4.7 Article

Sleep-Scheduling-Based Hierarchical Data Collection Algorithm for Gliders in Underwater Acoustic Sensor Networks

Journal

IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY
Volume 70, Issue 9, Pages 9466-9479

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TVT.2021.3100570

Keywords

Data collection; Energy consumption; Clustering algorithms; Delays; Signal processing algorithms; Routing protocols; Routing; Underwater gliders; sleep scheduling; intelligent data collection; intelligent signal processing; artificial intelligence

Funding

  1. National Natural Science Foundation of China [62072072, 61872124, 61572172]
  2. Open fund of State Key Laboratory of Acoustics [SKLA202102]

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Underwater acoustic sensor networks (UASNs) play a crucial role in ocean monitoring, but face challenges such as communication disruptions and node movement interference. To address these challenges, the SSHDCA algorithm is designed to improve efficiency through hierarchical data collection and energy-saving measures.
In recent years, underwater acoustic sensor networks (UASNs) have been widely investigated for ocean environmental monitoring, offshore exploration, and marine military. The core function of UASNs is to collect data for related operations. A number of factors make the monitoring challenging; ocean thermoclines may affect the communication of the underwater nodes and gliders, reducing their communication range at varying depth; moreover, the node movement caused by Ekman drifting effect can significantly interfere with the data transmissions. Thus, these factors are regarded essential towards characterizing the ocean environment. To address these challenges, a sleep-scheduling-based hierarchical data collection algorithm (SSHDCA) for underwater gliders is designed. The UASN is split into multiple virtual cubes, where the nodes in different virtual cubes sleep and work alternately to save energy. Then, the SSHDCA divides the network into a dynamic layer and a static layer. In the dynamic layer, a virtual-cube-based multi-hop method is leveraged to transmit data packets to the central area. In the static layer, an improved density-based clustering technique is applied to assign each node to an appropriate cluster, while the underwater gliders collect data from the cluster heads. Further, to reduce energy consumption, the SSHDCA compresses key and non-key data, reducing the size of the packets. Simulation results have shown that the proposed algorithm is effective in reducing the path length of the gliders and the average energy consumption of the nodes, while increasing the remaining operational life of the whole network.

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