Deploying Neural-Symbolic Hybrid Models for Adaptive Spectrum Management in 6G-Ready Networks
Keywords:
Spectrum Scarcity, Dynamic Spectrum Access, Cognitive Radio, Wireless Communication, Artificial Intelligence, Internet of Things, Industry 4.0Abstract
The spectrum scarcity exacerbated by the increasing demand for connectivity from sectors such as the Internet of Things and Industry 4.0 has caused a shift in policy and regulation decisions towards a more flexible use of the spectrum. An example of this is the identification of tools such as Dynamic Spectrum Access which allow better outlets for unlicensed bands and the design of technology options capable of supporting it. This is the spirit of Cognitive Radio Technology but, to be practical, cultural issues must be addressed first; its application to commercial wireless networks is still a question mark. In wireless communication, Artificial Intelligence is now seen as a game changer, particularly in the way signals are defined and processed as well as in network management. The convergence of these two areas is seen by many as a natural path into the future, opening up new challenges and new business opportunities. Dynamic Spectrum Systems for Wireless Communication networks are at the core of this set of problems, Dynamic Access Spectrum is the new objective for designers and operators; the fulfillment of this objective allows the implementation of a new business in which Wireless Communication is ancillary to the production and commercialization of information. Cognitive Wireless Networks, built upon More than Moore paradigms (natural air interface processing, dynamic all-in-one network management), are seen as the exploitable fruit of the convergence of Artificial Intelligence with the current state-of-the-art in Radio Communication Theory applied to Wireless Networks. We explore these ideas, utilizing the current research activity and the lessons to be learned as a roadmap to the future..
Downloads
Metrics
References
Nuka, S. T., Chakilam, C., Chava, K., Suura, S. R., & Recharla, M. (2025). AI-Driven Drug Discovery: Transforming Neurological and Neurodegenerative Disease Treatment Through Bioinformatics and Genomic Research. American Journal of Psychiatric Rehabilitation, 28(1), 124-135.
Annapareddy, V. N. (2025). The Intersection of Big Data, Cybersecurity, and ERP Systems: A Deep Learning Perspective. Journal of Artificial Intelligence and Big Data Disciplines, 2(1), 45-53.
Recharla, M., Chakilam, C., Kannan, S., Nuka, S. T., & Suura, S. R. (2025). Revolutionizing Healthcare with Generative AI: Enhancing Patient Care, Disease Research, and Early Intervention Strategies. American Journal of Psychiatric Rehabilitation, 28(1), 98-111
Kumar, B. H., Nuka, S. T., Malempati, M., Sriram, H. K., Mashetty, S., & Kannan, S. (2025). Big Data in Cybersecurity: Enhancing Threat Detection with AI and ML. Metallurgical and Materials Engineering, 31(3), 12-20.
Chava, K. . (2025). Dynamic Neural Architectures and AI-Augmented Platforms for Personalized Direct-to-Practitioner Healthcare Engagements. Journal of Neonatal Surgery, 14(4S), 501–510. https://doi.org/10.52783/jns.v14.1824.
Manikandan, K., Pamisetty, V., Challa, S. R., Komaragiri, V. B., Challa, K., & Chava, K. (2025). Scalability and Efficiency in Distributed Big Data Architectures: A Comparative Study. Metallurgical and Materials Engineering, 31(3), 40-49.
Suura, S. R. (2025). Integrating genomic medicine and artificial intelligence for early and targeted health interventions. European Advanced Journal for Emerging Technologies (EAJET)-p-ISSN 3050-9734 en e-ISSN 3050-9742, 2(1).
Chabok Pour, J., Kalisetty, S., Malempati, M., Challa, K., Mandala, V., Kumar, B., & Azamathulla, H. M. (2025). Integrating Hydrological and Hydraulic Approaches for Adaptive Environmental Flow Management: A Multi-Method Approach for Adaptive River Management in Semi-Arid Regions. Water, 17(7), 926.
Burugulla, J. K. R. (2025). Enhancing Credit and Charge Card Risk Assessment Through Generative AI and Big Data Analytics: A Novel Approach to Fraud Detection and Consumer Spending Patterns. Cuestiones de Fisioterapia, 54(4), 964-972.
Peruthambi, V., Pandiri, L., Kaulwar, P. K., Koppolu, H. K. R., Adusupalli, B., & Pamisetty, A. (2025). Big Data-Driven Predictive Maintenance for Industrial IoT (IIoT) Systems. Metallurgical and Materials Engineering, 31(3), 21-30.
