、效率和及时性的需求。然而,对进行的各种研究进行的广泛审查突出表明,数据隐私和安全在IOUT框架中的重要性是实现特派团关键应用预期结果的主导因素。联邦学习(FL)是一个有保障的、分散化的框架,是机器学习的近期发展,有助于迎接IOUT传统ML方法所面临的挑战。本文件概述了FL在IOUT中的各种应用、挑战、未决问题以及未来研究前景的方向。