Litcius/Paper detail

Improving decryption quality of optical chaos communication using neural networks

Xiaoqi Fan, Xiaoxin Mao, Longsheng Wang, Songnian Fu, Anbang Wang, Yuncai Wang

2024Optics Letters14 citationsDOI

Abstract

Optical chaos communication is a promising secure transmission technique because of the advantages of high speed and compatibility with existing fiber-optic systems. The deterioration of chaotic synchronization quality caused by fiber optic transmission impairments affects the quality of recovery of information, especially high-order modulated signals. Here, we demonstrate that the use of a convolutional neural network (CNN) with a bidirectional long short-term memory (LSTM) layer can reduce the decryption BER in an optical chaos communication system based on common-signal-induced semiconductor laser synchronization. The performance of a neural network is investigated as a function of network parameters and chaos synchronization coefficient. Experimental results show that the BER of 16-ary quadrature-amplitude-modulation (16QAM) signal after 100-km fiber transmission is decreased from 3.05 × 10 −2 to below the soft-decision forward-error-correction (SD-FEC) threshold of 2.0 × 10 −2 .

Topics & Concepts

OpticsCHAOS (operating system)Artificial neural networkComputer scienceImage qualityQuality (philosophy)Optical communicationTelecommunicationsPhysicsArtificial intelligenceComputer securityImage (mathematics)Quantum mechanicsChaos control and synchronizationNeural Networks and Reservoir ComputingOptical Network Technologies
Improving decryption quality of optical chaos communication using neural networks | Litcius