Block Chain Based Underwater Communication Using Li-Fi and Eliminating Noise Using Machine Learning

IF 0.7 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Jordan Journal of Electrical Engineering Pub Date : 2023-01-01 DOI:10.5455/jjee.204-1670228110
M. N, A. R., K. S.
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Abstract

Underwater medium is the most difficult medium for data communication while Electromagnetic waves, acoustic waves, and optical signals are some of the present modes of communication in water. Electromagnetic waves would suffer a significant loss, limiting them to short-range communication; optical waves on the other hand, have line-of-sight concerns. The proposed work employs a Light Fidelity (Li-Fi) data transmission technology in a water medium to address these issues. Visible light communication allows to use a wide range of frequencies to send messages, when compared to other transmission technologies, the data transfer rate is likewise relatively high. Electronic components and level converters are utilized to regulate flickering and communicate data on both the transmitter and receiver sides, when exposed to the outer environment, it will lose the signal due to noise. To help with noise level estimate and signal reconstruction, the proposed work employs a machine learning technique that uses an encrypted block chain approach to check for data loss and a weighted Long Short-Term Memory (LSTM) algorithm to predict data from a Neural Network. The proposed work concludes that block chain can be the best way for data transfer in terms of minimizing errors while maintaining high accuracy.
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基于区块链的水下通信使用Li-Fi和使用机器学习消除噪声
水下介质是数据通信最困难的介质,而电磁波、声波和光信号是目前水中通信的几种方式。电磁波将遭受重大损失,限制其短距离通信;另一方面,光波有视线问题。提出的工作采用水介质中的光保真(Li-Fi)数据传输技术来解决这些问题。可见光通信允许使用广泛的频率范围来发送信息,当与其他传输技术相比,数据传输速率同样相对较高。在发射端和接收端都利用电子元件和电平转换器来调节闪烁和传输数据,当暴露在外部环境中时,会因噪声而失去信号。为了帮助噪声水平估计和信号重建,提出的工作采用了一种机器学习技术,该技术使用加密区块链方法来检查数据丢失,并使用加权长短期记忆(LSTM)算法来预测来自神经网络的数据。提出的工作结论是,就最小化错误同时保持高精度而言,区块链可以是数据传输的最佳方式。
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CiteScore
0.20
自引率
14.30%
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0
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