Intelligent Software Defined Atmospheric Effect Processing for 5th Generation (5G) Millimeter Wave (MMWave) Communication System

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Author(s)

S. K. Agrawal 1,* Kapil Sharma 1

1. Computer Engineering Department, Delhi Technological University (DTU), Formerly : Delhi College of Enginering (DCE), Delhi, India

* Corresponding author.

DOI: https://doi.org/10.5815/ijwmt.2018.02.02

Received: 6 Jul. 2017 / Revised: 19 Sep. 2017 / Accepted: 17 Jan. 2018 / Published: 8 Mar. 2018

Index Terms

Millimeter Wave (mmWave), 5th Generation (5G), Software Defined (SD).

Abstract

In this paper, we present atmospheric effect on 5th Generation (5G) millimeter wave (MMWave) communication system. Atmospheric effects for Delhi (India) based 5G communication system is calculated as per Delhi atmospheric conditions. Atmospheric impairments are major cause of degrading mmWave signal power while mmWave propagation in wireless channel. Due to Atmospheric impairments attenuation takes place and major impairments are like water vapour, oxygen, rain and fog for Delhi (India). 5G mmWave attenuation calculations are performed for the mmWave band frequencies 28 GHz, 37 GHz and 39 GHz. In this paper intelligent adaptive transmitter based on trend of the atmospheric conditions tunes to machine learning (ML) based derivation of channel capacity. The ML based transmitter is a supervised ML device and it has provision of self teaching learning machine based on data. Results are graphed for the mentioned frequencies and also intelligently software defined (SD) Shannon channel capacity calculated for Delhi (India) based 5G mmWave communication system under different atmospheric conditions.

Cite This Paper

S. K. Agrawal, Kapil Sharma," Intelligent Software Defined Atmospheric Effect Processing for 5th Generation (5G) Millimeter Wave (MMWave) Communication System", International Journal of Wireless and Microwave Technologies(IJWMT), Vol.8, No.2, pp. 15-26, 2018. DOI: 10.5815/ijwmt.2018.02.02

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