LTE Technologies and Challenges for development of M2M Communication

Authors

  • Savitha AC Assistant Professor, Electronics & Communication, JSSATE Bangalore, India.
  • MN Jayaram Professor & HOD, Electronics & Communication, JSS S&T, Mysuru, India.
  • Aravind HS Professor, Electronics & Communication, JSSATE Bangalore, India.

Keywords:

LTE, LTE-CAT-M, M2M, MTC, NB-IoT

Abstract

LTE cellular network and M2M technology are predictable to perceive extensive deployment in the wide applications. M2M is the autonomous communication between associated devises without the involvement of human. Presently, LTE is considered as one of the important cellular network for an implementation of M2M communication. Hence LTE networks necessity to incorporate special features of M2M communication. In this paper we provide growth of massive type of communication with respect to the LTE releases. We briefly discussed about LTE different physical channels and features. Finally we recognized some of the challenges associated to the implementation of M2M technologies.

How to cite this article:
Savitha AC, Jayaram MN, Aravind HS. LTE Technologies and Challenges for development of M2M Communication. J Adv Res Wire Mob Telecom 2021; 4(2): 1-7.

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Published

2022-03-03