
Machine Learning-Enabled Dimensioning of Slicing-Based Private Mobile Communication Networks
Caner Bektas(Author)
Shaker (Publisher)
1st Edition
Published on 26. June 2024
Book
Paperback/Softback
162 pages
978-3-8440-9548-7 (ISBN)
Description
5G and future mobile communication networks present new possibilities for highly critical applications requiring resilient communication. In response, private 5G networks have emerged, offering localized solutions, while the network slicing technology allows for tailored services within a single infrastructure.
This thesis proposes new solutions for optimizing network slices and planning private 5G networks to meet the challenging demands of highly critical applications and scenarios. Regarding network slicing, a novel approach called Slice-Aware Machine Learning-based Ultra-Reliable Scheduling (SAMUS) is introduced, which is a dynamic resource scheduler based on Machine Learning (ML), aimed at achieving low latency for critical slices while maintaining high resource utilization for high throughput applications. This approach is analyzed based on experimental and simulative methods and is shown to be effectively reducing end-to-end latency for critical data while providing high throughput for best effort services.
Additionally, this thesis introduces an automated network planning approach based on the unsupervised ML method k-means for planning demand-based private 5G networks. This approach offers results comparable to exhaustive search but with significantly reduced computation time. By leveraging this method, possible operators can rapidly deploy private 5G networks, making this approach ideal for temporary or nomadic deployments.
This thesis proposes new solutions for optimizing network slices and planning private 5G networks to meet the challenging demands of highly critical applications and scenarios. Regarding network slicing, a novel approach called Slice-Aware Machine Learning-based Ultra-Reliable Scheduling (SAMUS) is introduced, which is a dynamic resource scheduler based on Machine Learning (ML), aimed at achieving low latency for critical slices while maintaining high resource utilization for high throughput applications. This approach is analyzed based on experimental and simulative methods and is shown to be effectively reducing end-to-end latency for critical data while providing high throughput for best effort services.
Additionally, this thesis introduces an automated network planning approach based on the unsupervised ML method k-means for planning demand-based private 5G networks. This approach offers results comparable to exhaustive search but with significantly reduced computation time. By leveraging this method, possible operators can rapidly deploy private 5G networks, making this approach ideal for temporary or nomadic deployments.
More details
Series
Thesis
Doctoral thesis
2024
Technische Universität Dortmund
Language
English
Place of publication
Düren
Germany
Target group
Professional and scholarly
Product notice
Unsewn / adhesive bound
Illustrations
63
63 farbige Abbildungen
68
Dimensions
Height: 21 cm
Width: 14.8 cm
Weight
223 gr
ISBN-13
978-3-8440-9548-7 (9783844095487)
Schweitzer Classification