Research Article |
An Efficient Hybrid Analysis to Improve Data Rate Signal Transmission in Cognitive Radio Networks Using Multi- Hop
Author(s): Bhaveshkumar Kathiriya and Dr. Divyesh Keraliya*
Published In : International Journal of Electrical and Electronics Research (IJEER) Volume 11, Issue 3
Publisher : FOREX Publication
Published : 30 July 2023
e-ISSN : 2347-470X
Page(s) : 682-688
Abstract
Spectrum scarcity problems can be resolved with the emerging communiqué technologies known as cognitive radio (CR). Cognitive radio networks (CRNs) will give mobile users greater bandwidth via wirelessly heterogeneity design and dynamic spectrum acquisition methods. The Cognitive Radio Mobile Ad-Hoc Network (CR-MANET) idea of Adaptive Routing a new network paradigm may be realized by using the functions of spectrum management to overcome such difficulties. Secondary users (SUs) have the freedom to opportunistically explore and make use of the open spaces on licensed channels. When a primary user (PU) interferes with a licensed channel, this forces the SU to leave it and switch to an open channel. Because of the constant channel switching those results, SUs degrades as a result. In this result recommends a number of channels, number of hop CRN that uses a fuzzy decision-making system that is genetically optimized for channel selection, channel switching, and spectrum allocation. According to study, the suggested architecture achieves higher PDR, throughput, latency, and transmission time than fuzzy and genetic algorithms. Through simulations the result demonstrates significant improvements in data rate performance, making it a promising solution for enhancing communication efficiency in cognitive radio networks.
Keywords: Cognitive radio
, Fuzzy and genetic algorithm
, Ad-Hoc Network Cognitive Radio Mobile (AR-CRM)
.
Bhaveshkumar Kathiriya, Research Scholar, Gujarat Technological University, Ahmadabad, Gujarat, India; Email: bbk261981@gmail.com
Dr. Divyesh Keraliya*, Asst. Prof., EC Engineering Department, Gujarat Technological University, Rajkot, Gujarat, India; Email: drkeraliya@gmail.com
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