Recharla, M., Chakilam, C., Kannan, S., Nuka, S. T., & Suura, S. R. (2025). Harnessing AI and Machine Learning for Precision Medicine: Advancements in Genomic Research, Disease Detection, and Personalized Healthcare. American Journal of Psychiatric Rehabilitation, 28(1), 112-123.
Kumar, S. S., Singireddy, S., Nanan, B. P., Recharla, M., Gadi, A. L., & Paleti, S. (2025). Optimizing Edge Computing for Big Data Processing in Smart Cities. Metallurgical and Materials Engineering, 31(3), 31-39.
Kannan, S. (2025). Transforming Community Engagement with Generative AI: Harnessing Machine Learning and Neural Networks for Hunger Alleviation and Global Food Security. Cuestiones de Fisioterapia, 54(4), 953-963.
Sriram, H. K. (2025). Leveraging artificial intelligence and machine learning for next-generation credit risk assessment models. European Advanced Journal for Science & Engineering (EAJSE)-p-ISSN 3050-9696 en e-ISSN 3050-970X, 2(1).
Chakilam, C., & Rani, P. S. Designing AI-Powered Neural Networks for Real-Time Insurance Benefit Analysis and Financial Assistance Optimization in Healthcare Services.
Chakilam, C., Kannan, S., Recharla, M., Suura, S. R., & Nuka, S. T. (2025). The Impact of Big Data and Cloud Computing on Genetic Testing and Reproductive Health Management. American Journal of Psychiatric Rehabilitation, 28(1), 62-72.
Suura, S. R. (2025). Integrating Artificial Intelligence, Machine Learning, and Big Data with Genetic Testing and Genomic Medicine to Enable Earlier, Personalized Health Interventions. Deep Science Publishing
Kumar Kaulwar, P. (2025). Enhancing ERP Systems with Big Data Analytics and AI-Driven Cybersecurity Mechanisms. Journal of Artificial Intelligence and Big Data Disciplines, 2(1), 27-35.
Suura, S. R. (2025). Agentic AI Systems in Organ Health Management: Early Detection of Rejection in Transplant Patients. Journal of Neonatal Surgery, 14(4s).
Dodda, A., Polineni, T. N. S., Yasmeen, Z., Vankayalapati, R. K., & Ganti, V. K. A. T. (2025, January). Inclusive and Transparent Loan Prediction: A Cost-Sensitive Stacking Model for Financial Analytics. In 2025 6th International Conference on Mobile Computing and Sustainable Informatics (ICMCSI) (pp. 749-754)..
Challa, S. R. The Intersection of Estate Planning and Financial Technology: Innovations in Trust Administration and Wealth Transfer Strategies. GLOBAL PEN PRESS UK.
Nuka, S. T. (2025). Leveraging AI and Generative AI for Medical Device Innovation: Enhancing Custom Product Development and Patient Specific Solutions. Journal of Neonatal Surgery, 14(4s).
Annapareddy, V. N. (2025). Connected Intelligence: Transforming Education and Energy with Big Data, Cloud Connectors, and Artificial Intelligence. Deep Science Publishing.
Mashetty, S. (2025). Securitizing Shelter: Technology-Driven Insights into Single-Family Mortgage Financing and Affordable Housing Initiatives. Deep Science Publishing.
Sriram, H. K. (2025). Generative AI and Neural Networks in Human Resource Management: Transforming Payroll, Workforce Insights, and Digital Employee Payments through AI Innovations. Advances in Consumer Research, 2(1).
Challa, K., Chava, K., Danda, R. R., & Kannan, S. EXPLORING AGENTIC AI Pioneering the Next Frontier in Autonomous DecisionMaking and Machine Learning Applications. SADGURU PUBLICATIONS.
Challa, S. R. (2025). Advancements in Digital Brokerage and Algorithmic Trading: The Evolution of Investment Platforms in a Data Driven Financial Ecosystem. Advances in Consumer Research, 2(1).
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution 4.0 International License.
You are free to:
- Share — copy and redistribute the material in any medium or format
- Adapt — remix, transform, and build upon the material for any purpose, even commercially.
Terms:
- Attribution — You must give appropriate credit, provide a link to the license, and indicate if changes were made. You may do so in any reasonable manner, but not in any way that suggests the licensor endorses you or your use.
- No additional restrictions — You may not apply legal terms or technological measures that legally restrict others from doing anything the license permits.