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Published in: Optical and Quantum Electronics 14/2023

01-12-2023

Resource allocation with fuzzy logic based network optimization and security analysis in optical communication network

Authors: Hannah Jessie Rani, Rupal Gupta, Atul Dadhich, Sachin Gupta, G. Swetha, Dakshinamurthy V. Kolluru, Kodukula Subrahmanyam

Published in: Optical and Quantum Electronics | Issue 14/2023

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Abstract

Modern optical transport networks are extremely complicated systems that make managing and distributing management information accurate and recognisable difficult. The complexity of network management operations is increased by a variety of optical technologies and service delivery regulations. This study suggests a unique technique for analysing security as well as resource allocation in optical communication networks. Graph networks based on reinforcement beam propagation and wavelength multiplexing are used to allocate network resources. Next, software defined fuzzy logistic vector spatial networks are used to do a security study of the network. The accuracy, packet delivery ratio, routing, modulation, and spectrum assignment of the experimental investigation are all assessed. With the help of mobile edge computing resources as well as evaluation of functionality of nearby user equipment, causes causing this delay are anticipated. An effective communication network is developed to improve service quality, and a cognitive agent model is built to evaluate resource allocation.

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Metadata
Title
Resource allocation with fuzzy logic based network optimization and security analysis in optical communication network
Authors
Hannah Jessie Rani
Rupal Gupta
Atul Dadhich
Sachin Gupta
G. Swetha
Dakshinamurthy V. Kolluru
Kodukula Subrahmanyam
Publication date
01-12-2023
Publisher
Springer US
Published in
Optical and Quantum Electronics / Issue 14/2023
Print ISSN: 0306-8919
Electronic ISSN: 1572-817X
DOI
https://doi.org/10.1007/s11082-023-05576-0

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