Litcius/Paper detail

Meta-learning-aided orthogonal frequency division multiplexing for underwater acoustic communications

Yonglin Zhang, Haibin Wang, Chao Li, Desheng Chen, Fabrice Mériaudeau

2021The Journal of the Acoustical Society of America24 citationsDOI

Abstract

In this paper, a meta-learning-based underwater acoustic (UWA) orthogonal frequency division multiplexing (OFDM) system is proposed to deal with the environment mismatch in real-world UWA applications, which can effectively drive the model from the given UWA environment to the new UWA environment with a relatively small amount of data. With meta-learning, we consider multiple UWA environments as multi-UWA-tasks, wherein the meta-training strategy is utilized to learn a robust model from previously observed multi-UWA-tasks, and it can be quickly adapted to the unknown UWA environment with only a small number of updates. The experiments with the at-sea-measured WATERMARK dataset and the lake trial indicate that, compared with the traditional UWA-OFDM system and the conventional machine learning-based framework, the proposed method shows better bit error rate performance and stronger learning ability under various UWA scenarios.

Topics & Concepts

Computer scienceOrthogonal frequency-division multiplexingUnderwaterBit error rateUnderwater acoustic communicationReal-time computingTelecommunicationsDecoding methodsChannel (broadcasting)OceanographyGeologyUnderwater Vehicles and Communication SystemsUnderwater Acoustics ResearchIndoor and Outdoor Localization Technologies