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Power Allocation for Multiple Transmitter-Receiver Pairs Under Frequency-Selective Fading Based on Convolutional Neural Network

机译:基于卷积神经网络的频率选择性衰落下多发射机接收器对的功率分配

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摘要

For multiple transmitter-receiver pairs communication in a frequency-selective environment, typical power allocation method is the Iterative-Waterfilling (IW) algorithm. Main drawback of IW is its poor convergence performance, including low convergence probability and slow convergence speed in certain scenarios, which lead to high computational load. Large-scale network significantly magnifies the above drawback by lowering the convergence probability and convergence speed, which is difficult to satisfy real-time requirements. In this work, we propose a power allocation scheme based on convolutional neural network (CNN). The design of loss function takes into account the Sum Rate (SR) of all users. The output layer of the CNN model is replaced by several Softmax blocks, and the output of each Softmax block is the ratio of the transmission power of each user on the sub-carrier to the total power. Numerical studies show the advantages of our proposed scheme over IW: with the constraint of not lowering SR, there is no convergence problem and the computational load is significantly reduced.
机译:对于频率选择性环境中的多个发射器 - 接收器对通信,典型的功率分配方法是迭代 - 水填充(IW)算法。 IW的主要缺点是其收敛性能差,包括某些情况下的低收敛概率和慢趋同速度,这导致高计算负荷。通过降低收敛概率和收敛速度,大规模网络显着放大了上述缺点,这难以满足实时要求。在这项工作中,我们提出了一种基于卷积神经网络(CNN)的功率分配方案。丢失功能的设计考虑了所有用户的总和率(SR)。 CNN模型的输出层由多个Softmax块替换,每个软MAX块的输出是子载波上的每个用户的传输功率与总功率的比率。数值研究表明我们提出的方案在IW上的优点:由于不降低SR的约束,没有收敛问题,并且计算负荷显着降低。

著录项

  • 来源
    《Quality Control, Transactions》 |2020年第2020期|31018-31025|共8页
  • 作者单位

    Shenzhen Univ Coll Elect & Informat Engn Guangdong Prov Engn Ctr Ubiquitous Comp & Intelli Shenzhen 518060 Guangdong Peoples R China|Shenzhen Univ Shenzhen Key Lab Adv Commun & Informat Proc Shenzhen 518060 Guangdong Peoples R China|Shenzhen Univ Guangdong Lab Artificial Intelligence & Digital E Shenzhen 518060 Guangdong Peoples R China;

    Shenzhen Univ Coll Elect & Informat Engn Guangdong Prov Engn Ctr Ubiquitous Comp & Intelli Shenzhen 518060 Guangdong Peoples R China|Shenzhen Univ Shenzhen Key Lab Adv Commun & Informat Proc Shenzhen 518060 Guangdong Peoples R China|Shenzhen Univ Guangdong Lab Artificial Intelligence & Digital E Shenzhen 518060 Guangdong Peoples R China;

    Hong Kong Polytech Univ Dept Comp Hong Kong Peoples R China;

    Shenzhen Univ Coll Elect & Informat Engn Guangdong Prov Engn Ctr Ubiquitous Comp & Intelli Shenzhen 518060 Guangdong Peoples R China|Shenzhen Univ Shenzhen Key Lab Adv Commun & Informat Proc Shenzhen 518060 Guangdong Peoples R China|Shenzhen Univ Guangdong Lab Artificial Intelligence & Digital E Shenzhen 518060 Guangdong Peoples R China;

    Shenzhen Univ Coll Elect & Informat Engn Guangdong Prov Engn Ctr Ubiquitous Comp & Intelli Shenzhen 518060 Guangdong Peoples R China|Shenzhen Univ Shenzhen Key Lab Adv Commun & Informat Proc Shenzhen 518060 Guangdong Peoples R China|Shenzhen Univ Guangdong Lab Artificial Intelligence & Digital E Shenzhen 518060 Guangdong Peoples R China;

    Texas A&M Univ Corpus Christi Dept Comp Sci Corpus Christi TX 78412 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Power allocation; convolutional neural network; sum rate; iterative waterfilling;

    机译:电力分配;卷积神经网络;总和率;迭代液化填充;

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