论文标题
水下事物和大型海洋数据分析 - 一项全面的调查
Internet of Underwater Things and Big Marine Data Analytics -- A Comprehensive Survey
论文作者
论文摘要
水下事物(IOUT)是一个新兴的通信生态系统,用于连接海洋和水下环境中的水下对象。 IOUT技术与智能船和船只,智能海岸和海洋,自动船舶运输,定位和导航,水下勘探,灾难预测和预防以及智能监测和安全性相关。 IOUT在从小型科学天文台到中型港口到覆盖全球海洋贸易的各种规模都有影响。 IOUT的网络体系结构本质上是异质的,应该足够弹性,可以在恶劣的环境中运行。这在依靠有限的能源资源的同时,在水下通信方面构成了重大挑战。此外,IOUT中传感器,言语和相机产生的数量,速度和多种数据是巨大的,这引起了大型海洋数据(BMD)的概念,该概念具有其自身的处理挑战。因此,传统的数据处理技术将动摇,定制的机器学习(ML)解决方案必须自动学习特定的BMD行为,并具有促进知识提取和决策支持的特征。本文的动机是全面调查IOUT,BMD及其合成。它还旨在探索BMD与ML的联系。我们从水下数据收集开始,然后讨论IOUT数据通信技术的家庭,重点是最新的研究挑战。然后,我们审查适合BMD处理和分析的ML解决方案套件。我们从教育的角度来看对主题进行演绎,并严格评估所调查的材料。
The Internet of Underwater Things (IoUT) is an emerging communication ecosystem developed for connecting underwater objects in maritime and underwater environments. The IoUT technology is intricately linked with intelligent boats and ships, smart shores and oceans, automatic marine transportations, positioning and navigation, underwater exploration, disaster prediction and prevention, as well as with intelligent monitoring and security. The IoUT has an influence at various scales ranging from a small scientific observatory, to a midsized harbor, and to covering global oceanic trade. The network architecture of IoUT is intrinsically heterogeneous and should be sufficiently resilient to operate in harsh environments. This creates major challenges in terms of underwater communications, whilst relying on limited energy resources. Additionally, the volume, velocity, and variety of data produced by sensors, hydrophones, and cameras in IoUT is enormous, giving rise to the concept of Big Marine Data (BMD), which has its own processing challenges. Hence, conventional data processing techniques will falter, and bespoke Machine Learning (ML) solutions have to be employed for automatically learning the specific BMD behavior and features facilitating knowledge extraction and decision support. The motivation of this paper is to comprehensively survey the IoUT, BMD, and their synthesis. It also aims for exploring the nexus of BMD with ML. We set out from underwater data collection and then discuss the family of IoUT data communication techniques with an emphasis on the state-of-the-art research challenges. We then review the suite of ML solutions suitable for BMD handling and analytics. We treat the subject deductively from an educational perspective, critically appraising the material surveyed.