Abstract

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 ultra-dense 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 $\gamma =0.01$ .

Highlights

  • In the generation wireless communication systems, there are lots of requirements of performance improvement to enhance user experience, such as higher data rate, larger coverage, more reliable link quality, ubiquitous access [1], and so on

  • The two vectors are fed into the model creation functional block, which is helped by the machine learning functional block

  • In this paper, we proposed a method with iterative structure to recover the received signal into the data sent from the transmitters for the coordinated multi-point (CoMP) transmissions in ultra-dense small cell network (SCN)

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Summary

Introduction

In the generation wireless communication systems, there are lots of requirements of performance improvement to enhance user experience, such as higher data rate, larger coverage, more reliable link quality, ubiquitous access [1], and so on. Among the candidate new technologies for generation wireless communication systems, ultra-dense small cell. The ultra-dense SCN can provide better communication link quality and more flexible deployment, and is adopted in some new standards [2], [3]. An SCN can be viewed as kind of extension of macro cell network (MCN). There is one macro cell BS (MBS) dominating the system, in which a large number of small cell BSs (SBS) are under the control of the MBS. Each mobile user equipment (UE) can access the serving MCN via the neighboring SBSs. Because the distance between each

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