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End-to-End Autoencoder for Drill String Acoustic Communications

Authors :
Lezhenin, Iurii
Sidnev, Aleksandr
Tsygan, Vladimir
Malyshev, Igor
Publication Year :
2024

Abstract

Drill string communications are important for drilling efficiency and safety. The design of a low latency drill string communication system with high throughput and reliability remains an open challenge. In this paper a deep learning autoencoder (AE) based end-to-end communication system, where transmitter and receiver implemented as feed forward neural networks, is proposed for acousticdrill string communications. Simulation shows that the AE system is able to outperform a baseline non-contiguous OFDM system in terms of BER and PAPR, operating with lower latency.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.03840
Document Type :
Working Paper