Index Modulation Multiple Access via Deep Learning based Detection

Sarthak Sunil Dhanke, S. Sharma, Alok Kumar, Manish Mandloi
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引用次数: 0

Abstract

In this paper, we propose a downlink index modulation multiple access (IM-MA) system using deep learning (DL) based detection. In the proposed IM-MA, a user transmits information by modulating either active antenna indexes or signal constellation points, unlike the conventional IM-MA, where each user sends information using both the antenna indexes and constellation points. Therefore, the proposed IM-MA can accommodate more users in a network. Further, we use the DL-based detector via deep neural network (DNN) models, for each user’s symbol detection to improve the proposed IM-MA system’s performance. The received signal is preprocessed by considering the system’s apriory knowledge before going into the DNNs. DNN models are trained offline via simulated data and then applied for online symbol detection. Simulation results show the effectiveness of DNN detectors in terms of symbol error rate performance over Rayleigh fading channels with a lower runtime and complexity as compared to optimal maximum-likelihood detection.
基于深度学习检测的索引调制多址访问
在本文中,我们提出了一种基于深度学习(DL)检测的下行索引调制多址(IM-MA)系统。在该IM-MA中,用户通过调制有源天线索引或信号星座点来发送信息,而传统IM-MA中,每个用户同时使用天线索引和星座点发送信息。因此,提出的IM-MA可以容纳更多的网络用户。此外,我们通过深度神经网络(DNN)模型使用基于dl的检测器,对每个用户的符号进行检测,以提高所提出的IM-MA系统的性能。接收到的信号在进入深度神经网络之前,通过考虑系统的先验知识进行预处理。DNN模型通过模拟数据进行离线训练,然后应用于在线符号检测。仿真结果表明,与最优最大似然检测相比,DNN检测器在瑞利衰落信道上的符号误码率性能具有更低的运行时间和更低的复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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