Elevating optical networks: Machine learning approach for optimal resource scheduling and performance boost

Author:

S.S. Neetha Kala1ORCID,Jain Aaditya2,Bhatt Rahul3,Sinha Sanjay Kumar4,Saraswat Pankaj5,Prabhakaran 6

Affiliation:

1. Department of Computer Science and Information Technology Jain (Deemed to be University) Bangalore, Karnataka India India

2. College of Computing Science and Information Technology TeerthankerMahaveer University Moradabad,Uttar Pradesh India India

3. School of Engineering and Computer Dev Bhoomi Uttarakhand University Dehradun India

4. Department of Computer Science & Engineering Vivekananda Global University Jaipur India

5. Department of Computer Science & Engineering Sanskriti University Mathura India

6. Department of Computer Application Presidency College Bangalore India

Abstract

SummaryThe increasing demand for massaging networks that are stable and quick needs reevaluations of standard optical networking administration strategies. To improve the efficacy of optical networks by integrating machine learning (ML) approach for the best resource scheduling, this research presents an innovative dynamic block widow optimized random forest (DBWO‐RF) strategy. To implement the DBWO‐driven resource allocation method in accordance with the categorization and clustering findings, the RF method is incorporated with the software defined optical to achieve channel quality assessment after successfully clustering employs the RF approach to achieve channel quality assessment after successfully clustering traffic patterns using the fuzzy C‐means (FCM) algorithm. To lessen the likelihood of blocking, the fragmentation‐function‐fit (FFF) algorithm was provided and the findings indicate that this approach possesses a reduced blocking risk. Using multiple approaches to modulation for various channel quality, the suggested resource allocation system leverages the DBWO approach to distribute the necessary resources based on various “traffic flow (TF)” clustering findings. The examination's outcomes demonstrate that, compared to other techniques under various given load levels, the present study has a reduced blocking risk, a sufficient complexity degree and greater effectiveness in the utilization of spectrum resources.

Publisher

Wiley

Reference40 articles.

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