Design a hybrid meta-heuristic algorithm for optimal multicell-MMSE to maximize the spectral efficiency in massive MIMO systems

Mogiligundla Kondaiah, Mididoddi Padmaja
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Abstract

Due to many capabilities, “massive multiple-input multiple-output (MIMO) systems” are regarded as a crucial enabling innovation. High energy economy, great spectral efficiency (SE), and simultaneous communication to many user equipments (UEs) are some of the sophisticated characteristics of massive MIMO systems. Huge MIMO, which involves installing arrays of antennas with a high amount of active components at the base station (BS) and utilizing coherent baseband processing, is a viable method for boosting the SE of cell phone networks. Massive MIMO’s spatial multiplexing and unparalleled array gain can increase the processing power of cellular networks. Since its origin, it has been assumed that when the number of radios increases infinitely, the coherent interference brought on by pilot emissions leads to a limited capacity limit. To achieve this objective, an optimal multicell MMSE is proposed for SE maximization. It is processed as the precoding or combining technique that is considered the small amount of spatial channel correlation, more capacity and more number of antennas, large-scale fading variations, and pilot contamination. It is noted that several cases for increasing the SE, thus it contain multiple antenna information. The prime novelty of this paper is introducing the hybrid heuristic algorithm, named as Fitness-condition of red deer and rat swarm algorithm (FRDRSA) for providing the best solution. Finally, the work performance that produced the extensive findings is examined. On the other hand, the suggested method produces an impressive result when measuring the system’s overall SE.
设计一种混合元启发式算法来优化多单元-MMSE,从而最大化大规模多输入多输出系统的频谱效率
由于具有多种功能,"大规模多输入多输出(MIMO)系统 "被认为是一项至关重要的创新。高能量经济性、高频谱效率(SE)以及可同时与多个用户设备(UE)通信是大规模多输入多输出(MIMO)系统的一些复杂特性。大规模多输入多输出(HUGE MIMO)系统包括在基站(BS)安装带有大量有源元件的天线阵列,并利用相干基带处理技术,是提高手机网络频谱效率的可行方法。大规模多输入多输出(MIMO)的空间复用和无与伦比的阵列增益可以提高蜂窝网络的处理能力。大规模多输入多输出(Massive MIMO)的空间多路复用和无与伦比的阵列增益可以提高蜂窝网络的处理能力。自其诞生以来,人们一直认为,当无线电数量无限增加时,先导发射带来的相干干扰会导致有限的容量限制。为实现这一目标,提出了一种用于 SE 最大化的最优多小区 MMSE。它是在考虑了少量空间信道相关性、更大容量和更多天线数量、大规模衰落变化和先导污染的情况下,作为预编码或组合技术进行处理的。本文指出了增加 SE 的几种情况,因此它包含了多天线信息。本文的主要创新点是引入了混合启发式算法,即红鹿和鼠群算法(Fitness-condition of red deer and rat swarm algorithm,FRDRSA),以提供最佳解决方案。最后,对产生广泛结论的工作性能进行了检验。另一方面,在衡量系统的整体 SE 时,建议的方法产生了令人印象深刻的结果。
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