Paper Title
Radio Resource Management For Shared Servicing of Real-Time Multiservice and Elastic IOT Traffic Streams

Abstract
Abstract - There has been a massive increase in the capacities and diversity of data being collected over the Internet of Things (IoT) applications and the management of such enormous data is one of the critical tasks for networking corporations as they advance from 4G+ to true 5G systems. Predominantly the majority of this traffic comprises complex, unstructured, and varied data (Big Data) originating from smart networking environments (LTE-devices, NB-IoT devices). Though 5G proposes various low power wide area technologies (Lora WAN, GSM, and NB-IoT, etc.), predominantly NB-IoT appears very promising to address the challenge because of its evident features such as high fault tolerance, delay tolerance, higher coverage area, etc. However, due to the constricted bandwidth (180 kHz) accessibility, one of the challenges is how to proficiently use these resources to support and handle a massive number of growing IoT devices, also resource management and allocation methodology between LTE and NB-IoT traffic flows resources. To address such a challenge, we have developed static and dynamic scheduling models to manage radio resources, especially for shared servicing of real-time and elastic IoT traffic flows. The static scheduling is based on Erlang’s model, while as we have incorporated network slicing for dynamic scheduling. Dynamic Scheduling has been considered for an Operator Surveillance system for shared servicing of real-time video traffic of surveillance cameras and NB-IoT data traffic of smart meters and actuators over LTE cell facilities. Keywords - Radio Resource Management (RRM), Static Scheduling, Dynamic Scheduling, Narrowband Internet of Things (NB-IoT), Network Slicing, Operator Surveillance System.