Network Optimization Using Learning and Distributed Intelligence through Cognition Based Networks

Autor: Geraldin B. Dela Cruz, Dr. SK Althaf Hussain Basha
Rok vydání: 2022
Zdroj: Technoarete Transactions on Industrial Robotics and Automation Systems. 2
ISSN: 2583-1941
Popis: Network optimisation can be achieved with the incorporation of sophisticated technology and advanced algorithms to achieve efficiency and scalability. Optimisation of the entire network with learning and distributed intelligence through cognitive-based networks is investigated in the paper. A cognition-based network enhances the capacity for network optimization and designing processes to offer better services to the customers appropriately. With the rapid growth of users, the network distribution channels are required to adopt cognitive-based architecture for optimised capacity, capable of providing secure data transmission to a wider user base. 5G network construction with SDN and NFV, along with AI and machine learning algorithms are considered to be the most efficient cognitive-based approach for network optimisation. The application of NFV helps to develop network functions in operating open hardware platforms, reducing Capex, and OpenX and improving network design efficiently. On the other hand, SDN is capable of separating the control plane and the data plan with a defined interface for programming, providing an entire view of the network with centralised control.
Databáze: OpenAIRE