A Naive Method to Calculate the Maximum Number of Active Users, Number of Antennas Required and Calculating the Optimum Transmit Power in a Multi-User Multiple-Input Multiple Output (MIMO) System

Authors

  • Anuja Sonker  M. Tech. Scholar, Sarasvati Higher Education & Technical College of Engineering, Varanasi, Uttar Pradesh, India

Keywords:

Multi-user multiple-input multiple output (MIMO) system, Energy efficiency, uplink, system design, imperfect CSI, downlink, single and multi-cell.

Abstract

Assume we will make a multi-client Multiple-Input Multiple Output (MIMO) framework. This framework will cover a given area with maximal vitality proficiency known as energy efficiency (EE) consistently. Presently the propose technique will ascertain the ideal (least) number of users utilized around there to cover, all out number of dynamic clients that can utilize the system, and the ideal transmit control. Furthermore, we will contrast our outcome and the other available methods. The numerical and systematic outcomes demonstrate that the maximal EE is accomplished by an enormous MIMO setup wherein many receiving wires are conveyed to serve a generally huge number of clients utilizing ZF handling. The numerical outcomes demonstrate a similar conduct under flawed direct state data and in symmetric multi-cell situations.

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Published

2019-06-30

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Research Articles

How to Cite

[1]
Anuja Sonker, " A Naive Method to Calculate the Maximum Number of Active Users, Number of Antennas Required and Calculating the Optimum Transmit Power in a Multi-User Multiple-Input Multiple Output (MIMO) System, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 5, Issue 3, pp.511-520, May-June-2019.