In the intelligent communication field, deep learning (DL) has attracted much attention due to its strong fitting ability and data-driven learning capability. Compared with the typical DL feedforward network structures, an enhancement structure with direct data feedback have been studied and proved to have better performance than the feedfoward networks. However, due to the above simple feedback methods lack sufficient analysis and learning ability on the feedback data, it is inadequate to deal with more complicated nonlinear systems and therefore the performance is limited for further improvement. In this paper, a novel multi-agent feedback enabled neural network (MAFENN) framework is proposed, which make the framework have stronger feedback learning capabilities and more intelligence on feature abstraction, denoising or generation, etc. Furthermore, the MAFENN framework is theoretically formulated into a three-player Feedback Stackelberg game, and the game is proved to converge to the Feedback Stackelberg equilibrium. The design of MAFENN framework and algorithm are dedicated to enhance the learning capability of the feedfoward DL networks or their variations with the simple data feedback. To verify the MAFENN framework's feasibility in wireless communications, a multi-agent MAFENN based equalizer (MAFENN-E) is developed for wireless fading channels with inter-symbol interference (ISI). Experimental results show that when the quadrature phase-shift keying (QPSK) modulation scheme is adopted, the SER performance of our proposed method outperforms that of the traditional equalizers by about 2 dB in linear channels. When in nonlinear channels, the SER performance of our proposed method outperforms that of either traditional or DL based equalizers more significantly, which shows the effectiveness and robustness of our proposal in the complex channel environment.
翻译:在智能通信领域,深层次的学习(DL)因其强大的适应能力和数据驱动的学习能力而引起人们的极大关注。与典型的DL feffforward网络结构相比,已经研究了一个带有直接数据反馈的强化结构,并证明其性能优于ffforward网络。然而,由于上述简单的反馈方法缺乏足够的分析和学习反馈数据的能力,因此无法处理更复杂的非线性系统,因此,业绩也有限,以进一步改进为目的。本文提出了一个新的多剂反馈促进神经网络的网络(MAFERNNNN)框架,使框架具有更强的反馈能力,并增加了关于特征抽象、脱色或生成等的反馈渠道的智能。此外,MAFNNNNN框架在理论上形成一个三人反馈Stakelberg 游戏,该游戏被证明与反馈Stackelberg的平衡。MAFAFA(MANFA)系统(以无线性系统内部的模拟系统)的拟议性能框架和变异性数据反馈,在无线性通信中(MANFAFA级系统系统中,以透明性系统系统内部的系统显示以等的系统系统系统系统系统系统系统系统系统系统内部的性能模式为显著性能) 。