Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Fairness‐Aware Resource Allocation Algorithm for Ultradense Iot Communication Underlying 5G/6G Networks

View through CrossRef
ABSTRACTTo meet the demands of emerging applications, the beyond fifth generation and the upcoming sixth generation (6G) mobile networks are expected to be inherently intelligent, highly dynamic, and ultradense, forming a heterogeneous network that seamlessly interconnects everything with ultralow latency and extremely high‐speed data transmission. Due to limited available resources, an effective and efficient resource allocation technique is necessary to ensure optimal utilization for ultradense communications, where both Internet of Things (IoT) devices and classic cellular devices share the same spectrum. In this article, we propose an efficient resource allocation algorithm for IoT devices communicating through a cellular network that ensures fair access for both IoT and cellular devices. Fair resource allocation is guaranteed by achieving maximum data rate for IoT devices and cellular devices while keeping interference caused by IoT traffic lower than a specific threshold. This keeps cellular traffic unaffected, preserving network performance and stability. Simulation results demonstrate that the proposed algorithm outperforms the existing benchmarks ensuring very high data rate and equitable resource sharing between both IoT and cellular users.
Title: Fairness‐Aware Resource Allocation Algorithm for Ultradense Iot Communication Underlying 5G/6G Networks
Description:
ABSTRACTTo meet the demands of emerging applications, the beyond fifth generation and the upcoming sixth generation (6G) mobile networks are expected to be inherently intelligent, highly dynamic, and ultradense, forming a heterogeneous network that seamlessly interconnects everything with ultralow latency and extremely high‐speed data transmission.
Due to limited available resources, an effective and efficient resource allocation technique is necessary to ensure optimal utilization for ultradense communications, where both Internet of Things (IoT) devices and classic cellular devices share the same spectrum.
In this article, we propose an efficient resource allocation algorithm for IoT devices communicating through a cellular network that ensures fair access for both IoT and cellular devices.
Fair resource allocation is guaranteed by achieving maximum data rate for IoT devices and cellular devices while keeping interference caused by IoT traffic lower than a specific threshold.
This keeps cellular traffic unaffected, preserving network performance and stability.
Simulation results demonstrate that the proposed algorithm outperforms the existing benchmarks ensuring very high data rate and equitable resource sharing between both IoT and cellular users.

Related Results

Algorithmic Individual Fairness and Healthcare: A Scoping Review
Algorithmic Individual Fairness and Healthcare: A Scoping Review
AbstractObjectiveStatistical and artificial intelligence algorithms are increasingly being developed for use in healthcare. These algorithms may reflect biases that magnify dispari...
Adaptive radio resource management for ofdma-based macro- and femtocell networks
Adaptive radio resource management for ofdma-based macro- and femtocell networks
Las demandas y expectativas de los usuarios y operadores móviles crecen sin parar y, consecuentemente, los nuevos estándares han incorporado tecnologías de acceso de radio cada vez...
Fair Allocation of Network Resources for Internet Users
Fair Allocation of Network Resources for Internet Users
In a commercial Internet, the traffic behavior is determined by the contracts between the ISPs and the users, where a user can be a dial-up user, or one corporate network or a grou...
Bertrand Game with Nash Bargaining Fairness Concern
Bertrand Game with Nash Bargaining Fairness Concern
The classical Bertrand game is assumed that players are perfectly rational. However, many empirical researches indicate that people have bounded rational behavior with fairness con...
QoS and QoE aware multi objective resource allocation algorithm for cloud gaming
QoS and QoE aware multi objective resource allocation algorithm for cloud gaming
Cloud gaming is an innovative model that congregates video games. The user may have different Quality-of-Experience (QoE), which is a term used to measure a user’s level of satisfa...
Fatter or Stronger: Resource Allocation Strategy and the Underlying Metabolic Mechanisms in Amphibian Tadpole
Fatter or Stronger: Resource Allocation Strategy and the Underlying Metabolic Mechanisms in Amphibian Tadpole
Abstract BackgroundResource allocation trade-off between storage and somatic growth is an essential physiological phenomenon in animals. Revealing its patterns and underlyi...
Heuristics for Efficient Resource Allocation in Cloud Computing
Heuristics for Efficient Resource Allocation in Cloud Computing
The resource allocation in cloud computing determines the allocation of computer and network resources of service providers to service requests of users for meeting user service re...
Deception-Based Security Framework for IoT: An Empirical Study
Deception-Based Security Framework for IoT: An Empirical Study
<p><b>A large number of Internet of Things (IoT) devices in use has provided a vast attack surface. The security in IoT devices is a significant challenge considering c...

Back to Top