Cluster-Based Multi-attribute Routing Protocol for Underwater Acoustic Sensor Networks

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Date

2024

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Springer

Abstract

Underwater Acoustic Sensor Networks play a significant role in various underwater applications. There are several challenges in underwater communications like high bit-error-rate, low bandwidth, high energy consumption, void-node during routing, etc. Handling void-node during routing is a major challenge in underwater routing. There are well-known void-handling protocols like Energy-efficient Void-Aware Geographic Routing protocol, HydroCast, etc. However, these routing protocols require all neighboring nodes must be a part of the cluster which increases the overhead on clustering, or void-node has a part of the routing. This paper proposes an underwater routing protocol referred to as Cluster-based Multi-Attribute Routing (CMAR) to overcome these issues. It is a sender-based, opportunistic underwater routing protocol. CMAR uses the Technique for Order of Preference by Similarity to Ideal Solution to evaluate the suitability of the neighboring nodes and the basis for clustering process initialization. Through MATLAB simulations, the performance of the CMAR is compared with HydroCast in terms of the number of nodes selected in the forwarding set, number of clusters formed, number of times void-node becomes part of routing and transmission reliability. © The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2024.

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Keywords

Acoustic devices, Bit error rate, Clustering algorithms, Energy efficiency, Energy utilization, MATLAB, Power management (telecommunication), Sensor networks, Underwater acoustic communication, Underwater acoustics, Cluster-based, Clusterings, MADM, Multi-attributes, Neighbouring nodes, Routing-protocol, Routings, TOPSIS, Underwater acoustic sensor networks, Underwater routing, Routing protocols

Citation

Wireless Personal Communications, 2024, 134, 2, pp. 781-808

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