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Machine Learning-Based Signal Detection for CoMP Downlink in Ultra-Dense Small Cell Networks

机译:基于机器学习的信号检测,用于在超密集的小型小区网络中的Comp下行链路

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摘要

In the next generation wireless communication systems, high-speed data rate, reliable link quality, and ubiquitous access are necessary requirement. To meet the next generation communication system requirements, the ultra-dense small cell network (SCN) is proposed as one of the possible candidate solutions. To achieve high data rate and reliable link quality, coordinated multiple point (CoMP) transmission is usually used in ultra-dense SCN to satisfy the performance target. However, to realize CoMP transmissions in ultradense SCN, the feedback load is heavy because of the large amount of small cells and users. In this study, we want to investigate the ultra-dense SCN environment and design an effective method for its downlink (DL) transmission. This method consists of iterative scheme which iteratively solves the received signal with proper step-size value gamma. The step-size value gamma is very important to the convergence performance of iterative scheme because it affects the convergence speed and the converged error level of the iterative algorithm. Therefore, in this paper, we propose a novel machine learning based method which creates data model from input data. When the model is well established, the optimal step-size can be well estimated and the feedback information can become rough and the bandwidth allocated for feedback can be saved for data transmission. The simulations show that, the proposed method can create good model and achieve better convergence performance. For example, about the distribution of the transmissions with convergence iteration number less than 10(4) level, the proposed method can obtain 30% improvement than the traditional method with fixed step-size gamma = 0.01.
机译:在下一代无线通信系统中,高速数据速率,可靠的链路质量和无处不在的访问是必要的要求。为了满足下一代通信系统要求,提出了超密集的小型电池网络(SCN)作为可能的候选解决方案之一。为了实现高数据速率和可靠的链路质量,协调多点(COMP)传输通常用于超密集SCN以满足性能目标。然而,为了实现Ultradense SCN中的CoMP传输,由于大量的小单元和用户,反馈负载很大。在这项研究中,我们希望研究超密集的SCN环境,并为其下行链路(DL)传输设计有效的方法。该方法包括迭代方案,其迭代地解决了具有适当的阶梯大小值伽马的接收信号。梯度值值伽马对迭代方案的收敛性能非常重要,因为它影响了迭代算法的收敛速度和融合误差级别。因此,在本文中,我们提出了一种基于新型机器学习的方法,该方法从输入数据创建数据模型。当模型建立得很好时,可以良好地估计最佳步长大小,并且可以将反馈信息变得粗糙,并且可以为数据传输保存分配用于反馈的带宽。模拟表明,所提出的方法可以创造良好的模型并实现更好的收敛性能。例如,关于具有小于10(4)水平的收敛迭代号的变速器的分布,所提出的方法可以比传统方法获得30%的改进,所述传统方法具有固定的阶梯尺寸伽马= 0.01。

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