Performance enhancement of 5G Network using NB-IoT with LTE-M and Novel RASS Algorithm
Abstract
With the fast growth of heterogeneous technology, today’s world is influenced by
the Internet of Things (IoT) in immense ways. IoT networks connect resource constrained devices to provide automatic services which require low energy consump tion rates, less memory to store information, better bandwidth rate, high processing
speed, and a wide range of coverage to ensure a good Quality of Service (QoS).
Recently, energy consumption is becoming increasingly concerned for the large de gree of IoT devices. Therefore, NB-IoT and LTE-M, low-power wide-area networks
standardized by 3GPP, are used in 5G technology to cope with the required power.
Moreover, another significant concern in the IoT network is resource allocation that
guarantees load balancing along with low operational cost and less energy consump tion. In this work, OEA algorithm is used by incorporating appropriate data and
parameters for resource allocation in 5G enable NB-IoT and LTE-M networks. We
have also proposed a novel algorithm-RASS with Probabilistic Mating, which is
used to assign transmissions and powers in an efficient manner. RASS is enabled
to generate resource allocation strategies to produce a new optimization model for
solving issues faster.This procedure fits the computation requirements, unless that
statement is fulfilled, the alteration process goes successfully. This is best explained
using methods farther down.