Saltar al contenido principal Saltar a la búsqueda Saltar a la navegación principal
📍 Ebertstraße 6, 76137 Karlsruhe | ☎ 0721 38 480 060 | ✉ info@buch-ka.de | 🕐 Horario de apertura |

Machine Learning-Enabled Dimensioning of Slicing-Based Private Mobile Communication Networks

Información sobre el producto "Machine Learning-Enabled Dimensioning of Slicing-Based Private Mobile Communication Networks"
  • 7 %
  • Libro de bolsillo
  • Comprender
  • Libro de bolsillo
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.

0 de 0 valoraciones

Calificación promedio de 0 de 5 estrellas

¡Emita una valoración!

Comparta sus experiencias con el producto con otros clientes.


Omitir la galería de productos

Ähnliche Bücher entdecken

Programming Neural Networks with Python

06.06.2025
Soil Pollution and Remediation

19.05.2025
Neural Networks and Deep Learning

30.06.2023
Control Systems Benchmarks

30.05.2025
Computer Networks / Computernetze

23.10.2025
Java Testing with Selenium

20.06.2024
Building Modern Active Directory

21.11.2024
Private Militärunternehmen

16.03.2026
Applied Machine Learning

05.05.2026
New Advances in Soft Computing in Civil Engineering

08.08.2024
Cyber-Collaborative Algorithms and Protocols

22.06.2024
Embodied Communication

07.12.2015
Edge AI Made Practical

02.02.2026
The Machine Stops

11.11.2020
Das private Baurecht

07.06.2023