载波指数差分混沌移位键控系统的智能检测器

Dongyang Peng, Yi Fang, Huan Ma, Pingping Chen, Meiyuan Miao
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引用次数: 0

摘要

在正交时频空间调制的启发下,载波指数差分混沌移位键控(CI-DCSK)系统因其高效、低复杂度的优点而受到越来越多的关注。为了实现更可靠的传输,本文提出了一种基于深度学习的CI-DCSK系统智能检测器,简称DL-CI-DCSK检测器。该检测器继承了神经网络和传统能量检测的优点。提出的DL-CI-DCSK检测器首先利用神经网络恢复索引位,然后利用索引位对调制位进行解调。所设计的网络结构主要利用长短期记忆单元和多个全连接层的特性,提取和整合调制信号的相关性和特征。仿真结果表明,在多径瑞利衰落信道下,该智能检测器比传统检测器具有更好的误码率性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent Detector for Carrier Index Differential Chaos Shift Keying System
Inspired by the orthogonal time frequency space modulation, carrier index differential chaos shift keying (CI-DCSK) system has been proposed and attracted more and more attention because of its high-efficiency and low-complexity advantages. In this paper, a deep learning based intelligent detector for CI-DCSK system, referred to as DL-CI-DCSK detector, is proposed to realize more reliable transmission. The proposed detector inherits the advantages of neural network and traditional energy detection. The proposed DL-CI-DCSK detector first recovers the index bits using a neural network and then using the index bits to demodulate the modulation bits. The designed network structure mainly exploits the characteristics of long short-term memory unit and multiple fully connected layers to extract and integrate the correlation and features of the modulated signals. Simulation results show that the proposed intelligent detector can achieve better bit-error-rate (BER) performance than conventional detectors over multipath Rayleigh fading channels.
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