Energy‐efficient resource allocation model for device‐to‐device communication in 5G wireless personal area networks

Author:

Logeshwaran Jaganathan1ORCID,Shanmugasundaram Nallasamy1ORCID,Lloret Jaime2ORCID

Affiliation:

1. Department of Electronics and Communication Engineering Sri Eshwar College of Engineering Coimbatore India

2. Universitat Politecnica de Valencia Valencia Spain

Abstract

SummaryIn general, there are several many devices that can overload the network and reduce performance. Devices can minimize interference and optimize bandwidth usage by using directional antennas and by avoiding overlapping communication ranges. In addition, devices need to carefully manage their use of resources, such as bandwidth and energy. Bandwidth is limited in wireless personal area networks (WPANs), so devices need to carefully select which data to send and receive. In this paper, an intelligent performance analysis of energy‐efficient resource optimization model has been proposed for device‐to‐device (D2D) communication in fifth‐generation (5G) WPAN. The proposed energy‐efficient resource allocation in D2D communication is important because it helps reduce energy consumption and extend the lifespan of devices that are communicating with each other. By allocating resources in an efficient manner, communication between two devices can be optimized for maximum efficiency. This helps reduce the amount of energy needed to power the communication, as well as the amount of energy needed to power the device that is communicating with another device. Additionally, efficient resource allocation helps reduce the overall cost of communication, as the use of fewer resources results in a lower overall cost. The proposed efficient resource allocation helps reduce the environmental impact of communication, as less energy is used for communication. The proposed energy‐efficient resource allocation model (EERAM) has reached 92.97% of energy allocation, 88.72% of power allocation, 87.79% of bandwidth allocation, 87.93% of spectrum allocation, 88.43% of channel allocation, 25.47% of end‐to‐end delay, 94.33% of network data speed, and 90.99% of network throughput.

Publisher

Wiley

Subject

Electrical and Electronic Engineering,Computer Networks and Communications

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