ENABLING SMART FACTORY WITH DEEP RESIDUAL-AIDED GENERATIVE ADVERSARIAL NETWORK: PERFORMANCE ANALYSIS END-TO-END LEARNING OF MACHINE-TO-MACHINE

IF 0.6 Q4 ENGINEERING, MECHANICAL
CONG-DANH HUYNH, THANH-KHIET BUI, JIRI HAJNYS
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引用次数: 0

Abstract

Improving Machine-to-Machine (M2M) communication is essential for the development of Smart Factory as data can be exchanged and processed more efficiently. Herein this study, we employ the Deep Learning (DL) concepts aimed at improving end-to-end performance (E2E) M2M communication systems. Training the physical layers requires the explicit channel information to be fully known, which can be solved with generative adversarial network (GAN). Nonetheless, due to its deep neural network (DNN) structure, the GAN scheme is subjected to gradient vanishing and over-fitting, two major obstacles that can hinder the training process and limit the performance of the model. As a result, the system is significantly downgraded. To address these issues, we study a method known as Residual-Aided generative adversarial network (RA-GAN) learning scheme, in which the two problems are dealt with respectively by introducing a better propagation mechanism and a regularizer to the loss function. Herein this paper, the system model is described and the two problems are derived analytically. We also analyze the optimal learning scheme (where the channel-agnostic) and a Rayleigh-based learning scheme for comparison study. Through analyzing the block error rate (BLER), we can demonstrate that the RA-GAN approach achieves performance comparable to the optimal scheme, and significantly outperforms the conventional GAN method.
用深度残差辅助生成对抗网络实现智能工厂:机器对机器的性能分析端到端学习
改善机器对机器(M2M)通信对于智能工厂的发展至关重要,因为数据可以更有效地交换和处理。在本研究中,我们采用深度学习(DL)概念,旨在提高端到端性能(E2E) M2M通信系统。训练物理层需要完全知道显式信道信息,这可以用生成对抗网络(GAN)来解决。然而,由于其深层神经网络(DNN)结构,GAN方案受到梯度消失和过拟合的影响,这两个主要障碍会阻碍训练过程并限制模型的性能。结果,系统被大大降级。为了解决这些问题,我们研究了一种称为残差辅助生成对抗网络(RA-GAN)学习方案的方法,该方案通过在损失函数中引入更好的传播机制和正则化器来分别处理这两个问题。本文对系统模型进行了描述,并对这两个问题进行了解析推导。我们还分析了最优学习方案(其中通道不可知论)和基于瑞利的学习方案进行比较研究。通过分析块错误率(BLER),我们可以证明RA-GAN方法达到了与最优方案相当的性能,并且显著优于传统的GAN方法。
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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来源期刊
MM Science Journal
MM Science Journal ENGINEERING, MECHANICAL-
CiteScore
1.30
自引率
42.90%
发文量
96
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