Evolutionary generative adversarial network based end-to-end learning for MIMO molecular communication with drift system

IF 2.9 4区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Jiarui Zhu , Chenyao Bai , Yunlong Zhu , Xiwen Lu , Kezhi Wang
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引用次数: 0

Abstract

Molecular communication (MC) is a novel paradigm for nano-communication networks. Compared with diffusion-based single-input single-out (SISO) systems, multiple-input multiple-output (MIMO) MC with drift systems can effectively mitigate the negative effects of inter symbol interference (ISI), inter link interference (ILI) and noise, further improving transmission efficiency. The modeling complexity of MIMO MC systems inspires the application of deep learning (DL) techniques to establish end-to-end architectures for signal recovery. However, training of the entire end-to-end system is limited by the unknown channel and small training sample size. In this paper, aiming at signal recovery of the newly developed mathematical MIMO MC with drift system model, a Kullback–Leibler divergence (KLD) evolutionary generative adversarial network (EGAN)-based end-to-end learning method is proposed. The end-to-end architecture can be trained offline with both the sampled and fake signals generated by KLD EGAN, even with a small training sample size, and then used to recover online transmitted signals directly. Besides, two traditional detection algorithms denoted as the maximum a posterior (MAP) detector and fixed threshold (FT) detector, are proposed as well for theoretical comparison. Experiments of the effect of different model parameters on the system performance have been carried out. Results validate the effectiveness and robustness of our proposed method compared to other DL-based methods, including the deep neural networks (DNN)-based, the original GAN-based, and the original EGAN-based, in terms of transmission accuracy.

基于进化生成对抗网络的多输入多输出分子通信端到端学习
分子通信(MC)是纳米通信网络的一种新模式。与基于扩散的单输入单输出(SISO)系统相比,带有漂移的多输入多输出(MIMO) MC系统可以有效地缓解码间干扰(ISI)、链路间干扰(ILI)和噪声的负面影响,进一步提高传输效率。MIMO MC系统的建模复杂性激发了深度学习(DL)技术的应用,以建立端到端信号恢复架构。然而,整个端到端系统的训练受到未知通道和小训练样本量的限制。针对新发展的带有漂移系统模型的数学MIMO MC的信号恢复问题,提出了一种基于Kullback-Leibler散度(KLD)进化生成对抗网络(EGAN)的端到端学习方法。端到端架构可以同时使用KLD EGAN生成的采样信号和假信号进行离线训练,即使训练样本量很小,也可以直接用于在线传输信号的恢复。此外,还提出了两种传统的检测算法,即最大后验(MAP)检测器和固定阈值(FT)检测器,进行了理论比较。进行了不同模型参数对系统性能影响的实验研究。与其他基于dl的方法(包括基于深度神经网络(DNN)的方法、原始基于gan的方法和原始基于egan的方法)相比,在传输精度方面验证了我们提出的方法的有效性和鲁棒性。
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来源期刊
Nano Communication Networks
Nano Communication Networks Mathematics-Applied Mathematics
CiteScore
6.00
自引率
6.90%
发文量
14
期刊介绍: The Nano Communication Networks Journal is an international, archival and multi-disciplinary journal providing a publication vehicle for complete coverage of all topics of interest to those involved in all aspects of nanoscale communication and networking. Theoretical research contributions presenting new techniques, concepts or analyses; applied contributions reporting on experiences and experiments; and tutorial and survey manuscripts are published. Nano Communication Networks is a part of the COMNET (Computer Networks) family of journals within Elsevier. The family of journals covers all aspects of networking except nanonetworking, which is the scope of this journal.
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